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Short-term Prediction of Power Consumption for Large-scale Public Build-ings Based on Regression Algorithm

机译:基于回归算法的大型公共建筑用电短期预测

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摘要

Energy consumption monitoring and regulation on large-scale public buildings are always an indispensable part in building energy conservation. With the mounting establishment of the building sub-metering platform, massive amounts of historical power consumption data are provided. In this paper, different building types of six large-scale public buildings in Shanghai are selected, with their sub-metering data deeply analyzed. The concept of CDHs/HDHs (cooling/heating degree hours) is introduced and weekly prediction models of total building power consumption are proposed by the way of multiple linear regression algorithm which is relatively simple and easy to understand. The prediction models are validated to have great accuracy and general applicability in the paper, offering reliable instructions to the building facility manager and relevant competent authorities in terms of decision making and policy implementation.
机译:大型公共建筑的能耗监测与监管始终是建筑节能中不可或缺的部分。随着建筑物子计量平台的安装建立,将提供大量的历史功耗数据。本文选择了上海六座大型公共建筑的不同建筑类型,并对其分计量数据进行了深入分析。介绍了CDHs / HDHs(制冷/制热小时数)的概念,并通过相对简单且易于理解的多元线性回归算法,提出了建筑总耗电量的每周预测模型。该预测模型在本文中经过验证,具有很高的准确性和普遍适用性,可在决策和政策实施方面为建筑设施经理和相关主管部门提供可靠的指导。

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