Short-term Load Forecasting Based on the Improved BAS Optimized Elman Neural Network

Wenlin Huang, Zhongli Wang, Fengzhi Che
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引用次数: 3

Abstract

To improve the accuracy of short-term load forecasting, an Elman neural network short-term load forecasting model based on an improved beetle antennae search (BAS) algorithm was proposed. Firstly, the classical function Rosenbrock was optimized by particle swarm optimization (PSO) algorithm, BAS algorithm, and improved BAS algorithm which convergence faster by comparison. Further, the improved BAS algorithm was used to optimize the short-term power load prediction model of the Elman neural network, and the stability of the algorithm was improved by taking into account the shortcoming of the traditional BAS algorithm, which was prone to fall into local convergence. We used ground load data in the European Intelligent technology Competition for analysis and prediction. Then we used respectively traditional Elman neural network and the Elman optimized by the improved BAS algorithm to predict and analyze the power load for a month, and obtain the residual and residual rates between the load and the real value. Example results and comparative analysis show that the operation time of the improved BAS-Elman neural network is about 15.8% shorter than that of the traditional BAS network, and the prediction accuracy is about 1.2% higher than original Elman short-term power load forecasting.
基于改进BAS优化Elman神经网络的短期负荷预测
为了提高短期负荷预测的准确性,提出了一种基于改进甲虫天线搜索算法的Elman神经网络短期负荷预测模型。首先,采用粒子群算法(PSO)、BAS算法和改进的BAS算法对经典函数Rosenbrock进行了优化,并对其收敛速度进行了比较。进一步,利用改进的BAS算法对Elman神经网络短期电力负荷预测模型进行优化,并针对传统BAS算法容易陷入局部收敛的缺点,提高了算法的稳定性。我们使用欧洲智能技术竞赛的地面负荷数据进行分析和预测。然后分别使用传统的Elman神经网络和改进的BAS算法优化的Elman神经网络对一个月的电力负荷进行预测和分析,得到负荷与实际值的残差和残差率。算例结果和对比分析表明,改进后的BAS-Elman神经网络运行时间比传统的BAS网络缩短约15.8%,预测精度比原始的Elman短期负荷预测提高约1.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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