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An Enhanced Neural Network Algorithm with Quasi-Oppositional-Based and Chaotic Sine-Cosine Learning Strategies
by
Li, Shaobo
, Wu, Fengbin
, Xiong, Xuan
in
a new strategy
/ Algorithms
/ Bias
/ chaotic mapping
/ complex optimization
/ Convergence
/ Discovery and exploration
/ Foraging behavior
/ Global optimization
/ Heuristic
/ Learning strategies
/ Mapping
/ Mathematical models
/ neural network algorithm
/ Neural networks
/ Optimization
/ Outer space
/ quasi-oppositional-based learning
/ sine-cosine learning strategy
/ Trigonometric functions
2023
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An Enhanced Neural Network Algorithm with Quasi-Oppositional-Based and Chaotic Sine-Cosine Learning Strategies
by
Li, Shaobo
, Wu, Fengbin
, Xiong, Xuan
in
a new strategy
/ Algorithms
/ Bias
/ chaotic mapping
/ complex optimization
/ Convergence
/ Discovery and exploration
/ Foraging behavior
/ Global optimization
/ Heuristic
/ Learning strategies
/ Mapping
/ Mathematical models
/ neural network algorithm
/ Neural networks
/ Optimization
/ Outer space
/ quasi-oppositional-based learning
/ sine-cosine learning strategy
/ Trigonometric functions
2023
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Do you wish to request the book?
An Enhanced Neural Network Algorithm with Quasi-Oppositional-Based and Chaotic Sine-Cosine Learning Strategies
by
Li, Shaobo
, Wu, Fengbin
, Xiong, Xuan
in
a new strategy
/ Algorithms
/ Bias
/ chaotic mapping
/ complex optimization
/ Convergence
/ Discovery and exploration
/ Foraging behavior
/ Global optimization
/ Heuristic
/ Learning strategies
/ Mapping
/ Mathematical models
/ neural network algorithm
/ Neural networks
/ Optimization
/ Outer space
/ quasi-oppositional-based learning
/ sine-cosine learning strategy
/ Trigonometric functions
2023
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An Enhanced Neural Network Algorithm with Quasi-Oppositional-Based and Chaotic Sine-Cosine Learning Strategies
Journal Article
An Enhanced Neural Network Algorithm with Quasi-Oppositional-Based and Chaotic Sine-Cosine Learning Strategies
2023
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Overview
Global optimization problems have been a research topic of great interest in various engineering applications among which neural network algorithm (NNA) is one of the most widely used methods. However, it is inevitable for neural network algorithms to plunge into poor local optima and convergence when tackling complex optimization problems. To overcome these problems, an improved neural network algorithm with quasi-oppositional-based and chaotic sine-cosine learning strategies is proposed, that speeds up convergence and avoids trapping in a local optimum. Firstly, quasi-oppositional-based learning facilitated the exploration and exploitation of the search space by the improved algorithm. Meanwhile, a new logistic chaotic sine-cosine learning strategy by integrating the logistic chaotic mapping and sine-cosine strategy enhances the ability that jumps out of the local optimum. Moreover, a dynamic tuning factor of piecewise linear chaotic mapping is utilized for the adjustment of the exploration space to improve the convergence performance. Finally, the validity and applicability of the proposed improved algorithm are evaluated by the challenging CEC 2017 function and three engineering optimization problems. The experimental comparative results of average, standard deviation, and Wilcoxon rank-sum tests reveal that the presented algorithm has excellent global optimality and convergence speed for most functions and engineering problems.
Publisher
MDPI AG,MDPI
Subject
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