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A hybrid modeling approach integrating first-principles knowledge with statistical methods for fault detection in HVAC systems

机译:一种混合建模方法,将第一原理知识与HVAC系统中的故障检测统计方法集成

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摘要

This work presents a hybrid modeling technique that combines first-principles knowledge with principal component analysis (PCA) to detect faults in heating, ventilation, and air conditioning (HVAC) systems. Residuals, defined as the discrepancies between expected and observed behaviors, along with temperature measurements are used to develop multiple hybrid PCA models. Each model describes the normal behavior of the system in a particular operating state of air-handling units (AHUs). Hotelling's T2 and square prediction error (SPE) statistics corresponding to the new observations are calculated using the hybrid PCA model in order to monitor the process and detect deviations from the expected behavior. The efficacy of the proposed approach to detect faults is evaluated and compared with two benchmark approaches: (1) residual analysis (based on first-principles models) and (2) a data-driven method (based on PCA) applied to raw temperature measurements. The superior performance of the proposed methodology, over the benchmarks, is shown via simulation tests with commonly occurring fault scenarios.
机译:该工作介绍了一种混合建模技术,将一原则知识与主成分分析(PCA)结合在加热,通风和空调(HVAC)系统中检测故障。残差被定义为预期和观察行为之间的差异,以及温度测量用于开发多个混合PCA模型。每个模型描述系统在空气处理单元(AHU)的特定操作状态下的正常行为。使用混合PCA模型计算Hotelling的T2和Square预测误差(SPE)对应于新观察的统计数据,以便监视过程并检测与预期行为的偏差。评估了所提出的方法检测故障的疗效,并与两个基准方法进行比较:(1)残余分析(基于第一原理模型)和(2)数据驱动方法(基于PCA)应用于原始温度测量。在基准测试中,通过模拟测试通过常见发生故障场景来显示所提出的方法的卓越性能。

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