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Rare Event Analysis of High Dimensional Building Operational Data Using Data Mining Techniques

机译:利用数据挖掘技术稀有事件分析高维构建操作数据

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Today's building automation systems (BASs) are becoming increasingly complex. A typical BAS usually stores hundreds of sensor measurements and control signals at each time step, which produces massive high dimensional data sets. Traditional analysis methods for BAS data only focus on a small subset of the data, resulting in a huge information loss. Data mining techniques are more effective in knowledge extraction of massive data. This study develops a holistic methodology for analyzing the high dimensional BAS data using advanced data mining techniques, with the aim of identifying rare events in building operation. Rare event analysis helps to identify atypical building operating patterns, detect and diagnose faults, and eventually improve the building operational performance. Two main challenges exist in performing rare event analysis of massive building operational data, i.e. the high data dimensionality and the complexity in building system operation. The former results that the conventional analytics, such as distance-based measures, lose their effectiveness, and the later negatively influences the robustness and reliability of the identification of rare events. The proposed method is specially designed to tackle these challenges by integrating the power of data mining techniques. It consists of four main steps, i.e., data preparation, rare event detection, rare event diagnosis, and post-mining. The methodology is adopted to analyze the BAS data of the tallest building in Hong Kong. Rare events are successfully detected and diagnosed, providing clues to enhance building operational performance.
机译:今天的建筑自动化系统(低音)变得越来越复杂。典型的BAS通常在每个时间步骤存储数百个传感器测量和控制信号,从而产生大量的高维数据集。用于BAS数据的传统分析方法仅关注数据的小型子集,导致巨大的信息丢失。数据挖掘技术在大规模数据的知识提取方面更有效。本研究开发了一种用于使用先进的数据挖掘技术分析高维的BAS数据的整体方法,目的是在建筑运行中识别罕见事件。罕见的事件分析有助于识别非典型建筑操作模式,检测和诊断故障,最终提高建筑运行性能。对大规模建筑运营数据进行稀有事件分析的两个主要挑战,即高数据量和建筑系统运行中的复杂性。前一种结果是,常规分析,如距离的措施,失去其有效性,并且后来对罕见事件的识别的鲁棒性和可靠性产生负面影响。所提出的方法专门设计用于通过集成数据挖掘技术的力量来解决这些挑战。它由四个主要步骤组成,即数据准备,罕见的事件检测,罕见的事件诊断和挖掘后。采用该方法来分析香港最高建筑的BAS数据。成功检测和诊断出罕见的事件,提供了提高建筑运营性能的线索。

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