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Midpoint-radii principal component analysis-based EWMA and application to air quality monitoring network

机译:中点 - 半导体主成分分析的EWMA和空气质量监测网络的应用

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Monitoring air quality is crucial for the safety of humans and the environment. Moreover, real world data collected from air quality network is often affected by different types of errors as measurement noise and variability of pollutant concentrations. The uncertainty in the data, which is strictly connected to the above errors, may be treated by considering interval-valued data analysis. In practical cases of measured data, the true value cannot be measured and the collected data on a process are only approximations given by sensors, and are thus imprecise. This is due mainly to the uncertainties induced by measurement errors or determined by specific experimental conditions. Thus, the main aim of this paper is to develop an enhanced monitoring of air quality network by taking into account the uncertainties on the data. To do that, we develop a new monitoring technique that merges the advantages of Midpoint-radii PCA (MRPCA) method with exponentially weighted moving average (EWMA) chart, in order to enhance sensor fault detection technique of air quality monitoring process. MRPCA is the most popular interval multivariate statistical method, able to tackle the issue of uncertainties on the models and one way to improve the fault detection abilities. On the other hand, the EWMA statistic allows an exponential weighted average to successive observations and able to detect small and moderate faults. The developed MRPCA-based EWMA method relies on using MRPCA as a modeling framework for fault detection and EWMA as a detection chart. The proposed MRPCA-based EWMA scheme is illustrated using a simulation example and applied for sensor fault detection of an air quality monitoring network. The monitoring performances of the developed technique are compared to the classical monitoring techniques. MRPCA model performances are compared with the interval PCA models: complete-information principal component analysis (CIPCA) and Centers PCA (CPCA). The MRPCA-based EWMA monitoring performances are compared to MRPCA-based Shewhart, generalized likelihood ratio test (GLRT) and squared prediction error (SPE) techniques.
机译:监测空气质量对于人类和环境安全至关重要。此外,从空气质量网络收集的现实世界数据通常受到不同类型的误差的影响,作为测量噪音和污染物浓度的可变性。可以通过考虑间隔值数据分析来处理严格连接到上述误差的数据中的不确定性。在测量数据的实际情况下,无法测量真实值,并且过程上的收集数据仅是传感器给出的近似,因此不精确。这主要是由于测量误差引起的不确定性或通过特定的实验条件确定。因此,本文的主要目的是通过考虑数据的不确定性来发展对空气质量网络的增强监测。为此,我们开发了一种新的监控技术,将中点 - 半导体PCA(MRPCA)方法用指数加权移动平均(EWMA)图来合并了中点 - 半导体方法的优势,以增强空气质量监测过程的传感器故障检测技术。 MRPCA是最受欢迎的间隔多元统计方法,能够解决模型上的不确定性问题和提高故障检测能力的一种方法。另一方面,EWMA统计允许指数加权平均值以连续观察和能够检测小和中等的故障。开发的MRPCA的EWMA方法依赖于使用MRPCA作为故障检测和EWMA作为检测图的建模框架。使用仿真示例说明了所提出的MRPCA的EWMA方案,并应用于空气质量监测网络的传感器故障检测。将开发技术的监测性能与经典监测技术进行比较。将MRPCA模型性能与间隔PCA模型进行比较:完整信息主成分分析(CIPCA)和中心PCA(CPCA)。基于MRPCA的EWMA监测性能与MRPCA的削波,广义似然比测试(GLRT)和平方预测误差(SPE)技术进行比较。

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