Long Term Load Forecasting using Grey Wolf Optimizer - Artificial Neural Network

Z. M. Yasin, N. A. Salim, N. F. Ab Aziz
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引用次数: 6

Abstract

This paper presents a new technique namely Grey Wolf Optimizer- Artificial Neural Network (GWO-ANN) as a technique to forecast electrical load. GWO is a meta heuristic technique inspired by the hierarchy of leadership of the grey wolf hunting mechanism in nature. Four types of grey wolves such as alpha, beta, delta, and omega are employed for simulating the leadership hierarchy. In addition, the three main steps of hunting, searching for prey, encircling are also imitated in the algorithm. GWO is utilized to determine the optimal momentum rate and learning rate of ANN for accurate prediction. In the ANN configuration, the temperature, humidity, wind speed, maximum power, and average power were used as the input data. While total power was used as the output data. ANN is trained by adjusting the parameters of momentum rate and learning rate until the output data matches the actual data. The performance of GWO-ANN was compared to the performance of ANN and Particle Swarm Optimization - Artificial Neural Network (PSO-ANN). The results showed GWO-ANN provide better result in terms of the Mean Absolute Percentage Error (MAPE) and coefficients of determination (R2) as compared to other methods.
基于灰狼优化器-人工神经网络的长期负荷预测
本文提出了一种新的电力负荷预测技术——灰狼优化-人工神经网络(GWO-ANN)。GWO是一种元启发式技术,其灵感来自于自然界灰狼狩猎机制中的领导层级。采用alpha、beta、delta、omega四种灰狼来模拟领导层级。此外,算法还模拟了狩猎、寻找猎物、包围三个主要步骤。利用GWO来确定神经网络的最优动量率和学习率,以实现准确的预测。在人工神经网络配置中,温度、湿度、风速、最大功率和平均功率作为输入数据。而总功率作为输出数据。通过调整动量率和学习率的参数来训练人工神经网络,直到输出数据与实际数据相匹配。将GWO-ANN与人工神经网络和粒子群优化-人工神经网络(PSO-ANN)的性能进行了比较。结果表明,与其他方法相比,GWO-ANN在平均绝对百分比误差(MAPE)和决定系数(R2)方面具有更好的结果。
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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