Particle Swarm Optimizer and Multi-Objective Optimization

£74.50

Particle Swarm Optimizer and Multi-Objective Optimization

Optimization Artificial intelligence

Authors: Feng Pan, Qi Gao, Xiao-xue Feng, Wei-xing Li

Dinosaur mascot

Collection: Mathematics and Statistics

Language: English

Published by: Springer

Published on: 1st January 2026

Format: LCP-protected ePub

ISBN: 9789819533817


Overview of Particle Swarm Optimization (PSO)

This book provides a comprehensive overview of the foundational attributes of the Particle Swarm Optimization(PSO) algorithm, including general descriptions, topological structures, evaluation metrics, and diversity.

It explores in depth the issues of premature convergence and the kinematic characteristics of the Gbest (Global best), Pbest (Personal best), and standard particle models.

The book also introduces a stability criterion based on dynamic time-varying systems and examines the Markov properties and convergence behavior of the standard PSO algorithm.

Design Philosophies and Strategies

For single-objective optimization problems, the book presents four paradigmatic design philosophies and enhancement strategies for PSO algorithms.

In addressing multi-objective optimization challenges, it offers a systematic analysis and design methodology for multi-objective PSO.

Target Audience and Applications

This book is ideal for researchers in the fields of swarm intelligence and optimization techniques.

It aids scholars and professionals in gaining a deep understanding of swarm intelligence methodologies, with a particular focus on the systematic characteristics, stability, convergence, and other critical aspects of the PSO algorithm.

This knowledge equips readers to navigate and contribute to the evolving field of swarm intelligence.

Show moreShow less