Nature-Inspired Optimization Algorithms for Fuzzy Controlled Servo Systems
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Product details:
- Publisher Elsevier Science
- Date of Publication 29 April 2019
- ISBN 9780128163580
- Binding Paperback
- No. of pages148 pages
- Size 228x152 mm
- Weight 290 g
- Language English 0
Categories
Long description:
Nature-inspired Optimization Algorithms for Fuzzy Controlled Servo Systems explains fuzzy control in servo systems in a way that doesn't require any solid mathematical prerequisite. Analysis and design methodologies are covered, along with specific applications to servo systems and representative case studies. The theoretical approaches presented throughout the book are validated by the illustration of digital simulation and real-time experimental results. This book is a great resource for a wide variety of readers, including graduate students, engineers (designers, practitioners and researchers), and everyone who faces challenging control problems.
MoreTable of Contents:
1. Introduction
2. Nature-inspired algorithms for the optimal tuning of fuzzy controllers
3. Adaptive nature-inspired algorithms for the optimal tuning of fuzzy controllers
4. Hybrid nature-inspired algorithms for the optimal tuning of fuzzy controllers
5. Conclusions