人工智能模型预测建筑冷负荷需求,减少能耗,努力实现碳中和

Q2 Engineering
Tony Ip, Tattwa Darshi Panda, Xiaoyu Jia, Yiqun Pan, D. Mishra, Matthew Yuen, Harris Sun
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引用次数: 0

摘要

到2050年,世界需要实现碳中和或温室气体净零排放。建筑物是温室气体排放的主要来源。机器学习/人工智能最新创新技术的应用算法带来了新的机会。冷却装置系统的优化控制对于降低能源消耗和排放至关重要。提前了解冷却负荷需求可以帮助设施管理人员更有效地运行冷却设备。本文介绍了9种人工智能模型在商业建筑冷负荷需求时序预测中的实际应用。LSTM神经网络、Facebook Prophet时间序列模型和DeepAR递归神经网络模型最准确,平均绝对百分比误差(MAPE)在15到16之间,计算时间分别在294到319秒之间。另一方面,LightGBM机器学习模型被证明是最快的,MAPE在7秒内达到18.96。因此,可以针对不同的需求部署不同的模型。根据预测的冷却需求优化冷却系统的运行可以带来巨大的能源节约,这对实现碳中和至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A.I. model forecast of building cooling load demand for the reduction of energy consumption to work towards carbon neutrality
The world needs to achieve carbon neutrality or net zero emissions of greenhouse gases (GHG) by 2050. Buildings are major sources of GHG emissions. Applications of the latest innovative technologies of machine learning/A.I. algorithms have opened up new opportunities. The optimal control of cooling plant systems is important to reduce energy consumption and therefore emissions. Knowing the cooling load demand in advance can help facility managers operate cooling plants much more efficiently. This paper presents a real-life application of nine A.I. models for time-series forecasting of the cooling load demand of a commercial building. LSTM neural networks, Facebook Prophet time series model, and DeepAR recurrent neural network models are found to be the most accurate with a Mean Absolute Percentage Error (MAPE) in the range of 15 to 16 with a computing time in the range of 294 to 319 seconds respectively. The LightGBM machine learning model on the other hand proves to be the fastest with a MAPE of 18.96 in just 7 seconds. Thus, different models can be deployed for different requirements. Optimising the operation of cooling systems as per the forecast cooling demand can bring enormous energy savings that are essential for achieving carbon neutrality.
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来源期刊
Transactions Hong Kong Institution of Engineers
Transactions Hong Kong Institution of Engineers Engineering-Engineering (all)
CiteScore
2.70
自引率
0.00%
发文量
22
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