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Fault Detection on Big Data: A Novel Algorithm for Clustering Big Data to Detect and Diagnose Faults

机译:大数据的故障检测:一种小型数据的新算法检测和诊断故障

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With computer technology improving exponentially, data will grow incomprehensibly in size, complexity, and noise. However, latent within the data, valuable signals are hidden that, if discovered, can offer abundant information, such as fault detection. Traditionally, principal component analysis has been used to perform fault detection in large, multivariate systems. However, these methods often struggle to find the true origin, as they are susceptible to contribution smearing. In this work, a chemical plant system was analyzed and a novel cluster and detect method for fault detection utilizing machine-learning clustering algorithms was created in aim to improve fault detection time and diagnosis. Plant data containing complex variables were simulated, clustered into groups through a unique algorithm based upon correlations, and analyzed through principal component analysis as individual groups. This approach often resulted in quicker identification and more accurate diagnosis than the traditional principal component analysis method.
机译:通过呈指数增强的计算机技术,数据将不可思议地造成尺寸,复杂性和噪音。但是,数据内的潜在,有价值的信号被隐藏,如果发现,可以提供丰富的信息,例如故障检测。传统上,主要成分分析已用于在大型多变量系统中执行故障检测。然而,这些方法通常难以找到真正的来源,因为它们易受涂抹的贡献。在这项工作中,分析了一种化学植物系统,并创建了利用机器学习聚类算法的新型集群和检测故障检测方法,旨在提高故障检测时间和诊断。模拟包含复杂变量的植物数据,通过基于相关性的唯一算法群集成组,并通过主成分分析作为单个组进行分析。这种方法通常导致比传统的主要成分分析方法更快地识别和更准确的诊断。

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