基于极限学习机算法的空调能耗预测方法

Xu Yang, Jingjing Gao, Lei Zhang, Xiaoli Li, L. Gu, Jiarui Cui, Chao-nan Tong
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引用次数: 4

摘要

本文论述了建筑空调能耗及不同数据的系统监测问题。建筑内部的各种环境参数是实时变化的,传统的负荷模拟软件的空调能耗预测无法适应这些变化。因此,在建筑内部环境参数范围内,基于极限学习机(ELM)算法建立空调能耗预测模型。这些参数是通过综合考虑环境参数、人口数量、区域面积和能耗的建筑监控系统获得的。通过工程实例验证了该空调能耗预测模型的性能和有效性。
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A forecasting method of air conditioning energy consumption based on extreme learning machine algorithm
This paper deals with the issue on air conditioning energy consumption and system monitoring of different data in building. Various environmental parameters inside the building are changed in real time, while the conventional air conditioning energy consumption forecasting with the load simulation software cannot adapt to these variations. Therefore, the air conditioning energy consumption forecasting model is established based on extreme learning machine (ELM) algorithm, within the interior environmental parameters of the building. These parameters are obtained through the building monitoring system which takes into account the environmental parameters, number of people, region area and energy consumption. The performance and effectiveness of the proposed forecasting model of air conditioning energy consumption are demonstrated through a case study of a building from practical engineering.
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