基于进化集成LSTM的家庭峰值需求预测

Songpu Ai, Antorweep Chakravorty, Chunming Rong
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引用次数: 11

摘要

电动汽车的普及、微型发电的商业化以及局部储能的推进,给家庭和小区一级的局部电网带来了巨大的挑战。一个潜在的解决方案是构建一个家庭/社区能源管理系统(HEMS),利用人工智能协调所有可用的电气设备。高峰需求预测作为HEMS的一部分,对于触发家庭用电环境中的负荷调度以获得更好的用电曲线至关重要。长短期记忆(LSTM)网络作为一种杰出的机器学习方法,通常被认为能够基于时间序列数据(包括未知滞后的时间动态行为)进行预测。现有研究采用了多种LSTM网络来提供能源信息学领域的预测。然而,所提出的网络结构通常是通过经验或枚举方法选择的。所使用的网络通常是根据具体案例进行仔细调整的。本文提出了一种进化集成LSTM (EELSTM)方法,将具有相同结构或相似结构的LSTM网络进行池化,自动获得更可靠的预测结果。实验研究表明,在学习过程中选择出合适的网络结构和初始化。与单LSTM单元网络相比,实现了更好的峰值需求预测。此外,演化参数对模型性能有不同的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary Ensemble LSTM based Household Peak Demand Prediction
The popularization of electric vehicle, the commercialization of micro-generation, and the advance of local storage lead great challenges to the local power grid on household and neighbourhood level. A potential solution is to construct a home/neighbourhood energy management system (HEMS) to coordinate all available electrical equipment together using AI. As a portion of HEMS, peak demand prediction is critically important on triggering load scheduling among the household power environment to achieve better electricity usage curve. Long short-term memory (LSTM) network as an eminent type of machine learning method is generally considered to be capable on forecasting based on time series data including temporal dynamic behaviours with unknown lags. Various LSTM networks are adopted in existing researches to provide predictions in energy informatics field. However, the presented network structures are commonly selected through empirical or enumerative approaches. The utilized networks are generally carefully tuned as case by case studies. In this article, an evolutionary ensemble LSTM (EELSTM) method is proposed to pool LSTM networks with the same structure or with similar structures to obtain a more reliable prediction automatically. Experimental study demonstrates that networks with suitable structures and initialization are selected out through the learning process. A better performed peak demand prediction is achieved comparing with single LSTM unit network. In addition, the evolutionary parameters have variant impacts on the model performance.
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