Modelling energy demand response using long short-term memory neural networks

被引:1
|
作者
JoséJoaquìn Mesa Jiménez
Lee Stokes
Chris Moss
Qingping Yang
Valerie N. Livina
机构
[1] Brunel University London,
[2] National Physical Laboratory,undefined
[3] Mitie,undefined
[4] The Shard,undefined
来源
Energy Efficiency | 2020年 / 13卷
关键词
Load forecasting; Demand side response; Machine learning; Long short-term memory; Triad forecasting; Electricity demand; Neural networks;
D O I
暂无
中图分类号
学科分类号
摘要
We propose a method for detecting and forecasting events of high energy demand, which are managed at the national level in demand side response programmes, such as the UK Triads. The methodology consists of two stages: load forecasting with long short-term memory neural network and dynamic filtering of the potential highest electricity demand peaks by using the exponential moving average. The methodology is validated on real data of a UK building management system case study. We demonstrate successful forecasts of Triad events with RRMSE ≈ 2.2% and MAPE ≈ 1.6% and general applicability of the methodology for demand side response programme management, with reduction of energy consumption and indirect carbon emissions.
引用
收藏
页码:1263 / 1280
页数:17
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