SlideShare une entreprise Scribd logo
DESIGN OPTIMIZATION OF BLOWOUT
PREVENTER FOR FATIGUE AND
STRENGTH IN HPHT ENVIRONMENT USING
ISIGHT AND FE-SAFE
2016 SIMULIA South Regional User Meeting – Dassault Systèmes
Houston, Texas
October 13, 2016
Presented by VIAS
Arindam Chakraborty, PhD, PE
© 2016 Virtual Integrated Analytics Solutions Inc.
Outline
• Overview of Company
• Strength of Simulation
• BOP Design Optimization using Simulation
• Machine Learning in Design and Simulation
• Summary
2
© 2016 Virtual Integrated Analytics Solutions Inc.
Overview of Company
Engineering
Consultancy
Training
Hardware
Software
• Cross Industry Experience
• Houston based Entity
• Other US Locations
• Dassault Systèmes SIMULIA Value Added
Reseller – Abaqus, Isight, fe-safe, Tosca
• Provide Virtual Design Experience through
Collaboration and Data Analytics
• Provide 3D printing and AM simulation
services
3
© 2016 Virtual Integrated Analytics Solutions Inc.
Strength of Simulation Example: BOP Design
BOP Body - Quarter Model
• Mechanical device designed to seal off
wellbore, safely control and monitor oil and
gas well in case of blowout
• High Pressure High Temperature (HPHT)
conditions for Deepwater Wells
• Highest safety and quality standards are
mandatory
• Challenge of optimizing the design – weight
reduction
• Need for efficient simulation process to
reduce design time and cost
6
To seal drill pipe
OD and shear the
main body
© 2016 Virtual Integrated Analytics Solutions Inc.
BOP Design Optimization
1
5
Response Surface
Approximation
Fatigue and
Strength
3
Capturing
Reality in
Simulation2
Exploring
Design Space
through DOE 4
6
Design Optimization
Product
Requirements
and Problem
Statement
8
© 2016 Virtual Integrated Analytics Solutions Inc.
Simulation Driven Design Process – Step 1
1
Product
Requirements
and Problem
Statement
10
© 2016 Virtual Integrated Analytics Solutions Inc.
Problem Statement – Step 1
Initial Design Dimensions
Radius = 2.5 in Cavity Height = 10 in
Cavity Width = 13.75 in
Top Beam = 19 in
Lower Beam = 19 in
Side Wall = 23 in
11
18-3/4 – 20k BOP Design
Product Requirements
• Sufficient design life
under cyclic loading
• Weight reduction
© 2016 Virtual Integrated Analytics Solutions Inc.
Problem Statement – Step 1
Design VariablesObjective:
Maximize fatigue life
Design Variables (Deterministic):
 Cavity Height(CH): 8" ≤ H ≤ 12"
 Cavity Width (CW): 11" ≤ W ≤ 16.5
 Top Beam(TB): 11.4" ≤ TB ≤ 26.6“
 Lower Beam (LB): 11.4" ≤ LB ≤ 26.6“
 Side Wall (SW): 16.1" ≤ SW ≤ 29.9“
 Radius (R): 2.235" ≤ R ≤ 5.215“
Constraint:
 Maximum Displacement ≤ 0.040 inches
 Mass ≤ 80% of initial mass
 Cavity Height (CH) should be greater than 2 times
the Radius (R)
 Cavity Width (CW) should be greater than 10 inches
plus Radius (R)
R CH
CW
TB
LB
SW
12
© 2016 Virtual Integrated Analytics Solutions Inc.
Simulation Driven Design Process – Step 2
2
13
Capturing Reality
in Simulation
© 2016 Virtual Integrated Analytics Solutions Inc.
Material, Loads, BCs – Step 2
Linear Elastic Material Properties for Steel AISI 4130:
 Young’s Modulus: 29,000 ksi
 Yield Strength: 66.7 ksi
Loads (Cycling from 0 to Max.):
Internal Pressure = 20 ksi
Vertical Load = 150 kips
14
Z-Symmetry
X-Symmetry
Y-Fixed
© 2016 Virtual Integrated Analytics Solutions Inc.
Simulation Driven Design Process – Step 3
Fatigue and
Strength 3
16
© 2016 Virtual Integrated Analytics Solutions Inc.
FEA for Strength – Step 3 (Abaqus)
von Mises Stress due to Internal Pressure von Mises Stress due to Vertical Lift Load
Node 2 for Y-Displacement Constraint
Initial Design
17
Mass
(lb)
Y-Disp
Node 1 (in)
Y-Disp
Node 2 (in)
15497.5 0.0439 0.0333
Output Node 1 for Y-Displacement
Constraint
© 2016 Virtual Integrated Analytics Solutions Inc.
Fatigue Life – Step 3 (fe-safe)
Initial Design
19
Lowest fatigue cyclesElement/node with lowest life
588.8
Neuber Correction
Internal Pressure = 20 ksi Vertical Load = 150 kips
Pressure Cycles = 100 cycles Vertical Load Cycles = 500 cycles
ONE BLOCK
© 2016 Virtual Integrated Analytics Solutions Inc.
Simulation Driven Design Process – Step 4
Exploring
Design Space
through DOE 4
20
© 2016 Virtual Integrated Analytics Solutions Inc.
Simulation Workflow – Step 4 (Isight)
Initial Design
Design of
Experiments
(DOE)
Response
Surface
Optimized
Design
21
fe-safe
DOE (Optimal Latin Hypercube – 76 Runs)
© 2016 Virtual Integrated Analytics Solutions Inc.
Design of Experiments – Step 4 (Isight)
Pareto Plot
Radius and Cavity Width are the design parameters that have higher effect on the fatigue life of the BOP
22
© 2016 Virtual Integrated Analytics Solutions Inc.
Simulation Driven Design Process – Step 5
5
Response Surface
Approximation
24
© 2016 Virtual Integrated Analytics Solutions Inc.
Simulation Workflow – Step 5 (Isight)
Initial Design
Design of
Experiments
(DOE)
Response
Surface
Optimized
Design
25
fe-safe
© 2016 Virtual Integrated Analytics Solutions Inc.
Approximation – Step 5 (Isight)
Elliptical Basis Function (EBF)
Error Analysis - Fatigue
Responses R-Squared
Mass 0.99789
Y Displacement – Node 1 0.99295
Y Displacement – Node 2 0.99335
Fatigue Cycles 0.94123
26
Error Analysis – Disp N 1
© 2016 Virtual Integrated Analytics Solutions Inc.
Simulation Driven Design Process – Step 6
6
Design Optimization
28
© 2016 Virtual Integrated Analytics Solutions Inc.
Simulation Workflow – Step 6 (Isight)
Initial Design
Design of
Experiments
(DOE)
Response
Surface
Optimized
Design
29
fe-safe
Sequential Quadratic Programming
– 57 Iterations
© 2016 Virtual Integrated Analytics Solutions Inc.
Deterministic Optimum Design – Step 6
Case CH
(in)
CW
(in)
R
(in)
LB
(in)
TB
(in)
SW
(in)
Fatigue
Cycles
Mass
(lb)
Y-Disp
Node 1 (in)
Y-Disp
Node 2 (in)
Initial Design
(Mean)
10.0 13.75 3.725 19.0 19.0 23.0 588.8 15497.5 0.0439 0.0333
Optimum
Design
8.0 13.02 3.02 22.05 17.45 16.1 1348.9 12501.8 0.040 0.0287
R CH
CW
TB
LB
SW
Input Output
Initial Design Optimum Design
• Fatigue life is increased 2.3 times from the initial design
• Geometry, weight and displacement constraints are satisfied
31
© 2016 Virtual Integrated Analytics Solutions Inc.
• Machine learning can help in design simulations by generating
predictive models to estimate output given initial parameters.
• We approximate the output of a simulation using deep network
architectures for regression.
• The idea is to capture compact, high-order
representations in an efficient and iterative
manner.
• Learning takes place by combining non-
linear combinations of inputs on many
layers of abstraction.
• Low levels concepts are the foundation for
high level concepts.
Machine Learning in Design and
Simulation
32
© 2016 Virtual Integrated Analytics Solutions Inc.
Projection on two variables showing actual data (black) and
approximation using deep learning (red).
Machine Learning to Predict Output of
Simulations
Good Approximation of Predicted Values vs. Actual Values
34
© 2016 Virtual Integrated Analytics Solutions Inc.
Machine Learning to Minimize the
Number of Simulations
Machine learning can additionally help to minimize the number
of simulations by using a technique known as “active learning”.
In active learning the algorithm point to those instances (parameter
vectors) that are “most informative” to increase the accuracy in the
predictions.
Active
Learning
35
© 2016 Virtual Integrated Analytics Solutions Inc.
Sample Estimation vs True Performance.
Machine Learning to Minimize The
Number of Simulations
37
© 2016 Virtual Integrated Analytics Solutions Inc.
Summary
• Optimizing BOP Design using SIMULIA Power of Portfolio
Software Concludes:
• fatigue life is increased by 2.3 times from the initial design;
• weight of the BOP is reduced by 20%;
• maximum allowable displacement of 0.04 inches is satisfied;
• automation of the design and simulation process helps to decrease
the cost and reduce the time;
• Mathematics based as compared to heuristic design approach.
• Using Machine Learning in BOP Design and Simulation
Helps to:
• predict the output of simulations much faster than traditional
FEA type models;
• minimize the number of simulations through active learning.
38
© 2016 Virtual Integrated Analytics Solutions Inc.
VIAS – Software / Training / Consulting
Certified SIMULIA Support and Training
Email : achakraborty@viascorp.com
Phone : +1 (832) 301-0881
Engineering Consulting
39
© 2016 Virtual Integrated Analytics Solutions Inc.
Acknowledgements
Noesis Al – Mat Podskarbi, Ricardo Vilalta
SIMULIA Support – Sohini Sarkar, Dave
Naehring, Sreeparna Sengupta
40
© 2016 Virtual Integrated Analytics Solutions Inc.
Thank you
41

Contenu connexe

Tendances

Reliable Positioning with Hybrid Antenna Model for Aerial Wireless Sensor and...
Reliable Positioning with Hybrid Antenna Model for Aerial Wireless Sensor and...Reliable Positioning with Hybrid Antenna Model for Aerial Wireless Sensor and...
Reliable Positioning with Hybrid Antenna Model for Aerial Wireless Sensor and...M. Ilhan Akbas
 
Topology Optimization Applied to Part Constructed Via FDM (Fused Deposition M...
Topology Optimization Applied to Part Constructed Via FDM (Fused Deposition M...Topology Optimization Applied to Part Constructed Via FDM (Fused Deposition M...
Topology Optimization Applied to Part Constructed Via FDM (Fused Deposition M...Altair
 
CEM and Radar Cross Section @ Zeus Numerix
CEM and Radar Cross Section @ Zeus NumerixCEM and Radar Cross Section @ Zeus Numerix
CEM and Radar Cross Section @ Zeus NumerixAbhishek Jain
 
Scalable verification of a generic end around-carry adder for floating-point ...
Scalable verification of a generic end around-carry adder for floating-point ...Scalable verification of a generic end around-carry adder for floating-point ...
Scalable verification of a generic end around-carry adder for floating-point ...I3E Technologies
 
2016 news@tcs june rfem software
2016 news@tcs june rfem software2016 news@tcs june rfem software
2016 news@tcs june rfem softwareJo Gijbels
 
Multiphysics CAE for Engineering Innovation_ ICCMEH- 2014 Keynote
 Multiphysics CAE for Engineering Innovation_ ICCMEH- 2014 Keynote Multiphysics CAE for Engineering Innovation_ ICCMEH- 2014 Keynote
Multiphysics CAE for Engineering Innovation_ ICCMEH- 2014 KeynoteATOA Scientific Technologies
 
Multi-disciplinary simulation of Cyber-Physical Systems – The OpenCPS approach
Multi-disciplinary simulation of Cyber-Physical Systems – The OpenCPS approachMulti-disciplinary simulation of Cyber-Physical Systems – The OpenCPS approach
Multi-disciplinary simulation of Cyber-Physical Systems – The OpenCPS approachÁkos Horváth
 
IoT Meetup Budapest - The Open-CPS approach
IoT Meetup Budapest - The Open-CPS approachIoT Meetup Budapest - The Open-CPS approach
IoT Meetup Budapest - The Open-CPS approachÁkos Horváth
 
IMPACT Final Conference - NCSR - Page curl correction
IMPACT Final Conference - NCSR - Page curl correctionIMPACT Final Conference - NCSR - Page curl correction
IMPACT Final Conference - NCSR - Page curl correctionIMPACT Centre of Competence
 
Future Offshore Wind Energy Technology
Future Offshore Wind Energy TechnologyFuture Offshore Wind Energy Technology
Future Offshore Wind Energy TechnologyPhilip Totaro
 
Offshore wind innovation for cost reduction Wind Europe Summit 2016 Freeman/KIC
Offshore wind innovation for cost reduction Wind Europe Summit 2016 Freeman/KICOffshore wind innovation for cost reduction Wind Europe Summit 2016 Freeman/KIC
Offshore wind innovation for cost reduction Wind Europe Summit 2016 Freeman/KICBVG Associates
 
Challenges and solutions for modelling of tidal turbines
Challenges and solutions for modelling of tidal turbinesChallenges and solutions for modelling of tidal turbines
Challenges and solutions for modelling of tidal turbinesLondon
 
Arc: An IR for Batch and Stream Programming
Arc: An IR for Batch and Stream ProgrammingArc: An IR for Batch and Stream Programming
Arc: An IR for Batch and Stream ProgrammingLars Kroll
 
An Introduction to Electronics Cooling
An Introduction to Electronics CoolingAn Introduction to Electronics Cooling
An Introduction to Electronics CoolingSimScale
 
New NDT technology for assessment of concrete defects and faults
New NDT technology for assessment of concrete defects and faultsNew NDT technology for assessment of concrete defects and faults
New NDT technology for assessment of concrete defects and faultsDavid Corbett
 
Casting zero porosity rotors
Casting zero porosity rotorsCasting zero porosity rotors
Casting zero porosity rotorsLeonardo ENERGY
 

Tendances (20)

Project 2019 05
Project 2019 05Project 2019 05
Project 2019 05
 
Reliable Positioning with Hybrid Antenna Model for Aerial Wireless Sensor and...
Reliable Positioning with Hybrid Antenna Model for Aerial Wireless Sensor and...Reliable Positioning with Hybrid Antenna Model for Aerial Wireless Sensor and...
Reliable Positioning with Hybrid Antenna Model for Aerial Wireless Sensor and...
 
Topology Optimization Applied to Part Constructed Via FDM (Fused Deposition M...
Topology Optimization Applied to Part Constructed Via FDM (Fused Deposition M...Topology Optimization Applied to Part Constructed Via FDM (Fused Deposition M...
Topology Optimization Applied to Part Constructed Via FDM (Fused Deposition M...
 
CEM and Radar Cross Section @ Zeus Numerix
CEM and Radar Cross Section @ Zeus NumerixCEM and Radar Cross Section @ Zeus Numerix
CEM and Radar Cross Section @ Zeus Numerix
 
CV_Basavanagowda
CV_BasavanagowdaCV_Basavanagowda
CV_Basavanagowda
 
Scalable verification of a generic end around-carry adder for floating-point ...
Scalable verification of a generic end around-carry adder for floating-point ...Scalable verification of a generic end around-carry adder for floating-point ...
Scalable verification of a generic end around-carry adder for floating-point ...
 
Derek Berry - IACMI/Wind Technology Area
Derek Berry - IACMI/Wind Technology AreaDerek Berry - IACMI/Wind Technology Area
Derek Berry - IACMI/Wind Technology Area
 
2016 news@tcs june rfem software
2016 news@tcs june rfem software2016 news@tcs june rfem software
2016 news@tcs june rfem software
 
Multiphysics CAE for Engineering Innovation_ ICCMEH- 2014 Keynote
 Multiphysics CAE for Engineering Innovation_ ICCMEH- 2014 Keynote Multiphysics CAE for Engineering Innovation_ ICCMEH- 2014 Keynote
Multiphysics CAE for Engineering Innovation_ ICCMEH- 2014 Keynote
 
Multi-disciplinary simulation of Cyber-Physical Systems – The OpenCPS approach
Multi-disciplinary simulation of Cyber-Physical Systems – The OpenCPS approachMulti-disciplinary simulation of Cyber-Physical Systems – The OpenCPS approach
Multi-disciplinary simulation of Cyber-Physical Systems – The OpenCPS approach
 
IoT Meetup Budapest - The Open-CPS approach
IoT Meetup Budapest - The Open-CPS approachIoT Meetup Budapest - The Open-CPS approach
IoT Meetup Budapest - The Open-CPS approach
 
IMPACT Final Conference - NCSR - Page curl correction
IMPACT Final Conference - NCSR - Page curl correctionIMPACT Final Conference - NCSR - Page curl correction
IMPACT Final Conference - NCSR - Page curl correction
 
Future Offshore Wind Energy Technology
Future Offshore Wind Energy TechnologyFuture Offshore Wind Energy Technology
Future Offshore Wind Energy Technology
 
11 r.kopecek isc-ok
11   r.kopecek   isc-ok11   r.kopecek   isc-ok
11 r.kopecek isc-ok
 
Offshore wind innovation for cost reduction Wind Europe Summit 2016 Freeman/KIC
Offshore wind innovation for cost reduction Wind Europe Summit 2016 Freeman/KICOffshore wind innovation for cost reduction Wind Europe Summit 2016 Freeman/KIC
Offshore wind innovation for cost reduction Wind Europe Summit 2016 Freeman/KIC
 
Challenges and solutions for modelling of tidal turbines
Challenges and solutions for modelling of tidal turbinesChallenges and solutions for modelling of tidal turbines
Challenges and solutions for modelling of tidal turbines
 
Arc: An IR for Batch and Stream Programming
Arc: An IR for Batch and Stream ProgrammingArc: An IR for Batch and Stream Programming
Arc: An IR for Batch and Stream Programming
 
An Introduction to Electronics Cooling
An Introduction to Electronics CoolingAn Introduction to Electronics Cooling
An Introduction to Electronics Cooling
 
New NDT technology for assessment of concrete defects and faults
New NDT technology for assessment of concrete defects and faultsNew NDT technology for assessment of concrete defects and faults
New NDT technology for assessment of concrete defects and faults
 
Casting zero porosity rotors
Casting zero porosity rotorsCasting zero porosity rotors
Casting zero porosity rotors
 

Similaire à Design optimization of BOP for fatigue and strength in HPHT environment using Isight and FE-Safe

Design Optimization of Safety Critical Component for Fatigue and Strength Usi...
Design Optimization of Safety Critical Component for Fatigue and Strength Usi...Design Optimization of Safety Critical Component for Fatigue and Strength Usi...
Design Optimization of Safety Critical Component for Fatigue and Strength Usi...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 
Metal Additive Manufacturing - part 5
Metal Additive Manufacturing - part 5Metal Additive Manufacturing - part 5
Metal Additive Manufacturing - part 5Marco Preziosa
 
Optimization Computing Platform for the Construction Industry
Optimization Computing Platform for the Construction IndustryOptimization Computing Platform for the Construction Industry
Optimization Computing Platform for the Construction IndustryKostas Dimitriou
 
Optimization_model_of the propsed kiiraEV assembly lineprstn
Optimization_model_of the propsed kiiraEV assembly lineprstnOptimization_model_of the propsed kiiraEV assembly lineprstn
Optimization_model_of the propsed kiiraEV assembly lineprstnRonald Kayiwa
 
Ag o product overview
Ag o product overviewAg o product overview
Ag o product overviewManoj Nagesh
 
Fatigue_reliability_eng_P_web
Fatigue_reliability_eng_P_webFatigue_reliability_eng_P_web
Fatigue_reliability_eng_P_webSahl Martin
 
DesignTech Systems - DCS presentation Oct 2017
DesignTech Systems - DCS presentation Oct 2017DesignTech Systems - DCS presentation Oct 2017
DesignTech Systems - DCS presentation Oct 2017DesignTech Systems Ltd.
 
Ottimizzazione topologica: elemento essenziale nella progettazione di compone...
Ottimizzazione topologica: elemento essenziale nella progettazione di compone...Ottimizzazione topologica: elemento essenziale nella progettazione di compone...
Ottimizzazione topologica: elemento essenziale nella progettazione di compone...TogetherToSolve
 
New Approaches to ALM PLM Cross Discipline Product Development
New Approaches to ALM PLM Cross Discipline Product DevelopmentNew Approaches to ALM PLM Cross Discipline Product Development
New Approaches to ALM PLM Cross Discipline Product DevelopmentAras
 
Simulation of transient temperature and stress field in the polymer extrusion...
Simulation of transient temperature and stress field in the polymer extrusion...Simulation of transient temperature and stress field in the polymer extrusion...
Simulation of transient temperature and stress field in the polymer extrusion...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 
Model-Based User Interface Optimization: Part I INTRODUCTION - At SICSA Summe...
Model-Based User Interface Optimization: Part I INTRODUCTION - At SICSA Summe...Model-Based User Interface Optimization: Part I INTRODUCTION - At SICSA Summe...
Model-Based User Interface Optimization: Part I INTRODUCTION - At SICSA Summe...Aalto University
 
ARC's Greg Gorbach Rapid Product Innovation Presentation @ ARC Industry Forum...
ARC's Greg Gorbach Rapid Product Innovation Presentation @ ARC Industry Forum...ARC's Greg Gorbach Rapid Product Innovation Presentation @ ARC Industry Forum...
ARC's Greg Gorbach Rapid Product Innovation Presentation @ ARC Industry Forum...ARC Advisory Group
 
AI-accelerated CFD (Computational Fluid Dynamics)
AI-accelerated CFD (Computational Fluid Dynamics)AI-accelerated CFD (Computational Fluid Dynamics)
AI-accelerated CFD (Computational Fluid Dynamics)byteLAKE
 
Accenture at LiveWorx: Making Business Flow. Projects are the Anti-Patterns
Accenture at LiveWorx: Making Business Flow. Projects are the Anti-PatternsAccenture at LiveWorx: Making Business Flow. Projects are the Anti-Patterns
Accenture at LiveWorx: Making Business Flow. Projects are the Anti-Patternsaccenture
 
스마트 엔지니어링: 제조사를 위한 품질 예측 시뮬레이션 및 인공지능 모델 적용 사례 소개 – 권신중 AWS 솔루션즈 아키텍트, 천준홍 두산...
스마트 엔지니어링: 제조사를 위한 품질 예측 시뮬레이션 및 인공지능 모델 적용 사례 소개 – 권신중 AWS 솔루션즈 아키텍트, 천준홍 두산...스마트 엔지니어링: 제조사를 위한 품질 예측 시뮬레이션 및 인공지능 모델 적용 사례 소개 – 권신중 AWS 솔루션즈 아키텍트, 천준홍 두산...
스마트 엔지니어링: 제조사를 위한 품질 예측 시뮬레이션 및 인공지능 모델 적용 사례 소개 – 권신중 AWS 솔루션즈 아키텍트, 천준홍 두산...Amazon Web Services Korea
 
Cd general presentation_201306_eng_03
Cd general presentation_201306_eng_03Cd general presentation_201306_eng_03
Cd general presentation_201306_eng_03Victor Mitov
 
It‘s Math That Drives Things – Simulink as Simulation and Modeling Environment
It‘s Math That Drives Things – Simulink as Simulation and Modeling EnvironmentIt‘s Math That Drives Things – Simulink as Simulation and Modeling Environment
It‘s Math That Drives Things – Simulink as Simulation and Modeling EnvironmentJoachim Schlosser
 
Additive Manufacturing Process Simulation and Generative Design-Production of...
Additive Manufacturing Process Simulation and Generative Design-Production of...Additive Manufacturing Process Simulation and Generative Design-Production of...
Additive Manufacturing Process Simulation and Generative Design-Production of...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 

Similaire à Design optimization of BOP for fatigue and strength in HPHT environment using Isight and FE-Safe (20)

Design Optimization of Safety Critical Component for Fatigue and Strength Usi...
Design Optimization of Safety Critical Component for Fatigue and Strength Usi...Design Optimization of Safety Critical Component for Fatigue and Strength Usi...
Design Optimization of Safety Critical Component for Fatigue and Strength Usi...
 
Metal Additive Manufacturing - part 5
Metal Additive Manufacturing - part 5Metal Additive Manufacturing - part 5
Metal Additive Manufacturing - part 5
 
Optimization Computing Platform for the Construction Industry
Optimization Computing Platform for the Construction IndustryOptimization Computing Platform for the Construction Industry
Optimization Computing Platform for the Construction Industry
 
Optimization_model_of the propsed kiiraEV assembly lineprstn
Optimization_model_of the propsed kiiraEV assembly lineprstnOptimization_model_of the propsed kiiraEV assembly lineprstn
Optimization_model_of the propsed kiiraEV assembly lineprstn
 
Ag o product overview
Ag o product overviewAg o product overview
Ag o product overview
 
Fatigue_reliability_eng_P_web
Fatigue_reliability_eng_P_webFatigue_reliability_eng_P_web
Fatigue_reliability_eng_P_web
 
DesignTech Systems - DCS presentation Oct 2017
DesignTech Systems - DCS presentation Oct 2017DesignTech Systems - DCS presentation Oct 2017
DesignTech Systems - DCS presentation Oct 2017
 
Ottimizzazione topologica: elemento essenziale nella progettazione di compone...
Ottimizzazione topologica: elemento essenziale nella progettazione di compone...Ottimizzazione topologica: elemento essenziale nella progettazione di compone...
Ottimizzazione topologica: elemento essenziale nella progettazione di compone...
 
New Approaches to ALM PLM Cross Discipline Product Development
New Approaches to ALM PLM Cross Discipline Product DevelopmentNew Approaches to ALM PLM Cross Discipline Product Development
New Approaches to ALM PLM Cross Discipline Product Development
 
Simulation of transient temperature and stress field in the polymer extrusion...
Simulation of transient temperature and stress field in the polymer extrusion...Simulation of transient temperature and stress field in the polymer extrusion...
Simulation of transient temperature and stress field in the polymer extrusion...
 
Model-Based User Interface Optimization: Part I INTRODUCTION - At SICSA Summe...
Model-Based User Interface Optimization: Part I INTRODUCTION - At SICSA Summe...Model-Based User Interface Optimization: Part I INTRODUCTION - At SICSA Summe...
Model-Based User Interface Optimization: Part I INTRODUCTION - At SICSA Summe...
 
ARC's Greg Gorbach Rapid Product Innovation Presentation @ ARC Industry Forum...
ARC's Greg Gorbach Rapid Product Innovation Presentation @ ARC Industry Forum...ARC's Greg Gorbach Rapid Product Innovation Presentation @ ARC Industry Forum...
ARC's Greg Gorbach Rapid Product Innovation Presentation @ ARC Industry Forum...
 
AI-accelerated CFD (Computational Fluid Dynamics)
AI-accelerated CFD (Computational Fluid Dynamics)AI-accelerated CFD (Computational Fluid Dynamics)
AI-accelerated CFD (Computational Fluid Dynamics)
 
Accenture at LiveWorx: Making Business Flow. Projects are the Anti-Patterns
Accenture at LiveWorx: Making Business Flow. Projects are the Anti-PatternsAccenture at LiveWorx: Making Business Flow. Projects are the Anti-Patterns
Accenture at LiveWorx: Making Business Flow. Projects are the Anti-Patterns
 
스마트 엔지니어링: 제조사를 위한 품질 예측 시뮬레이션 및 인공지능 모델 적용 사례 소개 – 권신중 AWS 솔루션즈 아키텍트, 천준홍 두산...
스마트 엔지니어링: 제조사를 위한 품질 예측 시뮬레이션 및 인공지능 모델 적용 사례 소개 – 권신중 AWS 솔루션즈 아키텍트, 천준홍 두산...스마트 엔지니어링: 제조사를 위한 품질 예측 시뮬레이션 및 인공지능 모델 적용 사례 소개 – 권신중 AWS 솔루션즈 아키텍트, 천준홍 두산...
스마트 엔지니어링: 제조사를 위한 품질 예측 시뮬레이션 및 인공지능 모델 적용 사례 소개 – 권신중 AWS 솔루션즈 아키텍트, 천준홍 두산...
 
Cd general presentation_201306_eng_03
Cd general presentation_201306_eng_03Cd general presentation_201306_eng_03
Cd general presentation_201306_eng_03
 
It‘s Math That Drives Things – Simulink as Simulation and Modeling Environment
It‘s Math That Drives Things – Simulink as Simulation and Modeling EnvironmentIt‘s Math That Drives Things – Simulink as Simulation and Modeling Environment
It‘s Math That Drives Things – Simulink as Simulation and Modeling Environment
 
Altair ProductDesign Overview
Altair ProductDesign OverviewAltair ProductDesign Overview
Altair ProductDesign Overview
 
Additive Manufacturing Process Simulation and Generative Design-Production of...
Additive Manufacturing Process Simulation and Generative Design-Production of...Additive Manufacturing Process Simulation and Generative Design-Production of...
Additive Manufacturing Process Simulation and Generative Design-Production of...
 
SSE Practices Overview
SSE Practices OverviewSSE Practices Overview
SSE Practices Overview
 

Plus de Arindam Chakraborty, Ph.D., P.E. (CA, TX)

Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 
Ensuring Structural Compliance of Electric Vehicle Battery Pack Against Crush...
Ensuring Structural Compliance of Electric Vehicle Battery Pack Against Crush...Ensuring Structural Compliance of Electric Vehicle Battery Pack Against Crush...
Ensuring Structural Compliance of Electric Vehicle Battery Pack Against Crush...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 
Digital Twin based Product Development in Life Science Industry – Sustainable...
Digital Twin based Product Development in Life Science Industry – Sustainable...Digital Twin based Product Development in Life Science Industry – Sustainable...
Digital Twin based Product Development in Life Science Industry – Sustainable...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 
Engineered to Cure – Patient Specific Tibial Implant Design using Micro-Macro...
Engineered to Cure – Patient Specific Tibial Implant Design using Micro-Macro...Engineered to Cure – Patient Specific Tibial Implant Design using Micro-Macro...
Engineered to Cure – Patient Specific Tibial Implant Design using Micro-Macro...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 
Reliability Based Design Optimization of Primary Shield Structure Under Seism...
Reliability Based Design Optimization of Primary Shield Structure Under Seism...Reliability Based Design Optimization of Primary Shield Structure Under Seism...
Reliability Based Design Optimization of Primary Shield Structure Under Seism...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 
Analysis of ERDIP joint at fault using Abaqus - A case study for simulation b...
Analysis of ERDIP joint at fault using Abaqus - A case study for simulation b...Analysis of ERDIP joint at fault using Abaqus - A case study for simulation b...
Analysis of ERDIP joint at fault using Abaqus - A case study for simulation b...Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 
FEA Based Pipe Stress Analysis - Introduction To Pipe Calculation System (PCS)
FEA Based Pipe Stress Analysis - Introduction To Pipe Calculation System (PCS)FEA Based Pipe Stress Analysis - Introduction To Pipe Calculation System (PCS)
FEA Based Pipe Stress Analysis - Introduction To Pipe Calculation System (PCS)Arindam Chakraborty, Ph.D., P.E. (CA, TX)
 

Plus de Arindam Chakraborty, Ph.D., P.E. (CA, TX) (20)

FEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced Loads
FEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced LoadsFEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced Loads
FEA Based Level 3 Assessment of Deformed Tanks with Fluid Induced Loads
 
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
Navigating Complexity: The Role of Trusted Partners and VIAS3D in Dassault Sy...
 
Shelf-Life Prediction for Consumer Packaged Goods (CPG) Bottles
Shelf-Life Prediction for Consumer Packaged Goods (CPG) Bottles Shelf-Life Prediction for Consumer Packaged Goods (CPG) Bottles
Shelf-Life Prediction for Consumer Packaged Goods (CPG) Bottles
 
Ensuring Structural Compliance of Electric Vehicle Battery Pack Against Crush...
Ensuring Structural Compliance of Electric Vehicle Battery Pack Against Crush...Ensuring Structural Compliance of Electric Vehicle Battery Pack Against Crush...
Ensuring Structural Compliance of Electric Vehicle Battery Pack Against Crush...
 
Digital Twin based Product Development in Life Science Industry – Sustainable...
Digital Twin based Product Development in Life Science Industry – Sustainable...Digital Twin based Product Development in Life Science Industry – Sustainable...
Digital Twin based Product Development in Life Science Industry – Sustainable...
 
Engineered to Cure – Patient Specific Tibial Implant Design using Micro-Macro...
Engineered to Cure – Patient Specific Tibial Implant Design using Micro-Macro...Engineered to Cure – Patient Specific Tibial Implant Design using Micro-Macro...
Engineered to Cure – Patient Specific Tibial Implant Design using Micro-Macro...
 
FEA Based Level 3 Assessment of Deformed Tanks
FEA Based Level 3 Assessment of Deformed TanksFEA Based Level 3 Assessment of Deformed Tanks
FEA Based Level 3 Assessment of Deformed Tanks
 
Structural Compliance of Electric Vehicle Battery Pack
Structural Compliance of Electric Vehicle Battery Pack Structural Compliance of Electric Vehicle Battery Pack
Structural Compliance of Electric Vehicle Battery Pack
 
Integrating Laser Scan Data into FEA Model to Perform Level 3 FFS
Integrating Laser Scan Data into FEA Model to Perform Level 3 FFSIntegrating Laser Scan Data into FEA Model to Perform Level 3 FFS
Integrating Laser Scan Data into FEA Model to Perform Level 3 FFS
 
ORS 2022-Tibial implant analysis using patient specific data
ORS 2022-Tibial implant analysis using patient specific data ORS 2022-Tibial implant analysis using patient specific data
ORS 2022-Tibial implant analysis using patient specific data
 
Simulation Study of Brake System Performance
Simulation Study of Brake System PerformanceSimulation Study of Brake System Performance
Simulation Study of Brake System Performance
 
Fracture Reliability
Fracture Reliability Fracture Reliability
Fracture Reliability
 
Reliability Based Design Optimization of Primary Shield Structure Under Seism...
Reliability Based Design Optimization of Primary Shield Structure Under Seism...Reliability Based Design Optimization of Primary Shield Structure Under Seism...
Reliability Based Design Optimization of Primary Shield Structure Under Seism...
 
Analysis of ERDIP joint at fault using Abaqus - A case study for simulation b...
Analysis of ERDIP joint at fault using Abaqus - A case study for simulation b...Analysis of ERDIP joint at fault using Abaqus - A case study for simulation b...
Analysis of ERDIP joint at fault using Abaqus - A case study for simulation b...
 
CFD simulation Capabilities for marine / offshore Applications
CFD simulation Capabilities for marine / offshore ApplicationsCFD simulation Capabilities for marine / offshore Applications
CFD simulation Capabilities for marine / offshore Applications
 
FEA Based Pipe Stress Analysis - Introduction To Pipe Calculation System (PCS)
FEA Based Pipe Stress Analysis - Introduction To Pipe Calculation System (PCS)FEA Based Pipe Stress Analysis - Introduction To Pipe Calculation System (PCS)
FEA Based Pipe Stress Analysis - Introduction To Pipe Calculation System (PCS)
 
What is Data Analysis and Machine Learning?
What is Data Analysis and Machine Learning?What is Data Analysis and Machine Learning?
What is Data Analysis and Machine Learning?
 
Vias services and capabilities
Vias services and capabilitiesVias services and capabilities
Vias services and capabilities
 
Simulation in the CPG-retail Industry
Simulation in the CPG-retail IndustrySimulation in the CPG-retail Industry
Simulation in the CPG-retail Industry
 
Knee Simulation using ABAQUS
Knee Simulation using ABAQUSKnee Simulation using ABAQUS
Knee Simulation using ABAQUS
 

Dernier

Immunizing Image Classifiers Against Localized Adversary Attacks
Immunizing Image Classifiers Against Localized Adversary AttacksImmunizing Image Classifiers Against Localized Adversary Attacks
Immunizing Image Classifiers Against Localized Adversary Attacksgerogepatton
 
fluid mechanics gate notes . gate all pyqs answer
fluid mechanics gate notes . gate all pyqs answerfluid mechanics gate notes . gate all pyqs answer
fluid mechanics gate notes . gate all pyqs answerapareshmondalnita
 
Construction method of steel structure space frame .pptx
Construction method of steel structure space frame .pptxConstruction method of steel structure space frame .pptx
Construction method of steel structure space frame .pptxwendy cai
 
Toll tax management system project report..pdf
Toll tax management system project report..pdfToll tax management system project report..pdf
Toll tax management system project report..pdfKamal Acharya
 
RS Khurmi Machine Design Clutch and Brake Exercise Numerical Solutions
RS Khurmi Machine Design Clutch and Brake Exercise Numerical SolutionsRS Khurmi Machine Design Clutch and Brake Exercise Numerical Solutions
RS Khurmi Machine Design Clutch and Brake Exercise Numerical SolutionsAtif Razi
 
BRAKING SYSTEM IN INDIAN RAILWAY AutoCAD DRAWING
BRAKING SYSTEM IN INDIAN RAILWAY AutoCAD DRAWINGBRAKING SYSTEM IN INDIAN RAILWAY AutoCAD DRAWING
BRAKING SYSTEM IN INDIAN RAILWAY AutoCAD DRAWINGKOUSTAV SARKAR
 
Quality defects in TMT Bars, Possible causes and Potential Solutions.
Quality defects in TMT Bars, Possible causes and Potential Solutions.Quality defects in TMT Bars, Possible causes and Potential Solutions.
Quality defects in TMT Bars, Possible causes and Potential Solutions.PrashantGoswami42
 
IT-601 Lecture Notes-UNIT-2.pdf Data Analysis
IT-601 Lecture Notes-UNIT-2.pdf Data AnalysisIT-601 Lecture Notes-UNIT-2.pdf Data Analysis
IT-601 Lecture Notes-UNIT-2.pdf Data AnalysisDr. Radhey Shyam
 
Hall booking system project report .pdf
Hall booking system project report  .pdfHall booking system project report  .pdf
Hall booking system project report .pdfKamal Acharya
 
HYDROPOWER - Hydroelectric power generation
HYDROPOWER - Hydroelectric power generationHYDROPOWER - Hydroelectric power generation
HYDROPOWER - Hydroelectric power generationRobbie Edward Sayers
 
Democratizing Fuzzing at Scale by Abhishek Arya
Democratizing Fuzzing at Scale by Abhishek AryaDemocratizing Fuzzing at Scale by Abhishek Arya
Democratizing Fuzzing at Scale by Abhishek Aryaabh.arya
 
ENERGY STORAGE DEVICES INTRODUCTION UNIT-I
ENERGY STORAGE DEVICES  INTRODUCTION UNIT-IENERGY STORAGE DEVICES  INTRODUCTION UNIT-I
ENERGY STORAGE DEVICES INTRODUCTION UNIT-IVigneshvaranMech
 
WATER CRISIS and its solutions-pptx 1234
WATER CRISIS and its solutions-pptx 1234WATER CRISIS and its solutions-pptx 1234
WATER CRISIS and its solutions-pptx 1234AafreenAbuthahir2
 
ASME IX(9) 2007 Full Version .pdf
ASME IX(9)  2007 Full Version       .pdfASME IX(9)  2007 Full Version       .pdf
ASME IX(9) 2007 Full Version .pdfAhmedHussein950959
 
CFD Simulation of By-pass Flow in a HRSG module by R&R Consult.pptx
CFD Simulation of By-pass Flow in a HRSG module by R&R Consult.pptxCFD Simulation of By-pass Flow in a HRSG module by R&R Consult.pptx
CFD Simulation of By-pass Flow in a HRSG module by R&R Consult.pptxR&R Consult
 
2024 DevOps Pro Europe - Growing at the edge
2024 DevOps Pro Europe - Growing at the edge2024 DevOps Pro Europe - Growing at the edge
2024 DevOps Pro Europe - Growing at the edgePaco Orozco
 
Laundry management system project report.pdf
Laundry management system project report.pdfLaundry management system project report.pdf
Laundry management system project report.pdfKamal Acharya
 
Peek implant persentation - Copy (1).pdf
Peek implant persentation - Copy (1).pdfPeek implant persentation - Copy (1).pdf
Peek implant persentation - Copy (1).pdfAyahmorsy
 
Introduction to Machine Learning Unit-5 Notes for II-II Mechanical Engineering
Introduction to Machine Learning Unit-5 Notes for II-II Mechanical EngineeringIntroduction to Machine Learning Unit-5 Notes for II-II Mechanical Engineering
Introduction to Machine Learning Unit-5 Notes for II-II Mechanical EngineeringC Sai Kiran
 
Automobile Management System Project Report.pdf
Automobile Management System Project Report.pdfAutomobile Management System Project Report.pdf
Automobile Management System Project Report.pdfKamal Acharya
 

Dernier (20)

Immunizing Image Classifiers Against Localized Adversary Attacks
Immunizing Image Classifiers Against Localized Adversary AttacksImmunizing Image Classifiers Against Localized Adversary Attacks
Immunizing Image Classifiers Against Localized Adversary Attacks
 
fluid mechanics gate notes . gate all pyqs answer
fluid mechanics gate notes . gate all pyqs answerfluid mechanics gate notes . gate all pyqs answer
fluid mechanics gate notes . gate all pyqs answer
 
Construction method of steel structure space frame .pptx
Construction method of steel structure space frame .pptxConstruction method of steel structure space frame .pptx
Construction method of steel structure space frame .pptx
 
Toll tax management system project report..pdf
Toll tax management system project report..pdfToll tax management system project report..pdf
Toll tax management system project report..pdf
 
RS Khurmi Machine Design Clutch and Brake Exercise Numerical Solutions
RS Khurmi Machine Design Clutch and Brake Exercise Numerical SolutionsRS Khurmi Machine Design Clutch and Brake Exercise Numerical Solutions
RS Khurmi Machine Design Clutch and Brake Exercise Numerical Solutions
 
BRAKING SYSTEM IN INDIAN RAILWAY AutoCAD DRAWING
BRAKING SYSTEM IN INDIAN RAILWAY AutoCAD DRAWINGBRAKING SYSTEM IN INDIAN RAILWAY AutoCAD DRAWING
BRAKING SYSTEM IN INDIAN RAILWAY AutoCAD DRAWING
 
Quality defects in TMT Bars, Possible causes and Potential Solutions.
Quality defects in TMT Bars, Possible causes and Potential Solutions.Quality defects in TMT Bars, Possible causes and Potential Solutions.
Quality defects in TMT Bars, Possible causes and Potential Solutions.
 
IT-601 Lecture Notes-UNIT-2.pdf Data Analysis
IT-601 Lecture Notes-UNIT-2.pdf Data AnalysisIT-601 Lecture Notes-UNIT-2.pdf Data Analysis
IT-601 Lecture Notes-UNIT-2.pdf Data Analysis
 
Hall booking system project report .pdf
Hall booking system project report  .pdfHall booking system project report  .pdf
Hall booking system project report .pdf
 
HYDROPOWER - Hydroelectric power generation
HYDROPOWER - Hydroelectric power generationHYDROPOWER - Hydroelectric power generation
HYDROPOWER - Hydroelectric power generation
 
Democratizing Fuzzing at Scale by Abhishek Arya
Democratizing Fuzzing at Scale by Abhishek AryaDemocratizing Fuzzing at Scale by Abhishek Arya
Democratizing Fuzzing at Scale by Abhishek Arya
 
ENERGY STORAGE DEVICES INTRODUCTION UNIT-I
ENERGY STORAGE DEVICES  INTRODUCTION UNIT-IENERGY STORAGE DEVICES  INTRODUCTION UNIT-I
ENERGY STORAGE DEVICES INTRODUCTION UNIT-I
 
WATER CRISIS and its solutions-pptx 1234
WATER CRISIS and its solutions-pptx 1234WATER CRISIS and its solutions-pptx 1234
WATER CRISIS and its solutions-pptx 1234
 
ASME IX(9) 2007 Full Version .pdf
ASME IX(9)  2007 Full Version       .pdfASME IX(9)  2007 Full Version       .pdf
ASME IX(9) 2007 Full Version .pdf
 
CFD Simulation of By-pass Flow in a HRSG module by R&R Consult.pptx
CFD Simulation of By-pass Flow in a HRSG module by R&R Consult.pptxCFD Simulation of By-pass Flow in a HRSG module by R&R Consult.pptx
CFD Simulation of By-pass Flow in a HRSG module by R&R Consult.pptx
 
2024 DevOps Pro Europe - Growing at the edge
2024 DevOps Pro Europe - Growing at the edge2024 DevOps Pro Europe - Growing at the edge
2024 DevOps Pro Europe - Growing at the edge
 
Laundry management system project report.pdf
Laundry management system project report.pdfLaundry management system project report.pdf
Laundry management system project report.pdf
 
Peek implant persentation - Copy (1).pdf
Peek implant persentation - Copy (1).pdfPeek implant persentation - Copy (1).pdf
Peek implant persentation - Copy (1).pdf
 
Introduction to Machine Learning Unit-5 Notes for II-II Mechanical Engineering
Introduction to Machine Learning Unit-5 Notes for II-II Mechanical EngineeringIntroduction to Machine Learning Unit-5 Notes for II-II Mechanical Engineering
Introduction to Machine Learning Unit-5 Notes for II-II Mechanical Engineering
 
Automobile Management System Project Report.pdf
Automobile Management System Project Report.pdfAutomobile Management System Project Report.pdf
Automobile Management System Project Report.pdf
 

Design optimization of BOP for fatigue and strength in HPHT environment using Isight and FE-Safe

  • 1. DESIGN OPTIMIZATION OF BLOWOUT PREVENTER FOR FATIGUE AND STRENGTH IN HPHT ENVIRONMENT USING ISIGHT AND FE-SAFE 2016 SIMULIA South Regional User Meeting – Dassault Systèmes Houston, Texas October 13, 2016 Presented by VIAS Arindam Chakraborty, PhD, PE
  • 2. © 2016 Virtual Integrated Analytics Solutions Inc. Outline • Overview of Company • Strength of Simulation • BOP Design Optimization using Simulation • Machine Learning in Design and Simulation • Summary 2
  • 3. © 2016 Virtual Integrated Analytics Solutions Inc. Overview of Company Engineering Consultancy Training Hardware Software • Cross Industry Experience • Houston based Entity • Other US Locations • Dassault Systèmes SIMULIA Value Added Reseller – Abaqus, Isight, fe-safe, Tosca • Provide Virtual Design Experience through Collaboration and Data Analytics • Provide 3D printing and AM simulation services 3
  • 4. © 2016 Virtual Integrated Analytics Solutions Inc. Strength of Simulation Example: BOP Design BOP Body - Quarter Model • Mechanical device designed to seal off wellbore, safely control and monitor oil and gas well in case of blowout • High Pressure High Temperature (HPHT) conditions for Deepwater Wells • Highest safety and quality standards are mandatory • Challenge of optimizing the design – weight reduction • Need for efficient simulation process to reduce design time and cost 6 To seal drill pipe OD and shear the main body
  • 5. © 2016 Virtual Integrated Analytics Solutions Inc. BOP Design Optimization 1 5 Response Surface Approximation Fatigue and Strength 3 Capturing Reality in Simulation2 Exploring Design Space through DOE 4 6 Design Optimization Product Requirements and Problem Statement 8
  • 6. © 2016 Virtual Integrated Analytics Solutions Inc. Simulation Driven Design Process – Step 1 1 Product Requirements and Problem Statement 10
  • 7. © 2016 Virtual Integrated Analytics Solutions Inc. Problem Statement – Step 1 Initial Design Dimensions Radius = 2.5 in Cavity Height = 10 in Cavity Width = 13.75 in Top Beam = 19 in Lower Beam = 19 in Side Wall = 23 in 11 18-3/4 – 20k BOP Design Product Requirements • Sufficient design life under cyclic loading • Weight reduction
  • 8. © 2016 Virtual Integrated Analytics Solutions Inc. Problem Statement – Step 1 Design VariablesObjective: Maximize fatigue life Design Variables (Deterministic):  Cavity Height(CH): 8" ≤ H ≤ 12"  Cavity Width (CW): 11" ≤ W ≤ 16.5  Top Beam(TB): 11.4" ≤ TB ≤ 26.6“  Lower Beam (LB): 11.4" ≤ LB ≤ 26.6“  Side Wall (SW): 16.1" ≤ SW ≤ 29.9“  Radius (R): 2.235" ≤ R ≤ 5.215“ Constraint:  Maximum Displacement ≤ 0.040 inches  Mass ≤ 80% of initial mass  Cavity Height (CH) should be greater than 2 times the Radius (R)  Cavity Width (CW) should be greater than 10 inches plus Radius (R) R CH CW TB LB SW 12
  • 9. © 2016 Virtual Integrated Analytics Solutions Inc. Simulation Driven Design Process – Step 2 2 13 Capturing Reality in Simulation
  • 10. © 2016 Virtual Integrated Analytics Solutions Inc. Material, Loads, BCs – Step 2 Linear Elastic Material Properties for Steel AISI 4130:  Young’s Modulus: 29,000 ksi  Yield Strength: 66.7 ksi Loads (Cycling from 0 to Max.): Internal Pressure = 20 ksi Vertical Load = 150 kips 14 Z-Symmetry X-Symmetry Y-Fixed
  • 11. © 2016 Virtual Integrated Analytics Solutions Inc. Simulation Driven Design Process – Step 3 Fatigue and Strength 3 16
  • 12. © 2016 Virtual Integrated Analytics Solutions Inc. FEA for Strength – Step 3 (Abaqus) von Mises Stress due to Internal Pressure von Mises Stress due to Vertical Lift Load Node 2 for Y-Displacement Constraint Initial Design 17 Mass (lb) Y-Disp Node 1 (in) Y-Disp Node 2 (in) 15497.5 0.0439 0.0333 Output Node 1 for Y-Displacement Constraint
  • 13. © 2016 Virtual Integrated Analytics Solutions Inc. Fatigue Life – Step 3 (fe-safe) Initial Design 19 Lowest fatigue cyclesElement/node with lowest life 588.8 Neuber Correction Internal Pressure = 20 ksi Vertical Load = 150 kips Pressure Cycles = 100 cycles Vertical Load Cycles = 500 cycles ONE BLOCK
  • 14. © 2016 Virtual Integrated Analytics Solutions Inc. Simulation Driven Design Process – Step 4 Exploring Design Space through DOE 4 20
  • 15. © 2016 Virtual Integrated Analytics Solutions Inc. Simulation Workflow – Step 4 (Isight) Initial Design Design of Experiments (DOE) Response Surface Optimized Design 21 fe-safe DOE (Optimal Latin Hypercube – 76 Runs)
  • 16. © 2016 Virtual Integrated Analytics Solutions Inc. Design of Experiments – Step 4 (Isight) Pareto Plot Radius and Cavity Width are the design parameters that have higher effect on the fatigue life of the BOP 22
  • 17. © 2016 Virtual Integrated Analytics Solutions Inc. Simulation Driven Design Process – Step 5 5 Response Surface Approximation 24
  • 18. © 2016 Virtual Integrated Analytics Solutions Inc. Simulation Workflow – Step 5 (Isight) Initial Design Design of Experiments (DOE) Response Surface Optimized Design 25 fe-safe
  • 19. © 2016 Virtual Integrated Analytics Solutions Inc. Approximation – Step 5 (Isight) Elliptical Basis Function (EBF) Error Analysis - Fatigue Responses R-Squared Mass 0.99789 Y Displacement – Node 1 0.99295 Y Displacement – Node 2 0.99335 Fatigue Cycles 0.94123 26 Error Analysis – Disp N 1
  • 20. © 2016 Virtual Integrated Analytics Solutions Inc. Simulation Driven Design Process – Step 6 6 Design Optimization 28
  • 21. © 2016 Virtual Integrated Analytics Solutions Inc. Simulation Workflow – Step 6 (Isight) Initial Design Design of Experiments (DOE) Response Surface Optimized Design 29 fe-safe Sequential Quadratic Programming – 57 Iterations
  • 22. © 2016 Virtual Integrated Analytics Solutions Inc. Deterministic Optimum Design – Step 6 Case CH (in) CW (in) R (in) LB (in) TB (in) SW (in) Fatigue Cycles Mass (lb) Y-Disp Node 1 (in) Y-Disp Node 2 (in) Initial Design (Mean) 10.0 13.75 3.725 19.0 19.0 23.0 588.8 15497.5 0.0439 0.0333 Optimum Design 8.0 13.02 3.02 22.05 17.45 16.1 1348.9 12501.8 0.040 0.0287 R CH CW TB LB SW Input Output Initial Design Optimum Design • Fatigue life is increased 2.3 times from the initial design • Geometry, weight and displacement constraints are satisfied 31
  • 23. © 2016 Virtual Integrated Analytics Solutions Inc. • Machine learning can help in design simulations by generating predictive models to estimate output given initial parameters. • We approximate the output of a simulation using deep network architectures for regression. • The idea is to capture compact, high-order representations in an efficient and iterative manner. • Learning takes place by combining non- linear combinations of inputs on many layers of abstraction. • Low levels concepts are the foundation for high level concepts. Machine Learning in Design and Simulation 32
  • 24. © 2016 Virtual Integrated Analytics Solutions Inc. Projection on two variables showing actual data (black) and approximation using deep learning (red). Machine Learning to Predict Output of Simulations Good Approximation of Predicted Values vs. Actual Values 34
  • 25. © 2016 Virtual Integrated Analytics Solutions Inc. Machine Learning to Minimize the Number of Simulations Machine learning can additionally help to minimize the number of simulations by using a technique known as “active learning”. In active learning the algorithm point to those instances (parameter vectors) that are “most informative” to increase the accuracy in the predictions. Active Learning 35
  • 26. © 2016 Virtual Integrated Analytics Solutions Inc. Sample Estimation vs True Performance. Machine Learning to Minimize The Number of Simulations 37
  • 27. © 2016 Virtual Integrated Analytics Solutions Inc. Summary • Optimizing BOP Design using SIMULIA Power of Portfolio Software Concludes: • fatigue life is increased by 2.3 times from the initial design; • weight of the BOP is reduced by 20%; • maximum allowable displacement of 0.04 inches is satisfied; • automation of the design and simulation process helps to decrease the cost and reduce the time; • Mathematics based as compared to heuristic design approach. • Using Machine Learning in BOP Design and Simulation Helps to: • predict the output of simulations much faster than traditional FEA type models; • minimize the number of simulations through active learning. 38
  • 28. © 2016 Virtual Integrated Analytics Solutions Inc. VIAS – Software / Training / Consulting Certified SIMULIA Support and Training Email : achakraborty@viascorp.com Phone : +1 (832) 301-0881 Engineering Consulting 39
  • 29. © 2016 Virtual Integrated Analytics Solutions Inc. Acknowledgements Noesis Al – Mat Podskarbi, Ricardo Vilalta SIMULIA Support – Sohini Sarkar, Dave Naehring, Sreeparna Sengupta 40
  • 30. © 2016 Virtual Integrated Analytics Solutions Inc. Thank you 41