A PID inspired feature extraction method for HVAC terminal units

M. Dey, Manik Gupta, S. P. Rana, Mikdam Turkey, S. Dudley
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引用次数: 6

Abstract

Retrofitting older buildings and embedding new building stock with Energy Management Systems (BEMS) is paving the way for smarter energy use and increased well-being awareness and initiatives for occupants. BEMS can discover problems related to energy wastage, user comfort and building maintenance. Remote analysis and categorization of the different Heating, Ventilation and Air-Conditioning (HVAC) Terminal Unit (TU) behaviours based on a unique set of features using BEMS data is the main aim of the proposed work. Hence, a novel feature extraction method inspired by the Proportional Integral Derivative (PID) controller response curve to define events from TU data is proposed and applied to multidimensional, real-time data streams remotely retrieved from a building based in the city of London. The feature extraction method executing across different TUs and the feature sets obtained, have been used to identify different TU behaviour patterns. Subsequently, unsupervised machine learning has been employed to study faulty and non-faulty TUs.
一种基于PID的暖通空调终端特征提取方法
对旧建筑进行改造,并在新建筑中安装能源管理系统(BEMS),为更智能地使用能源、提高居住者的福祉意识和主动性铺平了道路。BEMS可以发现与能源浪费、用户舒适度和建筑维护相关的问题。基于使用BEMS数据的一组独特特征,远程分析和分类不同的供暖,通风和空调(HVAC)终端单元(TU)行为是拟议工作的主要目的。因此,提出了一种受比例积分导数(PID)控制器响应曲线启发的新的特征提取方法,从TU数据中定义事件,并将其应用于从伦敦市一座建筑物远程检索的多维实时数据流。在不同TU之间执行的特征提取方法和所获得的特征集已被用于识别不同的TU行为模式。随后,无监督机器学习被用于研究故障和非故障tu。
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