基于ARIMA和LSTM的短期负荷预测集成深度学习模型

Lingling Tang, Yulin Yi, Yuexing Peng
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引用次数: 11

摘要

电力负荷预测是电力系统规划和运行的重要组成部分,可以指导电力企业合理安排发电计划,降低发电成本,为电网改造和优化提供参考。然而,由于电力负荷内部复杂的非线性特性和季节性特征,对电力负荷进行准确的短期预测是一个很大的挑战。本文首先研究了负荷序列的大时间跨度拟周期性,包括短负荷段的内部相关性和负荷段之间从一周到一个月的不同时间跨度的拟周期性。在此基础上,提出了一种将自回归综合移动平均(ARIMA)和长短期记忆(LSTM)相结合的集成方法,以充分利用负荷的大时间跨度准周期性。其中,ARIMA模型捕捉的是负荷段的平稳规律,LSTM模型提取的是负荷段之间复杂的非线性关系。在多伦多的负荷消耗数据集上对所提方法进行了评估,结果表明所提方法以较小的负载计算复杂度优于现有流行的STLF模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An ensemble deep learning model for short-term load forecasting based on ARIMA and LSTM
Electrical load forecasting is an important part of power system planning and operation, which can guide the power enterprises to arrange generation plan reasonably, reduce the cost of power generation, and provide a reference for power grid reconstruction and optimization. However, due to the complicated inner non-linear property and seasonality pattern of electrical load, accurate short-term load forecasting (STLF) is of big challenge. In this paper, we firstly study the large time-span quasi-periodicity of load sequences, including the inner correlation of a short load segment and the quasi-periodicity among the load segments spanning different time duration from a week to a month. Then, an ensemble method is proposed, which combines Auto-regressive Integrated Moving Average (ARIMA) and Long Short Term Memory (LSTM) in order to fully exploit the large time-span quasi-periodicity of the loads. Here, ARIMA model captures the stationary pattern of the load segments, while LSTM extracts the complicated non-linear relations of load segments. The proposed method is evaluated on a data set of load consumption in Toronto, and the results show the proposed method outperforms the existing popular STLF models with a small payload of computational complexity.
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