4.7 Article

Dynamical Sphere Regrouping Particle Swarm Optimization: A Proposed Algorithm for Dealing with PSO Premature Convergence in Large-Scale Global Optimization

相关参考文献

注意:仅列出部分参考文献,下载原文获取全部文献信息。
Article Computer Science, Artificial Intelligence

A fast density peak clustering based particle swarm optimizer for dynamic optimization

Fei Li et al.

Summary: This paper proposes a fast density peak clustering based particle swarm optimizer (DPCPSO) to solve dynamic optimization problems (DOPs). DPCPSO addresses DOPs by applying fast density peak clustering to create multiple sub-populations, using stagnation detection to handle loss of diversity, and proposing an optimal particle calibration strategy for environmental changes. Experimental results demonstrate that the proposed algorithm performs competitively in solving DOPs.

EXPERT SYSTEMS WITH APPLICATIONS (2024)

Article Automation & Control Systems

A computational intelligence based maximum power point tracking for photovoltaic power generation system with small-signal analysis

Manoj Kumar Senapati et al.

Summary: This article proposes a hybrid technique by combining an evolutionary optimization technique with the conventional P&O algorithm to enhance the search performance for the maximum power output of the PV system. The combined approach ensures faster convergence and better search to the GMPP under rapid climate change and partial shading conditions.

OPTIMAL CONTROL APPLICATIONS & METHODS (2023)

Article Computer Science, Information Systems

Co-evolutionary competitive swarm optimizer with three-phase for large-scale complex optimization problem

Chen Huang et al.

Summary: In this article, a novel co-evolutionary method called TPCSO is proposed to enhance the convergence and search ability of CSO. The modified CSO divides the population into two sub-populations and adjusts the update strategy based on diversity and convergence requirements. Experimental results show that TPCSO can effectively solve large-scale optimization problems and achieve optimal results with higher accuracy compared to other algorithms.

INFORMATION SCIENCES (2023)

Article Computer Science, Information Systems

Evolutionary-state-driven multi-swarm cooperation particle swarm optimization for complex optimization problem

Xu Yang et al.

Summary: To overcome the shortcomings of premature convergence and poor global search ability in PSO, a novel ESD-PSO algorithm is proposed. It introduces an adaptive multi-swarm cooperation mechanism (AMC) to enhance information exchange efficiency among sub-swarms. Additionally, a stagnation compensation strategy (SCS) is triggered to increase the diversity of stagnant sub-swarms, and a competitive disturbance mechanism (CDM) is used to improve solution accuracy. Experimental results demonstrate the superiority of ESD-PSO compared to other PSO variants.

INFORMATION SCIENCES (2023)

Article Computer Science, Artificial Intelligence

Hierarchical structure-based joint operations algorithm for global optimization

Gaoji Sun et al.

Summary: Joint operations algorithm (JOA) is a metaheuristic algorithm that utilizes offensive, defensive, and regroup operations to optimize global problems. In order to improve its performance, a hierarchical structure-based variant called HSJOA is proposed by adjusting the execution mechanism of the core operations and redesigning their strategies. Experimental results on real-life optimization problems and test functions demonstrate that HSJOA outperforms both the original JOA and other algorithms, achieving better optimization performance and runtime consumption than L-SHADE and EBOwithCMAR.

SWARM AND EVOLUTIONARY COMPUTATION (2023)

Article Automation & Control Systems

An adaptive dynamic multi-swarm particle swarm optimization with stagnation detection and spatial exclusion for solving continuous optimization problems

Xu Yang et al.

Summary: This paper proposes an adaptive dynamic multi-swarm particle swarm optimization algorithm (ADPSO) to address the premature convergence and poor population diversity issues in particle swarm optimization. The ADPSO is based on a dynamic multi-swarm PSO framework and incorporates stagnation detection mechanism and spatial exclusion strategy to improve algorithm performance.

ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE (2023)

Article Computer Science, Artificial Intelligence

A proportional, integral and derivative differential evolution algorithm for global optimization

Ruiye Jiang et al.

Summary: The proportional, integral, and derivative differential evolution algorithm (PID-DE) is proposed as a new type of interdisciplinary metaheuristic evolutionary algorithm that combines classical control methods with differential evolution. The algorithm shows higher accuracy and faster convergence speed in numerical optimization compared to representative approaches and top algorithms in the CEC competitions.

EXPERT SYSTEMS WITH APPLICATIONS (2022)

Article Mathematics

On the Robustness and Sensitivity of Several Nonparametric Estimators via the Influence Curve Measure: A Brief Study

Indranil Ghosh et al.

Summary: This article aims to examine and summarize the mathematical derivation of the influence curve for various well-known estimators for estimating the location of a population, especially in the nonparametric paradigm.

MATHEMATICS (2022)

Article Computer Science, Artificial Intelligence

Multiple-strategy learning particle swarm optimization for large-scale optimization problems

Hao Wang et al.

Summary: The MSL-PSO algorithm uses multiple learning strategies to solve large-scale optimization problems by utilizing different learning strategies at different stages.

COMPLEX & INTELLIGENT SYSTEMS (2021)

Article Computer Science, Artificial Intelligence

A novel local search method for LSGO with golden ratio and dynamic search step

Havva Gul Kocer et al.

Summary: In this paper, a novel local search method named GRGLS is proposed for large-scale optimization problems. The experiments show that the proposed method performs well in various functions, especially excelling in overlapping and non-separable functions.

SOFT COMPUTING (2021)

Article Computer Science, Interdisciplinary Applications

GEPSO: A new generalized particle swarm optimization algorithm

Davoud Sedighizadeh et al.

Summary: The Particle Swarm Optimization (PSO) algorithm, a nature-inspired meta-heuristic, has evolved into various variants due to its flexibility in parameters and concepts. The Generalized Particle Swarm Optimization (GEPSO) algorithm enriches the original PSO by incorporating new terms and dynamic inertia weight updates, leading to improved performance in continuous space optimization.

MATHEMATICS AND COMPUTERS IN SIMULATION (2021)

Article Computer Science, Information Systems

Risk-Based Stochastic Scheduling of Resilient Microgrids Considering Demand Response Programs

Mostafa Vahedipour-Dahraie et al.

Summary: This article presents a risk-constrained stochastic framework for joint energy and reserve scheduling of a resilient microgrid. The system operation is optimized to address uncertainties such as islanding duration and prediction errors of loads, renewable power generation, and electricity prices, aiming to maximize operator profit. The proposed scheme effectively balances economy and security requirements under uncertainties and incorporates a conditional value-at-risk metric to control profit variability risk.

IEEE SYSTEMS JOURNAL (2021)

Article Computer Science, Information Systems

Coordinated Power Management and Control of Standalone PV-Hybrid System With Modified IWO-Based MPPT

Chittaranjan Pradhan et al.

Summary: This article introduces a hybrid MPPT algorithm integrating MIWO and P&O techniques, aimed at efficiently extracting maximum power from a standalone PV-based hybrid system.

IEEE SYSTEMS JOURNAL (2021)

Article Computer Science, Information Systems

Research on Large-Scale Bi-Level Particle Swarm Optimization Algorithm

Jia-Jia Jiang et al.

Summary: A large-scale bi-level particle swarm optimization algorithm is proposed in this paper, which addresses the slow convergence and local optimum issues of particle swarm optimization by enlarging the scale and enhancing the diversity of the initial population. The algorithm improves running efficiency by using the structural advantages of bi-level particle swarms.

IEEE ACCESS (2021)

Article Computer Science, Artificial Intelligence

A reinforcement learning-based communication topology in particle swarm optimization

Yue Xu et al.

NEURAL COMPUTING & APPLICATIONS (2020)

Article Computer Science, Information Systems

An expanded particle swarm optimization based on multi-exemplar and forgetting ability

Xuewen Xia et al.

INFORMATION SCIENCES (2020)

Article Computer Science, Information Systems

Two-Stage Multi-Swarm Particle Swarm Optimizer for Unconstrained and Constrained Global Optimization

Qiang Zhao et al.

IEEE ACCESS (2020)

Article Computer Science, Artificial Intelligence

A modified particle swarm optimization for large-scale numerical optimizations and engineering design problems

Hao Liu et al.

JOURNAL OF INTELLIGENT MANUFACTURING (2019)

Article Computer Science, Artificial Intelligence

Global genetic learning particle swarm optimization with diversity enhancement by ring topology

Anping Lin et al.

SWARM AND EVOLUTIONARY COMPUTATION (2019)

Article Engineering, Multidisciplinary

An improved hybrid self-inertia weight adaptive particle swarm optimization algorithm with local search

Arfan Ali Nagra et al.

ENGINEERING OPTIMIZATION (2019)

Proceedings Paper Engineering, Mechanical

A problem decomposition approach for large-scale global optimization problems

A. V. Vakhnin et al.

INTERNATIONAL WORKSHOP ADVANCED TECHNOLOGIES IN MATERIAL SCIENCE, MECHANICAL AND AUTOMATION ENGINEERING - MIP: ENGINEERING - 2019 (2019)

Article Computer Science, Information Systems

A Hierarchical Sorting Swarm Optimizer for Large-scale Optimization

Rushi Lan et al.

IEEE ACCESS (2019)

Article Computer Science, Artificial Intelligence

A multi-swarm particle swarm optimization algorithm based on dynamical topology and purposeful detecting

Xuewen Xia et al.

APPLIED SOFT COMPUTING (2018)

Article Computer Science, Artificial Intelligence

Fuzzy Self-Tuning PSO: A settings-free algorithm for global optimization

Marco S. Nobile et al.

SWARM AND EVOLUTIONARY COMPUTATION (2018)

Article Computer Science, Artificial Intelligence

A novel orthogonal PSO algorithm based on orthogonal diagonalization

Loau Tawfak Al-Bahrani et al.

SWARM AND EVOLUTIONARY COMPUTATION (2018)

Proceedings Paper Engineering, Electrical & Electronic

Particle Swarm Optimization Based Artificial Neural Network Model for Forecasting Groundwater Level in UDUPI District

Supreetha Balavalikar et al.

INTERNATIONAL CONFERENCE ON ELECTRICAL, ELECTRONICS, MATERIALS AND APPLIED SCIENCE (2018)

Proceedings Paper Computer Science, Artificial Intelligence

Applying C-DEEPSO to solve Large Scale Global Optimization Problems

Carolina Marcelino et al.

2018 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC) (2018)

Proceedings Paper Computer Science, Artificial Intelligence

Toolkit for the Automatic Comparison of Optimizers: comparing large-scale global optimizers made easy

Daniel Molina et al.

2018 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC) (2018)

Proceedings Paper Computer Science, Artificial Intelligence

SHADE with Iterative Local Search for Large-Scale Global Optimization

Daniel Molina et al.

2018 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC) (2018)

Article Computer Science, Artificial Intelligence

Constructive cooperative coevolution for large-scale global optimisation

Emile Glorieux et al.

JOURNAL OF HEURISTICS (2017)

Review Chemistry, Analytical

Robustness evaluation in analytical methods optimized using experimental designs

Sergio L. C. Ferreira et al.

MICROCHEMICAL JOURNAL (2017)

Article Computer Science, Artificial Intelligence

Stochastic stability of particle swarm optimisation

Adam Erskine et al.

SWARM INTELLIGENCE (2017)

Article Computer Science, Artificial Intelligence

A cooperative approach to particle swarm optimization

F van den Bergh et al.

IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION (2004)