SlideShare une entreprise Scribd logo
1  sur  36
Télécharger pour lire hors ligne
© Fraunhofer ISST
SHARED DIGITAL TWIN:
COLLABORATION IN ECOSYSTEMS
Prof. Dr.-Ing. Boris Otto  Berlin  18 September 2019
public· 1
© Fraunhofer ISST
Agenda
 Business Rationale and Use Cases
 Definition and Conceptual Framework
 State of the Art and Outlook
public· 2
© Fraunhofer ISST
Ecosystems – as in the railway industry – are an organizational form to
facilitate innovation
Source: Knorr-Bremse (2018).
public
Railway Markets
Original Equipment
Manufacturers
1st and 2nd Tier SuppliersInfrastructure Providers
Energy Suppliers Railway Operators
Domain
Knowledge
Vehicle
Knowledge
Operational
Knowledge
Leasing Companies
· 3
© Fraunhofer ISST
 Various proprietary platforms – no
standards
 Integration and accumulation of
knowledge along the value chain
 Many use cases – no business models
 Lacking proliferation of platforms and
services – no critical mass
Use Cases
To realize the business benefits in ecosystems, a set of challenges has to be
overcome
Source: Knorr-Bremse (2018).
public
Challenges
· 4
© Fraunhofer ISST
Using and sharing Digital Twins is a prerequisite for business benefits in many
different scenarios
Image Source: JDA Software Group, Inc. (2019); DirectIndustry (2019); ABB (2019).
public
Digital Twin of
Supply Chains
Demand and Capacity Management
Supply Bottleneck Management
Production stability 
Buffer stock 
Delivery quality 
Digital Twin of
Industrial Assets
Predictive Maintenance
Condition Monitoring
Fast Deployment
Productivity 
TCO 
OEE 
Digital Twin of
Products
Data-Driven Business Models
Service-Based Business Models
Customer Loyalty 
Customer Retention 
Service Profitability 
· 5
© Fraunhofer ISST
Supply networks in the automotive are complex and prone to disruptions
Source: VW, thyssenkrupp.
ACT ComponentTier-2
Jászfényszaru
Salzgitter
Ilsenburg
Valvetrain
Győr
Ingolstadt
Wolfsburg
Emden
Pamplona
Setúbal
Puebla
Mladá Boleslav
Kvasiny
Uitenhage
Martorell
Zwickau
Osnabrück
Nizhny Novgorod
Chemnitz
Győr
Salzgitter
Engine Plant Assembly Plant
public
…
· 6
© Fraunhofer ISST
Exchanging and sharing data across the supply network to mitigate risks and
to overcome co-ordination challenges
public
Risks and Challenges Data Demands
SoP Delay
· 7
© Fraunhofer ISST
Many requirements exists with regard to a Digital Supply Chain Twin
 Data must be available on demand
 Data events (access, use etc.) must be logged
 Access and usage rights must be customizable
 Data exchange must follow a harmonized data model
 Data use in backend systems must be prohibited/tracked
 Data provenance
 Data must only be shared together with usage constraints
 Only recent updates of data must be stored – if at all
 Data sharing follows »quid pro quo« principle
 Views must be defined with regard to entire digital twin
 …
public· 8
© Fraunhofer ISST
Source: Platform Industrie 4.0, Working Group 1 & 3 (2019).
Manufacturer X
Condition monitoring of components is a mature Industrie 4.0 use case –
generating business benefits along the value chain
Integrator V Operator A
public· 9
© Fraunhofer ISST
Component Manufacturer X
Business Scenario
 Product component P1-X was built
in M1-W, M2-W, operated by A
Business Case
 Condition monitoring for
improved productivity
Challenges
 Organizational, technical, legal prerequisites for
data access and use
 Data monetization with regard to data provisioning
and use
End-to-end condition monitoring requires a shared digital twin
that meets data security and usage/access rights requirements
BP1
A
M1
V
M2
W
P1
X
P2
Y
P1
X
P2
Y
P3
Z
P3
Z
Operator A
public· 10
© Fraunhofer ISST
Agenda
 Business Rationale and Use Cases
 Definition and Conceptual Framework
 State of the Art and Outlook
public· 11
© Fraunhofer ISST
Digital Twin
A digital twin comprises data about all lifecycle phases of a real-world object
Design Support
Material Sciences
Supply Chain Risk
Management
Outage Predictions
Design and
Engineering
Material
Management
Manufacturing
Distribution and
Logistics
Use and Services
Manufacturing Asset
Management
Adaptive Tool
Engineering
Maintenance
Predictive Process
Management
Efficient Material
Management
public· 12
© Fraunhofer ISST
A digital twin comprises both type-related and instance data for real-world
objects
Domain-specific Digital Twin
Digital Master
Master and Reference Data
Digital Shadow
Process, Event and Context Data
Digital Master Model
Fundamental Data Model
public
Design and
Engineering
Material
Management
Manufacturing
Distribution and
Logistics
Use and Services
· 13
© Fraunhofer ISST
Data Owner
Process Owner
Data User
Enterprise-wide Business Units
Data modelling is the foundation for digital twins
Source: Volkswagen (2017).
Asset Data
Process Data
Organizational Data
public· 14
© Fraunhofer ISST
A digital twin is a representation of a real-world object
 Digital Twin
 Digital representation of a real-world
object containing all required information
over the entire lifecycle
 Dimensions
 Type vs instance
 Granularity
 Type of data
 »Ownership« and usage rights
 …
Definition: Tao et al. (2019); Boschert et al. (2016).
Viewgraph source: Column Five (2019).
public· 15
© Fraunhofer ISST
A conceptual framework for shared digital twin data integrates three
different perspectives
public
Shared
Digital Twin
Business
Technology
Legal
Aspects
 Ecosystem roles
 Shared information model
 Data use cases
 Data governance and data sovereignty
 Data modelling
 Data access and usage
 Data interoperability
 Data storage
 Data integration
 Ownership
 Compliance to regulations
 Ethics
· 16
© Fraunhofer ISST
Agenda
 Business Rationale and Use Cases
 Definition and Conceptual Framework
 State of the Art and Outlook
public· 17
© Fraunhofer ISST
A variety of use cases in different ecosystems adopt the idea of a shared
digital twin
Source: Skywise – Tardieu, ATOS (2019); DataConnect – John Deere (2019); NEVADA – VDA (2018).
public
Airline Industry
(Skywise)
Farming Industry
(DataConnect)
Mobility Industry
(Nevada)
Ecosystem Approach
Originated from manufacturing scenarios
Based on Palantir Data Platform
Focus on data exchange
Farmer access to data from multiple OEMs
Co-opetition mode
Interoperability of connected car data
Mobility ecosystem
Trusted data sharing and exchange
SKYWISE
Engine
Maintainers
AIRBUS
Equipment
Vendors
· 18
© Fraunhofer ISST
The »Administration Shell« concept functions as a blueprint
for digital twins in manufacturing
Source: BMWi (2016).
Reference Architecture Model Industry 4.0 Administration Shell Concept
The Administration Shell stores all data of a hardware or software component in production scenarios. It makes data and services
related to that component available for Industry 4.0 scenarios in a standardized way.
public· 19
© Fraunhofer ISST
The Asset Administration Shell allows for sharing digital twin data
Image source: Hoffmeister & Jochem (2018) according to Epple (2016).
Source: Platform Industrie 4.0 (2018).
IntegratorSupplier
Internal
public
Operator
Repository
Verteilte
Repositories
2
Publish
A1
T
B1
T
Receive Publish ReceiveComposite
Type machine
Internal
A4
T
B4
T
C1
T
C4
T
D1
E1
Composite
Instance machineD4
E4 F1 (D4,E4)
G3
X
F4 (D4*,E4*)
product
type
consolidate
consolidate
consolidate
delivery
delivery
product
product
2nd
operator
master
data
G4
Composite
production
line
I4.0-
platform
18
I4.0-
platform
Internal
delivery
product
A2 A3
B2 B3 C2 C3
D2 D3
E2 E2 F2
(D4,E4)
F3
(D4*,E4*)
public· 20
© Fraunhofer ISST
The Asset Administration Shell enables shared digital twins
Source: Belyaev & Diedrich (2019).
public
 Identifies and describes assets over
networks in an unambiguous way
 Allows controlled access to asset data
 Makes data along the entire lifecycle
available
 Can be used for smart and legacy
assets
· 21
© Fraunhofer ISST
The Asset Administrative Shell is implemented as a prototype on the SAP
Cloud Platform
Source: SAP, cited in All-Electronics.de (2019).
public· 22
© Fraunhofer ISST
The International Data Spaces (IDS) initiative enables ecosystems around the
sovereign exchange of data
Source: Otto et al. (2017); extended representation of the reference architecture model content.
public
Runtime EnvironmentRuntime Environment
authorize
publish app
transfer data
data flow
metadata flow
software flow
identification
useIDSsoftware
useIDSsoftware
useIDSsoftware
identify
Data
Owner
App
Provider
Vocabulary
Provider
Clearing
House
App Store
Provider
Identity
Provider
Data
Consumer
Broker
Service
Provider
Service
Provider
Software
Provider
Data
Provider
Certification mandatory
Membership in the IDSA mandatory
Certification
Authority
· 23
© Fraunhofer ISST
The International Data Spaces (IDS) initiative proposes an architecture for the
sovereign exchange of data
Legend: IDS Connector; Usage Constraints; Non-IDS Communication.
public
Industrial
Data Cloud
IoT Cloud
Enterprise
Cloud
Data
Marketplace
Company 1 Company 2 Company n + 2Company n + 1Company n
Open Data
Source
IDS
IDS IDS
IDS
IDS IDS
IDS
IDS
IDS
IDS
IDS
IDS
IDS
IDS
IDS
IDS
IDS
· 24
© Fraunhofer ISST
The IDS Information Model ensures a shared understanding of fundamental
concepts of data ecosystems
Source: https://mvn.isst.fraunhofer.de/nexus/#browse/browse:ids-local:de%2Ffraunhofer%2Fiais%2Feis%2Fids%2Finfomodel
public· 25
© Fraunhofer ISST
The IDS Information Model describes shared data resources
via the so-called C-Hexagon
Source: IDS Reference Architecture Model 3.0 (2019).
public· 26
© Fraunhofer ISST
Legend: IoT – Internet of Things.
Different deployment options for the integration of IDS Connector and Asset
Administration Shell are envisaged
public· 27
© Fraunhofer ISST
Data Provenance · Fraunhofer IOSBLabel-Based Usage Control (LUCON) · Fraunhofer AISEC
D° (Degree) · Fraunhofer ISSTMYDATA Control Technologies · Fraunhofer IESE
Information
Provisioning
Instantiation
Policy
Provisioning
Policy
Deployment &
Revocation
Consultation Decision
Storage
Execution
DECISIONMANAGEMENTENFORCEMENT
A B
C D
Different usage control technologies address access and usage rights for
digital twin data
public· 28
© Fraunhofer ISST
Source: vocol.iais.fraunhofer.de (2019).
VoCol is an collaboration environment to develop shared vocabularies
public· 29
© Fraunhofer ISST
The IDS architecture allows for trusted and sovereign data exchange based on
a shared digital twin – as shown in the supply bottleneck case above
* Release of data through data owner through rule: »ALLOW_RAW_EXPORT«, can be opted out.
Data Sovereignty
Data with
Usage
Constraints
No Data
Sovereignty
System 1*
Tier 1 Supplier
IDS Connector
Logic
Rights
Log Filter
REST-API
OEM
IDS Connector
Logic
Rights
Log Filter
REST-API
Data Sovereignty
Data with
Usage
Constraints
System 1
Tier 1 Supplier
IDS Connector
Logic
Rights
Log Filter
REST-API
OEM
IDS Connector
Logic
Rights
Log Filter
REST-API
…
Data from Tier 1 Supplier to OEM Data from OEM to Tier 1 Supplier
public· 30
© Fraunhofer ISST
Policies can be set and enforced through IDS implementations
public· 31
© Fraunhofer ISST
Legend: Circle-shaped Nodes – Ecosystem Member; C – Connector; B – Broker; I – Identity Provider; H – Clearing
House; Edges between Nodes – Data Exchange.
1:1 »Few to Few« n:m
C C
Bilateral Data Exchange
C
C
C
C
C
B I
Closed Community Data Sharing
C
C
C
H
C
C
I
B
Open Dynamic Data Ecosystem
II IIII
Business ecosystems evolve in stages
public· 32
© Fraunhofer ISST
VALUES & FRAMEWORK FOR INNOVATION
ENTERPRISE/DIGITAL
ECOSYSTEM (using EU standards)
SMART ECONONY &
SOCIETY
SERVICE PLATFORMS
DATA SHARING
INFRASTRUCTURE
CLOUD/EDGE
INFRASTRUCTURE
NETWORK
SMART SERVICES
SMART DATA
SMART PRODUCTS
SMART NETWORK
European values
Secure and trusted
Easy-to-use
Federated, neutral
Vendor-agnostic
Design Principles
Urgent demand for a neutral
enabler for trusted data
sharing and data usage across
multiple service platforms
across industries!
Certification
Body
Transaction
services
Data connector
services
Platform access,
antitrust
Micro-payment
services
Quality scoring
Encryption
services
Certification
AuthorityClearing House
Broker,
auditability
Inter-operability
Serivces
Data Governace/
Privacy
Essential Trust Services
Basic Data Services
Dynamic Trust
Management
Dynamic
Attribute
Provisioning
…
Appstore
Data Usage
Control
…
…
…
NB: Architecture stack adapted from Smart Service Welt Working Group (2015).
Required is a trusted digital infrastructure for Europe and beyond
public· 33
© Fraunhofer ISST
The concept of the digital twin has evolved over time and will further
develop
public
Digital Shadow Digital Twin
Autonomous
Digital Agent
I II III
 Fragmented data traces of real world
objects
 No adherence to a consistent or even
shared information model
 Low data interoperability
 Distributed storage of data – efficient
information retrieval (querying)
hardly possible
 Consistent representation of real-
world object across different lifecycle
stages
 Shared information model
 Integration of type and instance data
 Allows simulation (ex ante) and
analysis (ex post)
 Enabled by Artificial Intelligence
 Acts autonomously
 Makes recommendation for action
 Develops automatically
Value Proposition
· 34
© Fraunhofer ISST
Current research and development activities mainly focus on integrating
existing concepts
 Conceptual integration of Asset Administrative Shell and IDS Information Model
 Prototype implementations of integrated scenarios
 Development of a trusted, secure infrastructure for sharing digital twin data
 Transfer of B2B concepts to B2C scenarios
public· 35
© Fraunhofer ISST
SHARED DIGITAL TWIN:
COLLABORATION IN ECOSYSTEMS
Prof. Dr.-Ing. Boris Otto  Berlin  18 September 2019
public· 36

Contenu connexe

Tendances

Digital Twin - What is it and how can it help us?
Digital Twin - What is it and how can it help us?Digital Twin - What is it and how can it help us?
Digital Twin - What is it and how can it help us?Shaun West
 
SAP Datasphere, SAP BW Bridge - Ein Überblick
SAP Datasphere, SAP BW Bridge - Ein ÜberblickSAP Datasphere, SAP BW Bridge - Ein Überblick
SAP Datasphere, SAP BW Bridge - Ein ÜberblickIBsolution GmbH
 
Digital transformation with microsoft data and ai
Digital transformation with microsoft data and ai Digital transformation with microsoft data and ai
Digital transformation with microsoft data and ai MichaelRoenker
 
Phar Data Platform: From the Lakehouse Paradigm to the Reality
Phar Data Platform: From the Lakehouse Paradigm to the RealityPhar Data Platform: From the Lakehouse Paradigm to the Reality
Phar Data Platform: From the Lakehouse Paradigm to the RealityDatabricks
 
Data Catalog for Better Data Discovery and Governance
Data Catalog for Better Data Discovery and GovernanceData Catalog for Better Data Discovery and Governance
Data Catalog for Better Data Discovery and GovernanceDenodo
 
You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?Precisely
 
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...Dr. Arif Wider
 
Real-World Data Governance: Data Governance Roles & Responsibilities
Real-World Data Governance: Data Governance Roles & ResponsibilitiesReal-World Data Governance: Data Governance Roles & Responsibilities
Real-World Data Governance: Data Governance Roles & ResponsibilitiesDATAVERSITY
 
Data Strategy Design: An Open Source Toolbox & Method for Data Thinking.
Data Strategy Design: An Open Source Toolbox & Method for Data Thinking. Data Strategy Design: An Open Source Toolbox & Method for Data Thinking.
Data Strategy Design: An Open Source Toolbox & Method for Data Thinking. Datentreiber
 
Data-centric design and the knowledge graph
Data-centric design and the knowledge graphData-centric design and the knowledge graph
Data-centric design and the knowledge graphAlan Morrison
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best PracticesDATAVERSITY
 
Digital grid: Disruptive digital technologies
Digital grid: Disruptive digital technologiesDigital grid: Disruptive digital technologies
Digital grid: Disruptive digital technologiesAccenture the Netherlands
 
Evolution from EDA to Data Mesh: Data in Motion
Evolution from EDA to Data Mesh: Data in MotionEvolution from EDA to Data Mesh: Data in Motion
Evolution from EDA to Data Mesh: Data in Motionconfluent
 
Government GraphSummit: Leveraging Graphs for AI and ML
Government GraphSummit: Leveraging Graphs for AI and MLGovernment GraphSummit: Leveraging Graphs for AI and ML
Government GraphSummit: Leveraging Graphs for AI and MLNeo4j
 
Data Catalog as the Platform for Data Intelligence
Data Catalog as the Platform for Data IntelligenceData Catalog as the Platform for Data Intelligence
Data Catalog as the Platform for Data IntelligenceAlation
 
Overview of big data in cloud computing
Overview of big data in cloud computingOverview of big data in cloud computing
Overview of big data in cloud computingViet-Trung TRAN
 
International Data Spaces: Data Sovereignty for Business Model Innovation
International Data Spaces: Data Sovereignty for Business Model InnovationInternational Data Spaces: Data Sovereignty for Business Model Innovation
International Data Spaces: Data Sovereignty for Business Model InnovationBoris Otto
 
Data Centric Transformation in Telecom
Data Centric Transformation in TelecomData Centric Transformation in Telecom
Data Centric Transformation in TelecomDataWorks Summit
 

Tendances (20)

Data Mesh
Data MeshData Mesh
Data Mesh
 
Digital Twin - What is it and how can it help us?
Digital Twin - What is it and how can it help us?Digital Twin - What is it and how can it help us?
Digital Twin - What is it and how can it help us?
 
SAP Datasphere, SAP BW Bridge - Ein Überblick
SAP Datasphere, SAP BW Bridge - Ein ÜberblickSAP Datasphere, SAP BW Bridge - Ein Überblick
SAP Datasphere, SAP BW Bridge - Ein Überblick
 
Digital transformation with microsoft data and ai
Digital transformation with microsoft data and ai Digital transformation with microsoft data and ai
Digital transformation with microsoft data and ai
 
Phar Data Platform: From the Lakehouse Paradigm to the Reality
Phar Data Platform: From the Lakehouse Paradigm to the RealityPhar Data Platform: From the Lakehouse Paradigm to the Reality
Phar Data Platform: From the Lakehouse Paradigm to the Reality
 
Data Catalog for Better Data Discovery and Governance
Data Catalog for Better Data Discovery and GovernanceData Catalog for Better Data Discovery and Governance
Data Catalog for Better Data Discovery and Governance
 
You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?
 
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
 
Real-World Data Governance: Data Governance Roles & Responsibilities
Real-World Data Governance: Data Governance Roles & ResponsibilitiesReal-World Data Governance: Data Governance Roles & Responsibilities
Real-World Data Governance: Data Governance Roles & Responsibilities
 
Data Strategy Design: An Open Source Toolbox & Method for Data Thinking.
Data Strategy Design: An Open Source Toolbox & Method for Data Thinking. Data Strategy Design: An Open Source Toolbox & Method for Data Thinking.
Data Strategy Design: An Open Source Toolbox & Method for Data Thinking.
 
Data-centric design and the knowledge graph
Data-centric design and the knowledge graphData-centric design and the knowledge graph
Data-centric design and the knowledge graph
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best Practices
 
Digital grid: Disruptive digital technologies
Digital grid: Disruptive digital technologiesDigital grid: Disruptive digital technologies
Digital grid: Disruptive digital technologies
 
Evolution from EDA to Data Mesh: Data in Motion
Evolution from EDA to Data Mesh: Data in MotionEvolution from EDA to Data Mesh: Data in Motion
Evolution from EDA to Data Mesh: Data in Motion
 
Government GraphSummit: Leveraging Graphs for AI and ML
Government GraphSummit: Leveraging Graphs for AI and MLGovernment GraphSummit: Leveraging Graphs for AI and ML
Government GraphSummit: Leveraging Graphs for AI and ML
 
Data Catalog as the Platform for Data Intelligence
Data Catalog as the Platform for Data IntelligenceData Catalog as the Platform for Data Intelligence
Data Catalog as the Platform for Data Intelligence
 
Digital twin
Digital twinDigital twin
Digital twin
 
Overview of big data in cloud computing
Overview of big data in cloud computingOverview of big data in cloud computing
Overview of big data in cloud computing
 
International Data Spaces: Data Sovereignty for Business Model Innovation
International Data Spaces: Data Sovereignty for Business Model InnovationInternational Data Spaces: Data Sovereignty for Business Model Innovation
International Data Spaces: Data Sovereignty for Business Model Innovation
 
Data Centric Transformation in Telecom
Data Centric Transformation in TelecomData Centric Transformation in Telecom
Data Centric Transformation in Telecom
 

Similaire à Shared Digital Twins: Collaboration in Ecosystems

Turning Industrial Data into Value
Turning Industrial Data into ValueTurning Industrial Data into Value
Turning Industrial Data into ValueBoris Otto
 
International Data Spaces: Data Sovereignty and Interoperability for Business...
International Data Spaces: Data Sovereignty and Interoperability for Business...International Data Spaces: Data Sovereignty and Interoperability for Business...
International Data Spaces: Data Sovereignty and Interoperability for Business...Boris Otto
 
Lange - Industrial Data Space – Digital Sovereignty over Data
Lange - Industrial Data Space – Digital Sovereignty over DataLange - Industrial Data Space – Digital Sovereignty over Data
Lange - Industrial Data Space – Digital Sovereignty over DataVienna Data Science Group
 
Industrial Data Space
Industrial Data SpaceIndustrial Data Space
Industrial Data SpaceBoris Otto
 
Breaking up the silos - Utilizing data across companies and domains - Reflect...
Breaking up the silos - Utilizing data across companies and domains - Reflect...Breaking up the silos - Utilizing data across companies and domains - Reflect...
Breaking up the silos - Utilizing data across companies and domains - Reflect...Symposium on Society 5.0
 
Data Sovereignty - Call for an International Effort
Data Sovereignty - Call for an International EffortData Sovereignty - Call for an International Effort
Data Sovereignty - Call for an International EffortBoris Otto
 
Fraunhofer – SINTEF: towards an initiative on Data Sovereignty in Europe
Fraunhofer – SINTEF: towards an initiative on Data Sovereignty in EuropeFraunhofer – SINTEF: towards an initiative on Data Sovereignty in Europe
Fraunhofer – SINTEF: towards an initiative on Data Sovereignty in EuropeThorsten Huelsmann
 
ICARUS @EBDVF 2018 - TransformingTransport Session (November 2018, Vienna)
ICARUS @EBDVF 2018 - TransformingTransport Session (November 2018, Vienna)ICARUS @EBDVF 2018 - TransformingTransport Session (November 2018, Vienna)
ICARUS @EBDVF 2018 - TransformingTransport Session (November 2018, Vienna)ICARUS2020.aero
 
From Semantic Interoperability towards Data Spaces
From Semantic Interoperability towards Data SpacesFrom Semantic Interoperability towards Data Spaces
From Semantic Interoperability towards Data SpacesH2020 DEMETER
 
ICARUS @EBDVF 2018 - BDVA Policy Session (November 2018, Vienna)
ICARUS @EBDVF 2018 - BDVA Policy Session (November 2018, Vienna)ICARUS @EBDVF 2018 - BDVA Policy Session (November 2018, Vienna)
ICARUS @EBDVF 2018 - BDVA Policy Session (November 2018, Vienna)ICARUS2020.aero
 
App Management on the Edge
App Management on the EdgeApp Management on the Edge
App Management on the Edgeteam-WIBU
 
Open Source for Industry 4.0 – Open IoT Summit NA 2018
Open Source for Industry 4.0 – Open IoT Summit NA 2018Open Source for Industry 4.0 – Open IoT Summit NA 2018
Open Source for Industry 4.0 – Open IoT Summit NA 2018Benjamin Cabé
 
Session 1.3 context information management across smart city knowledge domains
Session 1.3   context information management across smart city knowledge domainsSession 1.3   context information management across smart city knowledge domains
Session 1.3 context information management across smart city knowledge domainssemanticsconference
 
15 03-25-wallom-cloudwatch-wp2
15 03-25-wallom-cloudwatch-wp215 03-25-wallom-cloudwatch-wp2
15 03-25-wallom-cloudwatch-wp2David Wallom
 
2019 06-19 EIT Digital industry event
2019 06-19 EIT Digital industry event 2019 06-19 EIT Digital industry event
2019 06-19 EIT Digital industry event MIDIH_EU
 
Industrial IoT - reshaping future manufacturing
Industrial IoT - reshaping future manufacturingIndustrial IoT - reshaping future manufacturing
Industrial IoT - reshaping future manufacturingMahmoud BEN TAHAR
 
FIWARE Global Summit - Creating Secured Value Chains for Smart Industries
FIWARE Global Summit - Creating Secured Value Chains for Smart IndustriesFIWARE Global Summit - Creating Secured Value Chains for Smart Industries
FIWARE Global Summit - Creating Secured Value Chains for Smart IndustriesFIWARE
 
Webinar Industrial Data Space Association: Introduction and Architecture
Webinar Industrial Data Space Association: Introduction and ArchitectureWebinar Industrial Data Space Association: Introduction and Architecture
Webinar Industrial Data Space Association: Introduction and ArchitectureThorsten Huelsmann
 

Similaire à Shared Digital Twins: Collaboration in Ecosystems (20)

Turning Industrial Data into Value
Turning Industrial Data into ValueTurning Industrial Data into Value
Turning Industrial Data into Value
 
International Data Spaces: Data Sovereignty and Interoperability for Business...
International Data Spaces: Data Sovereignty and Interoperability for Business...International Data Spaces: Data Sovereignty and Interoperability for Business...
International Data Spaces: Data Sovereignty and Interoperability for Business...
 
Lange - Industrial Data Space – Digital Sovereignty over Data
Lange - Industrial Data Space – Digital Sovereignty over DataLange - Industrial Data Space – Digital Sovereignty over Data
Lange - Industrial Data Space – Digital Sovereignty over Data
 
Industrial Data Space
Industrial Data SpaceIndustrial Data Space
Industrial Data Space
 
Breaking up the silos - Utilizing data across companies and domains - Reflect...
Breaking up the silos - Utilizing data across companies and domains - Reflect...Breaking up the silos - Utilizing data across companies and domains - Reflect...
Breaking up the silos - Utilizing data across companies and domains - Reflect...
 
Data Sovereignty - Call for an International Effort
Data Sovereignty - Call for an International EffortData Sovereignty - Call for an International Effort
Data Sovereignty - Call for an International Effort
 
Fraunhofer – SINTEF: towards an initiative on Data Sovereignty in Europe
Fraunhofer – SINTEF: towards an initiative on Data Sovereignty in EuropeFraunhofer – SINTEF: towards an initiative on Data Sovereignty in Europe
Fraunhofer – SINTEF: towards an initiative on Data Sovereignty in Europe
 
ICARUS @EBDVF 2018 - TransformingTransport Session (November 2018, Vienna)
ICARUS @EBDVF 2018 - TransformingTransport Session (November 2018, Vienna)ICARUS @EBDVF 2018 - TransformingTransport Session (November 2018, Vienna)
ICARUS @EBDVF 2018 - TransformingTransport Session (November 2018, Vienna)
 
From Semantic Interoperability towards Data Spaces
From Semantic Interoperability towards Data SpacesFrom Semantic Interoperability towards Data Spaces
From Semantic Interoperability towards Data Spaces
 
ICARUS @EBDVF 2018 - BDVA Policy Session (November 2018, Vienna)
ICARUS @EBDVF 2018 - BDVA Policy Session (November 2018, Vienna)ICARUS @EBDVF 2018 - BDVA Policy Session (November 2018, Vienna)
ICARUS @EBDVF 2018 - BDVA Policy Session (November 2018, Vienna)
 
App Management on the Edge
App Management on the EdgeApp Management on the Edge
App Management on the Edge
 
Open Source for Industry 4.0 – Open IoT Summit NA 2018
Open Source for Industry 4.0 – Open IoT Summit NA 2018Open Source for Industry 4.0 – Open IoT Summit NA 2018
Open Source for Industry 4.0 – Open IoT Summit NA 2018
 
Session 1.3 context information management across smart city knowledge domains
Session 1.3   context information management across smart city knowledge domainsSession 1.3   context information management across smart city knowledge domains
Session 1.3 context information management across smart city knowledge domains
 
Airbus and open source for fossa 2010
Airbus and open source for fossa 2010Airbus and open source for fossa 2010
Airbus and open source for fossa 2010
 
1305 eurocloud jfriedrich
1305 eurocloud jfriedrich1305 eurocloud jfriedrich
1305 eurocloud jfriedrich
 
15 03-25-wallom-cloudwatch-wp2
15 03-25-wallom-cloudwatch-wp215 03-25-wallom-cloudwatch-wp2
15 03-25-wallom-cloudwatch-wp2
 
2019 06-19 EIT Digital industry event
2019 06-19 EIT Digital industry event 2019 06-19 EIT Digital industry event
2019 06-19 EIT Digital industry event
 
Industrial IoT - reshaping future manufacturing
Industrial IoT - reshaping future manufacturingIndustrial IoT - reshaping future manufacturing
Industrial IoT - reshaping future manufacturing
 
FIWARE Global Summit - Creating Secured Value Chains for Smart Industries
FIWARE Global Summit - Creating Secured Value Chains for Smart IndustriesFIWARE Global Summit - Creating Secured Value Chains for Smart Industries
FIWARE Global Summit - Creating Secured Value Chains for Smart Industries
 
Webinar Industrial Data Space Association: Introduction and Architecture
Webinar Industrial Data Space Association: Introduction and ArchitectureWebinar Industrial Data Space Association: Introduction and Architecture
Webinar Industrial Data Space Association: Introduction and Architecture
 

Plus de Boris Otto

Evolution of Data Spaces
Evolution of Data SpacesEvolution of Data Spaces
Evolution of Data SpacesBoris Otto
 
Deutschland auf dem Weg in die Datenökonomie
Deutschland auf dem Weg in die DatenökonomieDeutschland auf dem Weg in die Datenökonomie
Deutschland auf dem Weg in die DatenökonomieBoris Otto
 
Business mit Daten? Deutschland auf dem Weg in die smarte Datenwirtschaft
Business mit Daten? Deutschland auf dem Weg in die smarte DatenwirtschaftBusiness mit Daten? Deutschland auf dem Weg in die smarte Datenwirtschaft
Business mit Daten? Deutschland auf dem Weg in die smarte DatenwirtschaftBoris Otto
 
Data Governance
Data GovernanceData Governance
Data GovernanceBoris Otto
 
Data Resource Management: Good Practices to Make the Most out of a Hidden Tre...
Data Resource Management: Good Practices to Make the Most out of a Hidden Tre...Data Resource Management: Good Practices to Make the Most out of a Hidden Tre...
Data Resource Management: Good Practices to Make the Most out of a Hidden Tre...Boris Otto
 
Smart Data Engineering: Erfolgsfaktor für die digitale Transformation
Smart Data Engineering: Erfolgsfaktor für die digitale TransformationSmart Data Engineering: Erfolgsfaktor für die digitale Transformation
Smart Data Engineering: Erfolgsfaktor für die digitale TransformationBoris Otto
 
IDS: Update on Reference Architecture and Ecosystem Design
IDS: Update on Reference Architecture and Ecosystem DesignIDS: Update on Reference Architecture and Ecosystem Design
IDS: Update on Reference Architecture and Ecosystem DesignBoris Otto
 
Datensouveränität in Produktions- und Logistiknetzwerken
Datensouveränität in Produktions- und LogistiknetzwerkenDatensouveränität in Produktions- und Logistiknetzwerken
Datensouveränität in Produktions- und LogistiknetzwerkenBoris Otto
 
Digital Business Engineering am Fraunhofer ISST
Digital Business Engineering am Fraunhofer ISSTDigital Business Engineering am Fraunhofer ISST
Digital Business Engineering am Fraunhofer ISSTBoris Otto
 
Digitalisierung der Industrie
Digitalisierung der IndustrieDigitalisierung der Industrie
Digitalisierung der IndustrieBoris Otto
 
Industrial Data Space: Referenzarchitekturmodell für die Digitalisierung
Industrial Data Space: Referenzarchitekturmodell für die DigitalisierungIndustrial Data Space: Referenzarchitekturmodell für die Digitalisierung
Industrial Data Space: Referenzarchitekturmodell für die DigitalisierungBoris Otto
 
Industrial Data Space: Digitale Souveränität über Daten
Industrial Data Space: Digitale Souveränität über DatenIndustrial Data Space: Digitale Souveränität über Daten
Industrial Data Space: Digitale Souveränität über DatenBoris Otto
 
Industrial Data Space: Referenzarchitektur für Data Supply Chains
Industrial Data Space: Referenzarchitektur für Data Supply ChainsIndustrial Data Space: Referenzarchitektur für Data Supply Chains
Industrial Data Space: Referenzarchitektur für Data Supply ChainsBoris Otto
 
Überblick zum Industrial Data Space
Überblick zum Industrial Data SpaceÜberblick zum Industrial Data Space
Überblick zum Industrial Data SpaceBoris Otto
 
Industrial Data Space Key Facts
Industrial Data Space Key FactsIndustrial Data Space Key Facts
Industrial Data Space Key FactsBoris Otto
 
Enabling the Industry 4.0 vision: Hype? Real Opportunity!
Enabling the Industry 4.0 vision: Hype? Real Opportunity!Enabling the Industry 4.0 vision: Hype? Real Opportunity!
Enabling the Industry 4.0 vision: Hype? Real Opportunity!Boris Otto
 
Logistik in der digitalen Wirtschaft: Daten als strategische Ressource
Logistik in der digitalen Wirtschaft: Daten als strategische RessourceLogistik in der digitalen Wirtschaft: Daten als strategische Ressource
Logistik in der digitalen Wirtschaft: Daten als strategische RessourceBoris Otto
 
Industrial Data Management and Digitization
Industrial Data Management and DigitizationIndustrial Data Management and Digitization
Industrial Data Management and DigitizationBoris Otto
 
Konsortialforschung: Gestaltungsorientierte Wirtschaftsinformatikforschung in...
Konsortialforschung: Gestaltungsorientierte Wirtschaftsinformatikforschung in...Konsortialforschung: Gestaltungsorientierte Wirtschaftsinformatikforschung in...
Konsortialforschung: Gestaltungsorientierte Wirtschaftsinformatikforschung in...Boris Otto
 
Digital Business Engineering
Digital Business EngineeringDigital Business Engineering
Digital Business EngineeringBoris Otto
 

Plus de Boris Otto (20)

Evolution of Data Spaces
Evolution of Data SpacesEvolution of Data Spaces
Evolution of Data Spaces
 
Deutschland auf dem Weg in die Datenökonomie
Deutschland auf dem Weg in die DatenökonomieDeutschland auf dem Weg in die Datenökonomie
Deutschland auf dem Weg in die Datenökonomie
 
Business mit Daten? Deutschland auf dem Weg in die smarte Datenwirtschaft
Business mit Daten? Deutschland auf dem Weg in die smarte DatenwirtschaftBusiness mit Daten? Deutschland auf dem Weg in die smarte Datenwirtschaft
Business mit Daten? Deutschland auf dem Weg in die smarte Datenwirtschaft
 
Data Governance
Data GovernanceData Governance
Data Governance
 
Data Resource Management: Good Practices to Make the Most out of a Hidden Tre...
Data Resource Management: Good Practices to Make the Most out of a Hidden Tre...Data Resource Management: Good Practices to Make the Most out of a Hidden Tre...
Data Resource Management: Good Practices to Make the Most out of a Hidden Tre...
 
Smart Data Engineering: Erfolgsfaktor für die digitale Transformation
Smart Data Engineering: Erfolgsfaktor für die digitale TransformationSmart Data Engineering: Erfolgsfaktor für die digitale Transformation
Smart Data Engineering: Erfolgsfaktor für die digitale Transformation
 
IDS: Update on Reference Architecture and Ecosystem Design
IDS: Update on Reference Architecture and Ecosystem DesignIDS: Update on Reference Architecture and Ecosystem Design
IDS: Update on Reference Architecture and Ecosystem Design
 
Datensouveränität in Produktions- und Logistiknetzwerken
Datensouveränität in Produktions- und LogistiknetzwerkenDatensouveränität in Produktions- und Logistiknetzwerken
Datensouveränität in Produktions- und Logistiknetzwerken
 
Digital Business Engineering am Fraunhofer ISST
Digital Business Engineering am Fraunhofer ISSTDigital Business Engineering am Fraunhofer ISST
Digital Business Engineering am Fraunhofer ISST
 
Digitalisierung der Industrie
Digitalisierung der IndustrieDigitalisierung der Industrie
Digitalisierung der Industrie
 
Industrial Data Space: Referenzarchitekturmodell für die Digitalisierung
Industrial Data Space: Referenzarchitekturmodell für die DigitalisierungIndustrial Data Space: Referenzarchitekturmodell für die Digitalisierung
Industrial Data Space: Referenzarchitekturmodell für die Digitalisierung
 
Industrial Data Space: Digitale Souveränität über Daten
Industrial Data Space: Digitale Souveränität über DatenIndustrial Data Space: Digitale Souveränität über Daten
Industrial Data Space: Digitale Souveränität über Daten
 
Industrial Data Space: Referenzarchitektur für Data Supply Chains
Industrial Data Space: Referenzarchitektur für Data Supply ChainsIndustrial Data Space: Referenzarchitektur für Data Supply Chains
Industrial Data Space: Referenzarchitektur für Data Supply Chains
 
Überblick zum Industrial Data Space
Überblick zum Industrial Data SpaceÜberblick zum Industrial Data Space
Überblick zum Industrial Data Space
 
Industrial Data Space Key Facts
Industrial Data Space Key FactsIndustrial Data Space Key Facts
Industrial Data Space Key Facts
 
Enabling the Industry 4.0 vision: Hype? Real Opportunity!
Enabling the Industry 4.0 vision: Hype? Real Opportunity!Enabling the Industry 4.0 vision: Hype? Real Opportunity!
Enabling the Industry 4.0 vision: Hype? Real Opportunity!
 
Logistik in der digitalen Wirtschaft: Daten als strategische Ressource
Logistik in der digitalen Wirtschaft: Daten als strategische RessourceLogistik in der digitalen Wirtschaft: Daten als strategische Ressource
Logistik in der digitalen Wirtschaft: Daten als strategische Ressource
 
Industrial Data Management and Digitization
Industrial Data Management and DigitizationIndustrial Data Management and Digitization
Industrial Data Management and Digitization
 
Konsortialforschung: Gestaltungsorientierte Wirtschaftsinformatikforschung in...
Konsortialforschung: Gestaltungsorientierte Wirtschaftsinformatikforschung in...Konsortialforschung: Gestaltungsorientierte Wirtschaftsinformatikforschung in...
Konsortialforschung: Gestaltungsorientierte Wirtschaftsinformatikforschung in...
 
Digital Business Engineering
Digital Business EngineeringDigital Business Engineering
Digital Business Engineering
 

Dernier

Lucia Ferretti, Lead Business Designer; Matteo Meschini, Business Designer @T...
Lucia Ferretti, Lead Business Designer; Matteo Meschini, Business Designer @T...Lucia Ferretti, Lead Business Designer; Matteo Meschini, Business Designer @T...
Lucia Ferretti, Lead Business Designer; Matteo Meschini, Business Designer @T...Associazione Digital Days
 
Darshan Hiranandani [News About Next CEO].pdf
Darshan Hiranandani [News About Next CEO].pdfDarshan Hiranandani [News About Next CEO].pdf
Darshan Hiranandani [News About Next CEO].pdfShashank Mehta
 
1911 Gold Corporate Presentation Apr 2024.pdf
1911 Gold Corporate Presentation Apr 2024.pdf1911 Gold Corporate Presentation Apr 2024.pdf
1911 Gold Corporate Presentation Apr 2024.pdfShaun Heinrichs
 
Onemonitar Android Spy App Features: Explore Advanced Monitoring Capabilities
Onemonitar Android Spy App Features: Explore Advanced Monitoring CapabilitiesOnemonitar Android Spy App Features: Explore Advanced Monitoring Capabilities
Onemonitar Android Spy App Features: Explore Advanced Monitoring CapabilitiesOne Monitar
 
Effective Strategies for Maximizing Your Profit When Selling Gold Jewelry
Effective Strategies for Maximizing Your Profit When Selling Gold JewelryEffective Strategies for Maximizing Your Profit When Selling Gold Jewelry
Effective Strategies for Maximizing Your Profit When Selling Gold JewelryWhittensFineJewelry1
 
Send Files | Sendbig.comSend Files | Sendbig.com
Send Files | Sendbig.comSend Files | Sendbig.comSend Files | Sendbig.comSend Files | Sendbig.com
Send Files | Sendbig.comSend Files | Sendbig.comSendBig4
 
Go for Rakhi Bazaar and Pick the Latest Bhaiya Bhabhi Rakhi.pptx
Go for Rakhi Bazaar and Pick the Latest Bhaiya Bhabhi Rakhi.pptxGo for Rakhi Bazaar and Pick the Latest Bhaiya Bhabhi Rakhi.pptx
Go for Rakhi Bazaar and Pick the Latest Bhaiya Bhabhi Rakhi.pptxRakhi Bazaar
 
Appkodes Tinder Clone Script with Customisable Solutions.pptx
Appkodes Tinder Clone Script with Customisable Solutions.pptxAppkodes Tinder Clone Script with Customisable Solutions.pptx
Appkodes Tinder Clone Script with Customisable Solutions.pptxappkodes
 
Intermediate Accounting, Volume 2, 13th Canadian Edition by Donald E. Kieso t...
Intermediate Accounting, Volume 2, 13th Canadian Edition by Donald E. Kieso t...Intermediate Accounting, Volume 2, 13th Canadian Edition by Donald E. Kieso t...
Intermediate Accounting, Volume 2, 13th Canadian Edition by Donald E. Kieso t...ssuserf63bd7
 
1911 Gold Corporate Presentation Apr 2024.pdf
1911 Gold Corporate Presentation Apr 2024.pdf1911 Gold Corporate Presentation Apr 2024.pdf
1911 Gold Corporate Presentation Apr 2024.pdfShaun Heinrichs
 
Entrepreneurship lessons in Philippines
Entrepreneurship lessons in  PhilippinesEntrepreneurship lessons in  Philippines
Entrepreneurship lessons in PhilippinesDavidSamuel525586
 
APRIL2024_UKRAINE_xml_0000000000000 .pdf
APRIL2024_UKRAINE_xml_0000000000000 .pdfAPRIL2024_UKRAINE_xml_0000000000000 .pdf
APRIL2024_UKRAINE_xml_0000000000000 .pdfRbc Rbcua
 
digital marketing , introduction of digital marketing
digital marketing , introduction of digital marketingdigital marketing , introduction of digital marketing
digital marketing , introduction of digital marketingrajputmeenakshi733
 
Jewish Resources in the Family Resource Centre
Jewish Resources in the Family Resource CentreJewish Resources in the Family Resource Centre
Jewish Resources in the Family Resource CentreNZSG
 
Cyber Security Training in Office Environment
Cyber Security Training in Office EnvironmentCyber Security Training in Office Environment
Cyber Security Training in Office Environmentelijahj01012
 
GUIDELINES ON USEFUL FORMS IN FREIGHT FORWARDING (F) Danny Diep Toh MBA.pdf
GUIDELINES ON USEFUL FORMS IN FREIGHT FORWARDING (F) Danny Diep Toh MBA.pdfGUIDELINES ON USEFUL FORMS IN FREIGHT FORWARDING (F) Danny Diep Toh MBA.pdf
GUIDELINES ON USEFUL FORMS IN FREIGHT FORWARDING (F) Danny Diep Toh MBA.pdfDanny Diep To
 
Introducing the Analogic framework for business planning applications
Introducing the Analogic framework for business planning applicationsIntroducing the Analogic framework for business planning applications
Introducing the Analogic framework for business planning applicationsKnowledgeSeed
 
NAB Show Exhibitor List 2024 - Exhibitors Data
NAB Show Exhibitor List 2024 - Exhibitors DataNAB Show Exhibitor List 2024 - Exhibitors Data
NAB Show Exhibitor List 2024 - Exhibitors DataExhibitors Data
 

Dernier (20)

Lucia Ferretti, Lead Business Designer; Matteo Meschini, Business Designer @T...
Lucia Ferretti, Lead Business Designer; Matteo Meschini, Business Designer @T...Lucia Ferretti, Lead Business Designer; Matteo Meschini, Business Designer @T...
Lucia Ferretti, Lead Business Designer; Matteo Meschini, Business Designer @T...
 
Darshan Hiranandani [News About Next CEO].pdf
Darshan Hiranandani [News About Next CEO].pdfDarshan Hiranandani [News About Next CEO].pdf
Darshan Hiranandani [News About Next CEO].pdf
 
1911 Gold Corporate Presentation Apr 2024.pdf
1911 Gold Corporate Presentation Apr 2024.pdf1911 Gold Corporate Presentation Apr 2024.pdf
1911 Gold Corporate Presentation Apr 2024.pdf
 
Onemonitar Android Spy App Features: Explore Advanced Monitoring Capabilities
Onemonitar Android Spy App Features: Explore Advanced Monitoring CapabilitiesOnemonitar Android Spy App Features: Explore Advanced Monitoring Capabilities
Onemonitar Android Spy App Features: Explore Advanced Monitoring Capabilities
 
WAM Corporate Presentation April 12 2024.pdf
WAM Corporate Presentation April 12 2024.pdfWAM Corporate Presentation April 12 2024.pdf
WAM Corporate Presentation April 12 2024.pdf
 
Effective Strategies for Maximizing Your Profit When Selling Gold Jewelry
Effective Strategies for Maximizing Your Profit When Selling Gold JewelryEffective Strategies for Maximizing Your Profit When Selling Gold Jewelry
Effective Strategies for Maximizing Your Profit When Selling Gold Jewelry
 
Send Files | Sendbig.comSend Files | Sendbig.com
Send Files | Sendbig.comSend Files | Sendbig.comSend Files | Sendbig.comSend Files | Sendbig.com
Send Files | Sendbig.comSend Files | Sendbig.com
 
Go for Rakhi Bazaar and Pick the Latest Bhaiya Bhabhi Rakhi.pptx
Go for Rakhi Bazaar and Pick the Latest Bhaiya Bhabhi Rakhi.pptxGo for Rakhi Bazaar and Pick the Latest Bhaiya Bhabhi Rakhi.pptx
Go for Rakhi Bazaar and Pick the Latest Bhaiya Bhabhi Rakhi.pptx
 
Appkodes Tinder Clone Script with Customisable Solutions.pptx
Appkodes Tinder Clone Script with Customisable Solutions.pptxAppkodes Tinder Clone Script with Customisable Solutions.pptx
Appkodes Tinder Clone Script with Customisable Solutions.pptx
 
Intermediate Accounting, Volume 2, 13th Canadian Edition by Donald E. Kieso t...
Intermediate Accounting, Volume 2, 13th Canadian Edition by Donald E. Kieso t...Intermediate Accounting, Volume 2, 13th Canadian Edition by Donald E. Kieso t...
Intermediate Accounting, Volume 2, 13th Canadian Edition by Donald E. Kieso t...
 
1911 Gold Corporate Presentation Apr 2024.pdf
1911 Gold Corporate Presentation Apr 2024.pdf1911 Gold Corporate Presentation Apr 2024.pdf
1911 Gold Corporate Presentation Apr 2024.pdf
 
Entrepreneurship lessons in Philippines
Entrepreneurship lessons in  PhilippinesEntrepreneurship lessons in  Philippines
Entrepreneurship lessons in Philippines
 
The Bizz Quiz-E-Summit-E-Cell-IITPatna.pptx
The Bizz Quiz-E-Summit-E-Cell-IITPatna.pptxThe Bizz Quiz-E-Summit-E-Cell-IITPatna.pptx
The Bizz Quiz-E-Summit-E-Cell-IITPatna.pptx
 
APRIL2024_UKRAINE_xml_0000000000000 .pdf
APRIL2024_UKRAINE_xml_0000000000000 .pdfAPRIL2024_UKRAINE_xml_0000000000000 .pdf
APRIL2024_UKRAINE_xml_0000000000000 .pdf
 
digital marketing , introduction of digital marketing
digital marketing , introduction of digital marketingdigital marketing , introduction of digital marketing
digital marketing , introduction of digital marketing
 
Jewish Resources in the Family Resource Centre
Jewish Resources in the Family Resource CentreJewish Resources in the Family Resource Centre
Jewish Resources in the Family Resource Centre
 
Cyber Security Training in Office Environment
Cyber Security Training in Office EnvironmentCyber Security Training in Office Environment
Cyber Security Training in Office Environment
 
GUIDELINES ON USEFUL FORMS IN FREIGHT FORWARDING (F) Danny Diep Toh MBA.pdf
GUIDELINES ON USEFUL FORMS IN FREIGHT FORWARDING (F) Danny Diep Toh MBA.pdfGUIDELINES ON USEFUL FORMS IN FREIGHT FORWARDING (F) Danny Diep Toh MBA.pdf
GUIDELINES ON USEFUL FORMS IN FREIGHT FORWARDING (F) Danny Diep Toh MBA.pdf
 
Introducing the Analogic framework for business planning applications
Introducing the Analogic framework for business planning applicationsIntroducing the Analogic framework for business planning applications
Introducing the Analogic framework for business planning applications
 
NAB Show Exhibitor List 2024 - Exhibitors Data
NAB Show Exhibitor List 2024 - Exhibitors DataNAB Show Exhibitor List 2024 - Exhibitors Data
NAB Show Exhibitor List 2024 - Exhibitors Data
 

Shared Digital Twins: Collaboration in Ecosystems

  • 1. © Fraunhofer ISST SHARED DIGITAL TWIN: COLLABORATION IN ECOSYSTEMS Prof. Dr.-Ing. Boris Otto  Berlin  18 September 2019 public· 1
  • 2. © Fraunhofer ISST Agenda  Business Rationale and Use Cases  Definition and Conceptual Framework  State of the Art and Outlook public· 2
  • 3. © Fraunhofer ISST Ecosystems – as in the railway industry – are an organizational form to facilitate innovation Source: Knorr-Bremse (2018). public Railway Markets Original Equipment Manufacturers 1st and 2nd Tier SuppliersInfrastructure Providers Energy Suppliers Railway Operators Domain Knowledge Vehicle Knowledge Operational Knowledge Leasing Companies · 3
  • 4. © Fraunhofer ISST  Various proprietary platforms – no standards  Integration and accumulation of knowledge along the value chain  Many use cases – no business models  Lacking proliferation of platforms and services – no critical mass Use Cases To realize the business benefits in ecosystems, a set of challenges has to be overcome Source: Knorr-Bremse (2018). public Challenges · 4
  • 5. © Fraunhofer ISST Using and sharing Digital Twins is a prerequisite for business benefits in many different scenarios Image Source: JDA Software Group, Inc. (2019); DirectIndustry (2019); ABB (2019). public Digital Twin of Supply Chains Demand and Capacity Management Supply Bottleneck Management Production stability  Buffer stock  Delivery quality  Digital Twin of Industrial Assets Predictive Maintenance Condition Monitoring Fast Deployment Productivity  TCO  OEE  Digital Twin of Products Data-Driven Business Models Service-Based Business Models Customer Loyalty  Customer Retention  Service Profitability  · 5
  • 6. © Fraunhofer ISST Supply networks in the automotive are complex and prone to disruptions Source: VW, thyssenkrupp. ACT ComponentTier-2 Jászfényszaru Salzgitter Ilsenburg Valvetrain Győr Ingolstadt Wolfsburg Emden Pamplona Setúbal Puebla Mladá Boleslav Kvasiny Uitenhage Martorell Zwickau Osnabrück Nizhny Novgorod Chemnitz Győr Salzgitter Engine Plant Assembly Plant public … · 6
  • 7. © Fraunhofer ISST Exchanging and sharing data across the supply network to mitigate risks and to overcome co-ordination challenges public Risks and Challenges Data Demands SoP Delay · 7
  • 8. © Fraunhofer ISST Many requirements exists with regard to a Digital Supply Chain Twin  Data must be available on demand  Data events (access, use etc.) must be logged  Access and usage rights must be customizable  Data exchange must follow a harmonized data model  Data use in backend systems must be prohibited/tracked  Data provenance  Data must only be shared together with usage constraints  Only recent updates of data must be stored – if at all  Data sharing follows »quid pro quo« principle  Views must be defined with regard to entire digital twin  … public· 8
  • 9. © Fraunhofer ISST Source: Platform Industrie 4.0, Working Group 1 & 3 (2019). Manufacturer X Condition monitoring of components is a mature Industrie 4.0 use case – generating business benefits along the value chain Integrator V Operator A public· 9
  • 10. © Fraunhofer ISST Component Manufacturer X Business Scenario  Product component P1-X was built in M1-W, M2-W, operated by A Business Case  Condition monitoring for improved productivity Challenges  Organizational, technical, legal prerequisites for data access and use  Data monetization with regard to data provisioning and use End-to-end condition monitoring requires a shared digital twin that meets data security and usage/access rights requirements BP1 A M1 V M2 W P1 X P2 Y P1 X P2 Y P3 Z P3 Z Operator A public· 10
  • 11. © Fraunhofer ISST Agenda  Business Rationale and Use Cases  Definition and Conceptual Framework  State of the Art and Outlook public· 11
  • 12. © Fraunhofer ISST Digital Twin A digital twin comprises data about all lifecycle phases of a real-world object Design Support Material Sciences Supply Chain Risk Management Outage Predictions Design and Engineering Material Management Manufacturing Distribution and Logistics Use and Services Manufacturing Asset Management Adaptive Tool Engineering Maintenance Predictive Process Management Efficient Material Management public· 12
  • 13. © Fraunhofer ISST A digital twin comprises both type-related and instance data for real-world objects Domain-specific Digital Twin Digital Master Master and Reference Data Digital Shadow Process, Event and Context Data Digital Master Model Fundamental Data Model public Design and Engineering Material Management Manufacturing Distribution and Logistics Use and Services · 13
  • 14. © Fraunhofer ISST Data Owner Process Owner Data User Enterprise-wide Business Units Data modelling is the foundation for digital twins Source: Volkswagen (2017). Asset Data Process Data Organizational Data public· 14
  • 15. © Fraunhofer ISST A digital twin is a representation of a real-world object  Digital Twin  Digital representation of a real-world object containing all required information over the entire lifecycle  Dimensions  Type vs instance  Granularity  Type of data  »Ownership« and usage rights  … Definition: Tao et al. (2019); Boschert et al. (2016). Viewgraph source: Column Five (2019). public· 15
  • 16. © Fraunhofer ISST A conceptual framework for shared digital twin data integrates three different perspectives public Shared Digital Twin Business Technology Legal Aspects  Ecosystem roles  Shared information model  Data use cases  Data governance and data sovereignty  Data modelling  Data access and usage  Data interoperability  Data storage  Data integration  Ownership  Compliance to regulations  Ethics · 16
  • 17. © Fraunhofer ISST Agenda  Business Rationale and Use Cases  Definition and Conceptual Framework  State of the Art and Outlook public· 17
  • 18. © Fraunhofer ISST A variety of use cases in different ecosystems adopt the idea of a shared digital twin Source: Skywise – Tardieu, ATOS (2019); DataConnect – John Deere (2019); NEVADA – VDA (2018). public Airline Industry (Skywise) Farming Industry (DataConnect) Mobility Industry (Nevada) Ecosystem Approach Originated from manufacturing scenarios Based on Palantir Data Platform Focus on data exchange Farmer access to data from multiple OEMs Co-opetition mode Interoperability of connected car data Mobility ecosystem Trusted data sharing and exchange SKYWISE Engine Maintainers AIRBUS Equipment Vendors · 18
  • 19. © Fraunhofer ISST The »Administration Shell« concept functions as a blueprint for digital twins in manufacturing Source: BMWi (2016). Reference Architecture Model Industry 4.0 Administration Shell Concept The Administration Shell stores all data of a hardware or software component in production scenarios. It makes data and services related to that component available for Industry 4.0 scenarios in a standardized way. public· 19
  • 20. © Fraunhofer ISST The Asset Administration Shell allows for sharing digital twin data Image source: Hoffmeister & Jochem (2018) according to Epple (2016). Source: Platform Industrie 4.0 (2018). IntegratorSupplier Internal public Operator Repository Verteilte Repositories 2 Publish A1 T B1 T Receive Publish ReceiveComposite Type machine Internal A4 T B4 T C1 T C4 T D1 E1 Composite Instance machineD4 E4 F1 (D4,E4) G3 X F4 (D4*,E4*) product type consolidate consolidate consolidate delivery delivery product product 2nd operator master data G4 Composite production line I4.0- platform 18 I4.0- platform Internal delivery product A2 A3 B2 B3 C2 C3 D2 D3 E2 E2 F2 (D4,E4) F3 (D4*,E4*) public· 20
  • 21. © Fraunhofer ISST The Asset Administration Shell enables shared digital twins Source: Belyaev & Diedrich (2019). public  Identifies and describes assets over networks in an unambiguous way  Allows controlled access to asset data  Makes data along the entire lifecycle available  Can be used for smart and legacy assets · 21
  • 22. © Fraunhofer ISST The Asset Administrative Shell is implemented as a prototype on the SAP Cloud Platform Source: SAP, cited in All-Electronics.de (2019). public· 22
  • 23. © Fraunhofer ISST The International Data Spaces (IDS) initiative enables ecosystems around the sovereign exchange of data Source: Otto et al. (2017); extended representation of the reference architecture model content. public Runtime EnvironmentRuntime Environment authorize publish app transfer data data flow metadata flow software flow identification useIDSsoftware useIDSsoftware useIDSsoftware identify Data Owner App Provider Vocabulary Provider Clearing House App Store Provider Identity Provider Data Consumer Broker Service Provider Service Provider Software Provider Data Provider Certification mandatory Membership in the IDSA mandatory Certification Authority · 23
  • 24. © Fraunhofer ISST The International Data Spaces (IDS) initiative proposes an architecture for the sovereign exchange of data Legend: IDS Connector; Usage Constraints; Non-IDS Communication. public Industrial Data Cloud IoT Cloud Enterprise Cloud Data Marketplace Company 1 Company 2 Company n + 2Company n + 1Company n Open Data Source IDS IDS IDS IDS IDS IDS IDS IDS IDS IDS IDS IDS IDS IDS IDS IDS IDS · 24
  • 25. © Fraunhofer ISST The IDS Information Model ensures a shared understanding of fundamental concepts of data ecosystems Source: https://mvn.isst.fraunhofer.de/nexus/#browse/browse:ids-local:de%2Ffraunhofer%2Fiais%2Feis%2Fids%2Finfomodel public· 25
  • 26. © Fraunhofer ISST The IDS Information Model describes shared data resources via the so-called C-Hexagon Source: IDS Reference Architecture Model 3.0 (2019). public· 26
  • 27. © Fraunhofer ISST Legend: IoT – Internet of Things. Different deployment options for the integration of IDS Connector and Asset Administration Shell are envisaged public· 27
  • 28. © Fraunhofer ISST Data Provenance · Fraunhofer IOSBLabel-Based Usage Control (LUCON) · Fraunhofer AISEC D° (Degree) · Fraunhofer ISSTMYDATA Control Technologies · Fraunhofer IESE Information Provisioning Instantiation Policy Provisioning Policy Deployment & Revocation Consultation Decision Storage Execution DECISIONMANAGEMENTENFORCEMENT A B C D Different usage control technologies address access and usage rights for digital twin data public· 28
  • 29. © Fraunhofer ISST Source: vocol.iais.fraunhofer.de (2019). VoCol is an collaboration environment to develop shared vocabularies public· 29
  • 30. © Fraunhofer ISST The IDS architecture allows for trusted and sovereign data exchange based on a shared digital twin – as shown in the supply bottleneck case above * Release of data through data owner through rule: »ALLOW_RAW_EXPORT«, can be opted out. Data Sovereignty Data with Usage Constraints No Data Sovereignty System 1* Tier 1 Supplier IDS Connector Logic Rights Log Filter REST-API OEM IDS Connector Logic Rights Log Filter REST-API Data Sovereignty Data with Usage Constraints System 1 Tier 1 Supplier IDS Connector Logic Rights Log Filter REST-API OEM IDS Connector Logic Rights Log Filter REST-API … Data from Tier 1 Supplier to OEM Data from OEM to Tier 1 Supplier public· 30
  • 31. © Fraunhofer ISST Policies can be set and enforced through IDS implementations public· 31
  • 32. © Fraunhofer ISST Legend: Circle-shaped Nodes – Ecosystem Member; C – Connector; B – Broker; I – Identity Provider; H – Clearing House; Edges between Nodes – Data Exchange. 1:1 »Few to Few« n:m C C Bilateral Data Exchange C C C C C B I Closed Community Data Sharing C C C H C C I B Open Dynamic Data Ecosystem II IIII Business ecosystems evolve in stages public· 32
  • 33. © Fraunhofer ISST VALUES & FRAMEWORK FOR INNOVATION ENTERPRISE/DIGITAL ECOSYSTEM (using EU standards) SMART ECONONY & SOCIETY SERVICE PLATFORMS DATA SHARING INFRASTRUCTURE CLOUD/EDGE INFRASTRUCTURE NETWORK SMART SERVICES SMART DATA SMART PRODUCTS SMART NETWORK European values Secure and trusted Easy-to-use Federated, neutral Vendor-agnostic Design Principles Urgent demand for a neutral enabler for trusted data sharing and data usage across multiple service platforms across industries! Certification Body Transaction services Data connector services Platform access, antitrust Micro-payment services Quality scoring Encryption services Certification AuthorityClearing House Broker, auditability Inter-operability Serivces Data Governace/ Privacy Essential Trust Services Basic Data Services Dynamic Trust Management Dynamic Attribute Provisioning … Appstore Data Usage Control … … … NB: Architecture stack adapted from Smart Service Welt Working Group (2015). Required is a trusted digital infrastructure for Europe and beyond public· 33
  • 34. © Fraunhofer ISST The concept of the digital twin has evolved over time and will further develop public Digital Shadow Digital Twin Autonomous Digital Agent I II III  Fragmented data traces of real world objects  No adherence to a consistent or even shared information model  Low data interoperability  Distributed storage of data – efficient information retrieval (querying) hardly possible  Consistent representation of real- world object across different lifecycle stages  Shared information model  Integration of type and instance data  Allows simulation (ex ante) and analysis (ex post)  Enabled by Artificial Intelligence  Acts autonomously  Makes recommendation for action  Develops automatically Value Proposition · 34
  • 35. © Fraunhofer ISST Current research and development activities mainly focus on integrating existing concepts  Conceptual integration of Asset Administrative Shell and IDS Information Model  Prototype implementations of integrated scenarios  Development of a trusted, secure infrastructure for sharing digital twin data  Transfer of B2B concepts to B2C scenarios public· 35
  • 36. © Fraunhofer ISST SHARED DIGITAL TWIN: COLLABORATION IN ECOSYSTEMS Prof. Dr.-Ing. Boris Otto  Berlin  18 September 2019 public· 36