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A model-based fault detection and diagnostic methodology based on PCA method and wavelet transform

机译:基于PCA方法和小波变换的基于模型的故障检测与诊断方法

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Building automation systems (BASs) are widely used in modern buildings and large amounts of data are available on the BAS central station. This abundance of data has been described as a data rich but information poor situation and has given an opportunity to better utilize the collected BAS data for fault detection and diagnostics (AFDD) purposes. Air-handling units (AHUs) operate in dynamic environment with changing weather conditions and internal loads. It is challenging for FDD method to distinguish differences caused by normal weather conditions change or by faults. Principle Component Analysis (PCA) has been found to be powerful as a data-driven model based method in detecting AHU faults. Wavelet transform is a promising data preprocess approach to solve the problem by removing the influence of weather condition change. A combined Wavelet-PCA method is developed and tested using site-data. The feasibility of using wavelet transform method for data pretreatment has been demonstrated in this study. Comparing to conventional PCA method, Wavelet-PCA method is more robust to the internal load change and weather impact and generate no false alarms.
机译:楼宇自动化系统(BAS)广泛用于现代建筑,并且BAS中央站上有大量数据。大量的数据被描述为数据丰富但信息不佳的情况,并为更好地利用收集的BAS数据进行故障检测和诊断(AFDD)提供了机会。空气处理机组(AHU)在动态环境中运行,天气条件和内部负载不断变化。 FDD方法很难区分由正常天气条件变化或故障引起的差异。已经发现,主成分分析(PCA)作为基于数据驱动模型的方法在检测AHU故障方面功能强大。小波变换是一种有希望的数据预处理方法,它通过消除天气条件变化的影响来解决该问题。使用站点数据开发并测试了组合的Wavelet-PCA方法。这项研究证明了使用小波变换方法进行数据预处理的可行性。与传统的PCA方法相比,Wavelet-PCA方法对内部负载变化和天气影响更加鲁棒,并且不会产生误报。

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