基于GAPA的支持向量机和神经网络优化及其在短期负荷预测中的应用

Jingyi Zhang, Yueting Wang, Wenpeng Jing, Zhaoming Lu, X. Wen, Yong Liu
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引用次数: 0

摘要

风能和太阳能等可再生能源的广泛使用推动电网向综合数据和预测分析方向发展。目前,人们对负荷预测的实现进行了大量的研究,特别是对机器学习方法的研究。然而,现有基于机器学习的负荷预测方法存在过早收敛和冗余迭代两大缺陷,导致预测效果差,耗时大。提出了一种基于遗传算法(GA)、人工鱼群算法(AFSA)和粒子群算法(PSO)的新型组合智能优化算法,用于优化基于机器学习的负荷预测模型。本文提出的GA-AFSA-PSO算法(GAPA)通过用AFSA算子和PSO算子代替遗传算法的突变过程,增强了全局搜索能力和局部搜索能力,预测精度高,收敛速度快。为了验证其有效性,将GAPA应用于支持向量机(SVM)和人工神经网络(ANN)的优化中,用于预测一天前的负荷数据。此外,还进行了两组不同的对比试验,以证实GAPA的优势。仿真结果表明,与GA、AFSA、PSO、AFSA-GA和GA-PSO相比,GAPA在预测精度、收敛速度和全局搜索能力方面都有提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of SVM and ANN Based on GAPA and Its Application in Short-Term Load Forecasting
Widespread employment of renewable energy such as wind and solar pushes power grids to move towards comprehensive data and predictive analysis. At present, a large number of researches have been conducted especially on machine learning methods to achieve load forecast. However, premature convergence and redundant iteration are two major defects of existing machine learning-based load forecasting methods, resulting in poor prediction effect and high time consumption. In this paper, a novel combined intelligent optimization algorithm based on genetic algorithm (GA), artificial fish swarm algorithm (AFSA) and particle swarm optimization (PSO) is proposed for optimizing machine learning-based load forecasting models. By replacing GA's mutation process with AFSA operator and PSO operator, the proposed algorithm named GA-AFSA-PSO Algorithm (GAPA) enhances both global search ability and local search ability, leading to its high prediction accuracy and fast convergence speed. To validate its effectiveness, GAPA is applied to the optimization of support vector machine (SVM) and artificial neural network (ANN) to predict one-day ahead load data. Moreover, two different sets of comparative tests are carried out to confirm the advantages of GAPA. The simulation results illustrate that, compared with GA, AFSA, PSO, AFSA-GA and GA-PSO, GAPA brings forth advancement in prediction accuracy, convergence rate and global search ability.
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