基于vsc的孤岛微电网多层感知器控制器神经进化训练的自适应混合pso嵌入遗传算法

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Yared Bekele Beyene , Getachew Biru Worku , Lina Bertling Tjernberg
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引用次数: 0

摘要

本文介绍了一种新的混合优化算法——自适应混合粒子群算法(PSO)和遗传算法(GA),该算法将粒子群算法(PSO)和遗传算法(GA)相结合,动态适应优化性能。主要目标是通过模型参数和结构超参数的联合优化来增强多层感知器控制器(mlpc)的神经进化训练。传统的训练方法经常遇到过早收敛和泛化受限等问题。AHPEGA通过在进化过程中动态调整参数的自适应训练策略解决了这些限制,从而提高了收敛速度和解决方案质量。AHPEGA有效地减少了局部极小值的陷入,平衡了搜索和开发,提高了神经控制器的设计质量。该算法的性能与传统的优化方法进行了比较,结果表明,该算法在精度、收敛速度和跨多次运行的一致性方面有了显著提高。在基于vsc的孤岛微电网(MG)中,通过仿真证明了所提出方法的实际适用性,其中确保在可变运行条件下可靠有效地控制至关重要。这凸显了AHPEGA在MG系统中优化智能控制策略的能力,特别是在动态和不确定条件下,增强了其在现实能源环境中的实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Adaptive Hybrid PSO-Embedded GA for neuroevolutionary training of multilayer perceptron controllers in VSC-based islanded microgrids

Adaptive Hybrid PSO-Embedded GA for neuroevolutionary training of multilayer perceptron controllers in VSC-based islanded microgrids
This paper introduces a novel hybrid optimization algorithm, Adaptive Hybrid PSO-Embedded GA (AHPEGA), which dynamically adapts to optimization performance by integrating Particle Swarm Optimization (PSO) and Genetic Algorithms (GA). The primary objective is to enhance the neuroevolutionary training of multilayer perceptron-based controllers (MLPCs) through the joint optimization of model parameters and structural hyperparameters. Traditional training methods frequently encounter issues such as premature convergence and limited generalization. AHPEGA addresses these limitations through an adaptive training strategy that dynamically adjusts parameters during the evolutionary process, thereby improving convergence speed and solution quality. By effectively reducing entrapment in local minima and balancing exploration and exploitation, AHPEGA improves the quality of neural controller design. The algorithm’s performance is evaluated against conventional optimization methods, demonstrating significant improvements in accuracy, convergence speed, and consistency across multiple runs. The practical applicability of the proposed method is demonstrated through simulation in the context of a VSC-based islanded microgrid (MG), where ensuring reliable and effective control under variable operating conditions is critical. This highlights AHPEGA’s capability to optimize intelligent control strategies in MG systems, particularly under dynamic and uncertain conditions, reinforcing its practical value in real-world energy environments.
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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