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Short-term load forecasting based on wavelet neural network with adaptive mutation bat optimization algorithm

机译:基于小波神经网络的短期负载预测,具有自适应突变蝙蝠优化算法

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摘要

To improve the accuracy of short-term load forecasting of power systems, according to the nonlinearity and uncertainty of short-term load sequence, a short-term power load forecasting method combined with wavelet neural network (WNN) and adaptive mutation bat optimization algorithm (AMBA), which is based on the variance of the population's fitness, is proposed in this paper. The model determines the mutation probability of the current optimal individual based on the variance of the population's fitness and the current optimal solution, performs Gaussian mutation on the global optimal individual, and carries out the second optimization on the bat individuals after mutation. AMBA is employed to optimize the network parameters of WNN, improving the prediction accuracy of WNN and speeding up its training. Then the AMBA-WNN forecasting model is built. The AMBA-WNN model is used to predict short-term load of a certain city in China as a case study. The results show that the model can effectively improve the accuracy of short-term load forecasting and has good practical significance. (c) 2018 Institute of Electrical Engineers of Japan. Published by John Wiley & Sons, Inc.
机译:为了提高功率系统短期负载预测的准确性,根据短期负载序列的非线性和不确定性,短期功率载荷预测方法与小波神经网络(WNN)和适应性突变蝙蝠优化算法相结合(本文提出了基于人口适应性的差异的Amba)。该模型根据人群的适应性和当前的最佳解决方案来确定当前最佳个体的突变概率,对全局最佳个体进行高斯突变,并在突变后对BAT个体进行第二个优化。 AMBA被用来优化WNN的网络参数,提高了WNN的预测准确性并加快了训练。然后建立了AMBA-WNN预测模型。 AMBA-WNN模型用于预测中国某个城市的短期负荷作为案例研究。结果表明,该模型可以有效提高短期负载预测的准确性,并且具有良好的实际意义。 (c)2018年日本电气工程师研究所。由John Wiley&Sons,Inc。出版

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