负荷预测中的自回归条件异方差模型研究

Hao Chen, Jie Wu, Shan Gao
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引用次数: 15

摘要

本文分析了负荷时间序列的ARCH(自回归条件异方差)效应,提出了一种新的可行的基于ARCH模型的负荷预测方法。本文的主要成果包括以下几个方面:首先,通过对经典模型的扰动序列进行检验,用LM检验报告了ARCH效应的一些见证。其次,构建了ARMA-ARCH模型。该模型具有较好的预测能力,在理论意义上优于ARMA模型。此外,从反向杠杆效应、不同冲击之间的不对称效应等角度对荷载时间序列的二阶矩进行了较为深入的研究。最后,通过扩展ARCH类模型,将ARCH模型提升到一个新的水平。这些模型比某些经典模型具有更强的实际前提,具有更强的应用意义。这可能是一种很有前途的短期负荷预测新方法。
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A Study of Autoregressive Conditional Heteroscedasticity Model in Load Forecasting
In this paper, ARCH (autoregressive conditional heteroscedasticity) effects of load time series is analyzed and a new feasible method of load forecast based on ARCH model is proposed. The main achievements of the paper involve the following aspects: Firstly, by testing the disturbance series of the classical model, Some witness to the ARCH effect is reported by LM test. Secondly, An ARMA-ARCH model is constructed. This model is judged to have good forecast ability, and compares favourably with ARMA model in theoretic significance. Furthermore, a relatively deep research on the second-order moment of load time series proceeds from such a viewpoint as reverse leverage effect, the mechanism of asymmetric effects between different shocks is demonstrated. Finally, we enhance the ARCH model to a new level with the help of extended ARCH class model. These models have more practical preconditions, and have more powerful applied significance than some classical models. It may be a promising new method for short-time load forecasting.
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