Forecasting hot water consumption in dwellings using artificial neural networks

Linas Gelažanskas, K. Gamage
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引用次数: 12

Abstract

The electricity grid is currently transforming and becoming more and more decentralised. Green energy generation has many incentives throughout the world thus small renewable generation units become popular. Intermittent generation units pose threat to system stability so new balancing techniques like Demand Side Management must be researched. Residential hot water heaters are perfect candidates to be used for shifting electricity consumption in time. This paper investigates the ability on Artificial Neural Networks to predict individual hot water heater energy demand profile. Data from about a hundred dwellings are analysed using autocorrelation technique. The most appropriate lags were chosen and different Neural Network model topologies were tested and compared. The results are positive and show that water heaters have could potentially shift electric energy.
利用人工神经网络预测住宅热水用量
电网目前正在转型,变得越来越分散。绿色能源发电在世界各地有许多激励措施,因此小型可再生发电机组变得流行。间歇性发电机组对系统稳定性构成威胁,因此必须研究需求侧管理等新的平衡技术。住宅用热水器是及时转移用电量的理想选择。本文研究了人工神经网络预测单个热水器能源需求曲线的能力。使用自相关技术分析了大约100个住宅的数据。选择了最合适的滞后时间,并对不同的神经网络模型拓扑进行了测试和比较。结果是积极的,表明热水器有可能转移电能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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