基于灰色理论和随机森林的区域用电量短期混合预测方法

Kai Li, Yidan Yedda Xing, Haijia Zhu, Wei Nai
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引用次数: 1

摘要

用电量在很大程度上反映了某一地区的发展水平,并始终处于波动变化的过程中。提供供电服务的单位或机构总是渴望了解区域用电量的数据,并希望从这些数据中获得对未来用电量的准确预测,以便实施更合适、合理的供电服务安排。到目前为止,许多学者已经报道了利用灰色理论或随机森林等回归算法进行预测工作的研究,但这两种算法在利用现有数据进行预测时都存在一些不足。本文在这两种算法的基础上提出了一种短期混合预测方法,该方法不仅可以实现相对较少的可用数据的预测,而且可以保证较高的预测精度。通过对中西部某地区电力消费的实证研究,验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Short-Term Hybrid Forecasting Approach for Regional Electricity Consumption Based on Grey Theory and Random Forest
Electricity consumption reflects the development level of a certain region to a great extent, and it is always in a changing process with fluctuation. Entities or agencies who provide the electricity power supply services are always eager to know the data of regional electricity consumption, and hope to obtain the accurate forecast of future power consumption from these data, so that more appropriate and reasonable power supply service arrangement can be implemented. Till now, many scholars have reported their research on doing forecasting work by employing algorithms for regression such as Grey Theory or Random Forest, however, there are some drawbacks in both algorithms in using available data for prediction. In this paper, a short-term hybrid forecasting approach has been proposed based on both algorithms, it can not only realize the prediction from relatively less available data, but ensure high accuracy in prediction as well. By an empirical study on the electricity power consumption of a certain region in central western China, the effectiveness of the proposed method is verified.
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