Traditional process monitoring methods, such as PCA, PLS, ICA, MD et al., are strongly dependent on continuous variables because most of them inevitably involve Euclidean or Mahalanobis distance. With industrial processes becoming more and more complex and integrated, binary variables also appear in monitoring variables besides continuous variables, which makes process monitoring more challenging. The aforementioned traditional approaches are incompetent to mine the information of binary variables, so that the useful information contained in them is usually discarded during the data preprocessing. To solve the problem, this paper focuses on the issue of hybrid variable monitoring (HVM) and proposes a novel unsupervised framework of process monitoring with hybrid variables. HVM is addressed in the probabilistic framework, which can effectively exploit the process information implicit in both continuous and binary variables at the same time. In HVM, the statistics and the monitoring strategy suitable for hybrid variables with only healthy state data are defined and the physical explanation behind the framework is elaborated. In addition, the estimation of parameters required in HVM is derived in detail and the detectable condition of the proposed method is analyzed. Finally, the superiority of HVM is fully demonstrated first on a numerical simulation and then on an actual case of a thermal power plant.
翻译:传统过程监测方法,如五氯苯甲醚、PLS、ICA、MD等人等,在很大程度上依赖持续的变量,因为大多数都不可避免地涉及欧洲或马哈拉诺比斯距离。随着工业过程越来越复杂和一体化,二进制变量也出现在监测变量上,而连续变量则使过程监测更具挑战性。上述传统方法无法将二进制变量的信息埋存于地雷,因此,在数据处理前阶段通常会丢弃其中所包含的有用信息。为了解决问题,本文件侧重于混合变量监测(HVM)问题,并提出了一个新的、不受监督的混合变量进程监测框架。HVM在概率框架中处理,可以有效地利用连续变量和二进制变量所隐含的进程信息,同时使过程监测更具挑战性。在HVM中,对仅具备健康状态数据的混合变量的统计和监测战略进行了界定,并详细解释了框架背后的物理解释。此外,HVM所需参数的估算是详细得出的,而拟议方法的可探测性条件则是新的。最后,对实际电压的高级性模型和随后充分展示了工厂的模拟。