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Novel grey prediction model with nonlinear optimized time response method for forecasting of electricity consumption in China

机译:非线性优化时间响应方法的新型灰色预测模型在中国的用电量预测中

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摘要

Forecasting of electricity energy consumption (EEC) has been always playing a vital role in China's power system management, and requires promising prediction techniques. This paper proposed an optimized hybrid GM(1,1) model to improve prediction accuracy of EEC in short term. GM(1,1) model, in spite of successful employing in various fields, sometimes gives rise to inaccurate solution in practical applications. Time response function (TRF) is an important factor deeply influencing modeling precision. Aiming to enhance forecasting performance, this paper proposed a novel grey model with optimal time response function, referred to as IRGM(1,1) model. As of unknown variables in TRF, a nonlinear optimization method, based on particle swarm algorithm, is constructed to obtain optimal values, for shrinking simulation errors and improving adaptability to characteristics of raw data. The forecasting performance has been confirmed by electricity consumption data of China, comparing with three alternative grey models. Application demonstrates that the proposed method can significantly promote modeling accuracy.(C) 2016 Elsevier Ltd. All rights reserved.
机译:电力消耗预测(EEC)一直在中国电力系统管理中起着至关重要的作用,需要有前途的预测技术。提出了一种优化的混合GM(1,1)模型,以提高EEC的短期预测精度。 GM(1,1)模型尽管在各个领域都得到了成功的应用,但在实际应用中有时会引起不准确的解决方案。时间响应函数(TRF)是影响建模精度的重要因素。为了提高预测性能,本文提出了一种具有最佳时间响应函数的新型灰色模型,称为IRGM(1,1)模型。针对TRF中的未知变量,构造了一种基于粒子群算法的非线性优化方法来获取最优值,以缩小仿真误差并提高对原始数据特征的适应性。与三个替代灰色模型相比,中国的用电量数据已证实了预测性能。应用表明,该方法可以显着提高建模精度。(C)2016 Elsevier Ltd.保留所有权利。

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