Fr. 266.00

Fuzzy Topsis - Logic, Approaches, and Case Studies

English · Hardback

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Description

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This book aims to justify the use of fuzzy logic as a logic and an uncertainty theory in the decision-making context. It also discusses the development of the TOPSIS method (Technique for Order of Preference by Similarity to Ideal Solution) with related examples and MATLAB codes. This is the first book devoted to TOPSIS.

List of contents

1. Uncertainty. 2. Non-Classical Logics. 3. Fuzzy Logic. 4. Frequently Used Methods. 5. TOPSIS Methodology and Limits. 6. Fuzzy TOPSIS. 7. Intuitionistic Fuzzy TOPSIS. 8. Other Fuzzy TOPSIS Approaches.

About the author

Mohamed EL ALAOUI holds a PhD in industrial engineering from ENSAM Meknes, Morocco and an engineering degree in industrial and production engineering from the same institution. His PhD thesis entitled "Fuzzy logic and optimization with applications in industrial and production engineering" treated several applications including: biodiesel, aggregation, consensus, similarity, goal programming, transportation, partitioning... In his academic career, he has taught various courses related to industrial engineering (projects management, quality management ...) and mechanics (solid mechanics, hydraulics ...). He also worked as a corporate trainer. He is a reviewer for few leading journals.

Summary

This book aims to justify the use of fuzzy logic as a logic and an uncertainty theory in the decision-making context. It also discusses the development of the TOPSIS method (Technique for Order of Preference by Similarity to Ideal Solution) with related examples and MATLAB codes. This is the first book devoted to TOPSIS.

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