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Short-term Maharashtra state electrical power load prediction with special emphasis on seasonal changes using a novel focused time lagged recurrent neural network based on time delay neural network model

机译:使用基于时延神经网络模型的新型聚焦时间滞后递归神经网络,短期重点研究季节性变化的马哈拉施特拉邦电力负荷

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摘要

In this paper, the parameter-wise optimization training process is implemented to achieve an optimal configuration of focused time lagged recurrent neural network (FTLRNN) models by embedding the gamma, laguarre, and multi-channel tapped delay line memory structure. The aim is to examine the prediction ability of the proposed models in order to predict one-day-ahead electric power load simultaneously as usual to oppose 1-24 h forecast in sequel with a special emphasis on seasonal changes over a year. An improved delta-bar-delta algorithm is used to accelerate the training of neural networks and to improve the stability of the convergence.Experimental results indicate that the FTLRNN with time delay neural network (TDNN) clearly outperformed the gamma and laguarre based short-term memory structure in various performance metrics such as mean square error (MSE), normalized MSE, correlation coefficient (r) and mean absolute percentage error (MAPE) during evaluation process. Empirical results show that the proposed dynamic NN model consistently performs well on daily, weekly, and monthly average basis in terms of prediction accuracy. It is noticed from the literature review that an optimally configured FTLRNN with multi-channel tapped delay line memory structure is not currently available to solve short-term electrical power load prediction. The proposed method gives acceptable errors in all seasons, months and on daily basis. The average prediction error on three weeks is obtained as low as 1.67%.
机译:在本文中,通过嵌入γ,laguarre和多通道抽头延迟线存储结构,实现了参数明智的优化训练过程,以实现聚焦时间滞后递归神经网络(FTLRNN)模型的最佳配置。目的是检查提出的模型的预测能力,以便像往常一样同时预测一天提前一天的电力负荷,以反对续集1-24小时的预测,并特别强调一年中的季节性变化。实验结果表明,带有时延神经网络的FTLRNN(TDNN)明显优于基于伽马和拉瓜尔算法的短期短期神经网络训练,并提高了收敛的稳定性。评估过程中各种性能指标(例如均方误差(MSE),归一化MSE,相关系数(r)和平均绝对百分比误差(MAPE))的内存结构。实证结果表明,所提出的动态神经网络模型在预测准确性方面,每天,每周和每月的平均值始终表现良好。从文献回顾中注意到,具有多通道抽头延迟线存储结构的最优配置的FTLRNN当前尚无法解决短期电力负荷预测。所提出的方法在所有季节,几个月和每天的基础上都给出可接受的误差。三周的平均预测误差低至1.67%。

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