Submit Search
Upload
Soft computing08
•
Download as PPTX, PDF
•
1 like
•
1,965 views
university of sargodha
Follow
Report
Share
Report
Share
1 of 39
Download now
Recommended
linear regression deep
3 linear regression deep
3 linear regression deep
Tarlan Ahadli
Logic gates
Logic gates
Kumar
Uses diagrammatic representations in place of formalisms to illustrate the notions of ontological modularity, namely conservative extensions, safety, modularity and locality. Discusses guarantees that must be achieved in modular ontological design. Discusses 'strongness' of modularity notions and plain, self-contained and depleting modules and of modularity. Modular ontologies are needed in life sciences and other sectors.
Modularity notions
Modularity notions
Suri Chitti
Soft Computing-173101
Soft Computing-173101
AMIT KUMAR
Intelligent Control and Fuzzy Logic
Intelligent Control and Fuzzy Logic
Praneel Chand
Soft computing06
Soft computing06
university of sargodha
Soft computing01
Soft computing01
university of sargodha
Final taxo
Final taxo
university of sargodha
Recommended
linear regression deep
3 linear regression deep
3 linear regression deep
Tarlan Ahadli
Logic gates
Logic gates
Kumar
Uses diagrammatic representations in place of formalisms to illustrate the notions of ontological modularity, namely conservative extensions, safety, modularity and locality. Discusses guarantees that must be achieved in modular ontological design. Discusses 'strongness' of modularity notions and plain, self-contained and depleting modules and of modularity. Modular ontologies are needed in life sciences and other sectors.
Modularity notions
Modularity notions
Suri Chitti
Soft Computing-173101
Soft Computing-173101
AMIT KUMAR
Intelligent Control and Fuzzy Logic
Intelligent Control and Fuzzy Logic
Praneel Chand
Soft computing06
Soft computing06
university of sargodha
Soft computing01
Soft computing01
university of sargodha
Final taxo
Final taxo
university of sargodha
Advance analysis of algo
Advance analysis of algo
university of sargodha
Prolog2 (1)
Prolog2 (1)
university of sargodha
Presentation1
Presentation1
university of sargodha
Lecture 32 fuzzy systems
Lecture 32 fuzzy systems
university of sargodha
Lecture 29 fuzzy systems
Lecture 29 fuzzy systems
university of sargodha
Cobi t riskmanagementframework_iac
Cobi t riskmanagementframework_iac
university of sargodha
Soft computing09
Soft computing09
university of sargodha
More Related Content
More from university of sargodha
Advance analysis of algo
Advance analysis of algo
university of sargodha
Prolog2 (1)
Prolog2 (1)
university of sargodha
Presentation1
Presentation1
university of sargodha
Lecture 32 fuzzy systems
Lecture 32 fuzzy systems
university of sargodha
Lecture 29 fuzzy systems
Lecture 29 fuzzy systems
university of sargodha
Cobi t riskmanagementframework_iac
Cobi t riskmanagementframework_iac
university of sargodha
Soft computing09
Soft computing09
university of sargodha
More from university of sargodha
(7)
Advance analysis of algo
Advance analysis of algo
Prolog2 (1)
Prolog2 (1)
Presentation1
Presentation1
Lecture 32 fuzzy systems
Lecture 32 fuzzy systems
Lecture 29 fuzzy systems
Lecture 29 fuzzy systems
Cobi t riskmanagementframework_iac
Cobi t riskmanagementframework_iac
Soft computing09
Soft computing09
Soft computing08
1.
Soft Computing
Introduction to Fuzzy Logic
2.
FUZZY LOGIC Motivation
Slow Fast
3.
FUZZY LOGIC Introduction
4.
FUZZY LOGIC Introduction
5.
FUZZY LOGIC Introduction
6.
FUZZY LOGIC Introduction
7.
FUZZY LOGIC
8.
FUZZY LOGIC
9.
FUZZY LOGIC
10.
FUZZY LOGIC
11.
FUZZY LOGIC
12.
FUZZY LOGIC
13.
FUZZY LOGIC
14.
FUZZY LOGIC
15.
FUZZY LOGIC Fuzzy Set
16.
FUZZY LOGIC
17.
FUZZY LOGIC
18.
FUZZY LOGIC Graphical Interpretation
of Membership Function for SMALL and PRIME Sets
19.
FUZZY LOGIC
20.
FUZZY LOGIC
21.
FUZZY LOGIC
22.
FUZZY LOGIC
23.
FUZZY LOGIC
24.
FUZZY LOGIC
25.
FUZZY LOGIC
26.
FUZZY LOGIC
27.
FUZZY LOGIC
28.
FUZZY LOGIC Operators on
Fuzzy Sets
29.
FUZZY LOGIC Operators on
Fuzzy Sets
30.
FUZZY LOGIC
31.
FUZZY LOGIC
32.
FUZZY LOGIC Fuzzy Relations
33.
FUZZY LOGIC Fuzzy Relations
34.
FUZZY LOGIC Fuzzy Relations
35.
FUZZY LOGIC Fuzzy Relations
36.
FUZZY LOGIC Fuzzy Relations
37.
FUZZY LOGIC Fuzzy Relations
38.
FUZZY LOGIC Linguistic Variable
and Values
39.
FUZZY LOGIC Linguistic Values
and Context
Editor's Notes
Linguistic variable has associated concept with it and its values are the fuzzy sets
Fast for racing car is different concept than fast for track.
Download now