典型变量分析用于故障检测和诊断的基准

Cristóbal Ruiz Cárcel, Yi Cao, D. Mba
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引用次数: 8

摘要

故障的早期检测和诊断可以通过避免故障设备的低效运行以及最大限度地减少计划外停机,停机时间和对系统其他部分的广泛损坏来提高工业过程的能源效率。此外,工业需求正迅速向更灵活的方案转变。因此,通常需要使工厂生产适应需求,这可能因应用而不稳定。这就是为什么开发能够监控在不同操作条件下工作的过程状况的工具非常重要。典型变量分析(CVA)是一种多变量数据驱动的方法,可用于检测和诊断工业系统中的故障。与其他类似的数据驱动算法相比,该方法能够更有效地捕获过程动态。这项工作的目的是提供一个基准案例,以证明CVA在大型试验台中检测和诊断人工播种故障的能力,并测量这些故障对系统性能的影响,特别是其能源效率。结果表明,CVA可以有效地用于实际过程数据的故障检测。在退化的早期阶段成功地检测到引入的故障,并利用贡献图识别故障的来源。
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A benchmark of Canonical Variate Analysis for fault detection and diagnosis
The early detection and diagnosis of faults can improve the energy efficiency of industrial processes by avoiding the inefficient operation of faulty equipment as well as minimizing unplanned shutdowns, downtime and extensive damage to other parts of the system. In addition, industrial needs are evolving fast towards more flexible schemes. As a consequence, it is often required to adapt the plant production to the demand, which can be volatile depending on the application. This is why it is important to develop tools that can monitor the condition of the process working under varying operational conditions. Canonical Variate Analysis (CVA) is a multivariate data driven methodology that can be applied to detect and diagnose faults in industrial systems. This method has the ability to capture the process dynamics more efficiently than other similar data driven algorithms. The aim of this work is to provide a benchmark case to demonstrate the ability of CVA to detect and diagnose artificially seeded faults in a large scale test rig and measure the impact of those faults on the system performance, in particular its energy efficiency. The results obtained suggest that CVA can be effectively used for fault detection using real process data. The faults introduced were successfully detected in the early stages of degradation, and the source of the faults was identified using contribution plots.
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