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Chaotic Characterization of Electric Load Demand Time Series load forecasting by using GA trained Artificial Neural Network

机译:使用GA培训人工神经网络的电负荷需求时间序列和负荷预测的混沌特征

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Non linear time series modeling and forecasting has fundamental importance to various practical domains and a lot of active research work is going on in this area during past several years. In this work, an artificial neural network based model is used for load forecasting. Further, its performance is improved by using a canonical genetic algorithm. The method is supported by giving the forecasting result via simulation for real non linear time series of the electric load demand of Delhi region. To evaluate forecasting accuracy as well as to compare different models, three performance measures, viz. RMSE (Root mean square Error), MAPE (Mean Absolute Percentage Error) and REP (Relative Error Percentage) have been used. In this paper, all the simulations are carried out in MATLAB 7.10.0 environment using core i5 Intel processor.
机译:非线性时间序列建模和预测对各个实际域具有根本重要性,并且在过去几年中,这一领域正在进行大量积极的研究工作。在这项工作中,用于负载预测的基于人工神经网络的模型。此外,通过使用规范遗传算法来提高其性能。通过为德里地区的电负荷需求的实际非线性时间序列提供预测结果来支持该方法。评估预测准确性以及比较不同的型号,三种性能措施,viz。 RMSE(均均方误差),MAPE(均值绝对百分比误差)和REP(相对误差百分比)已被使用。在本文中,所有模拟都使用核心I5英特尔处理器在Matlab 7.10.0环境中进行。

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