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Data mining algorithms for decentralized fault detection and diagnosis in industrial systems.

机译:用于工业系统中分散故障检测和诊断的数据挖掘算法。

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摘要

Timely Fault Detection and Diagnosis in complex manufacturing systems is critical to ensure safe and effective operation of plant equipment. Process fault is defined as a deviation from normal process behavior, defined within the limits of safe production. The quantifiable objectives of Fault Detection include achieving low detection delay time, low false positive rate, and high detection rate. Once a fault has been detected pinpointing the type of fault is needed for purposes of fault mitigation and returning to normal process operation. This is known as Fault Diagnosis.;Data-driven Fault Detection and Diagnosis methods emerged as an attractive alternative to traditional mathematical model-based methods, especially for complex systems due to difficulty in describing the underlying process. A distinct feature of data-driven methods is that no a priori information about the process is necessary. Instead, it is assumed that historical data, containing process features measured in regular time intervals (e.g., power plant sensor measurements), are available for development of fault detection/diagnosis model through generalization of data.;The goal of my research was to address the shortcomings of the existing data-driven methods and contribute to solving open problems, such as: 1) decentralized fault detection and diagnosis; 2) fault detection in the cold start setting; 3) optimizing the detection delay and dealing with noisy data annotations. 4) developing models that can adapt to concept changes in power plant dynamics.;For small-scale sensor networks, it is reasonable to assume that all measurements are available at a central location (sink) where fault predictions are made. This is known as a centralized fault detection approach. For large-scale networks, decentralized approach is often used, where network is decomposed into potentially overlapping blocks and each block provides local decisions that are fused at the sink. The appealing properties of the decentralized approach include fault tolerance, scalability, and reusability. When one or more blocks go offline due to maintenance of their sensors, the predictions can still be made using the remaining blocks. In addition, when the physical facility is reconfigured, either by changing its components or sensors, it can be easier to modify part of the decentralized system impacted by the changes than to overhaul the whole centralized system. The scalability comes from reduced costs of system setup, update, communication, and decision making. Main challenges in decentralized monitoring include process decomposition and decision fusion.;We proposed a decentralized model where the sensors are partitioned into small, potentially overlapping, blocks based on the Sparse Principal Component Analysis (PCA) algorithm, which preserves strong correlations among sensors, followed by training local models at each block, and fusion of decisions based on the proposed Maximum Entropy algorithm. Moreover, we introduced a novel framework for adding constraints to the Sparse PCA problem. The constraints limit the set of possible solutions by imposing additional goals to be reached trough optimization along with the existing Sparse PCA goals. The experimental results on benchmark fault detection data show that Sparse PCA can utilize prior knowledge, which is not directly available in data, in order to produce desirable network partitions, with a pre-defined limit on communication cost and/or robustness.
机译:在复杂的制造系统中进行及时的故障检测和诊断对于确保工厂设备的安全有效运行至关重要。过程故障定义为与正常过程行为的偏差,在安全生产的范围内。故障检测的可量化目标包括实现低检测延迟时间,低误报率和高检测率。一旦检测到故障,就需要确定故障的类型,以减轻故障并恢复正常的过程操作。这就是所谓的故障诊断。数据驱动的故障检测和诊断方法已成为传统的基于数学模型的方法的一种有吸引力的替代方法,特别是对于复杂系统,由于难以描述基本过程。数据驱动方法的显着特征是不需要有关该过程的先验信息。取而代之的是,假定历史数据(包含按固定时间间隔测量的过程特征(例如,电厂传感器测量))可通过数据的泛化来开发故障检测/诊断模型。我的研究目标是解决现有数据驱动方法的缺点,并有助于解决未解决的问题,例如:1)分散式故障检测和诊断; 2)冷启动设置中的故障检测; 3)优化检测延迟并处理嘈杂的数据注释。 4)开发可以适应电厂动态概念变化的模型。对于小型传感器网络,可以合理地假设所有测量值都可在进行故障预测的中心位置(汇)使用。这被称为集中式故障检测方法。对于大型网络,通常使用分散的方法,其中网络被分解为可能重叠的块,并且每个块都提供在接收器处融合的本地决策。分散式方法的吸引力包括容错能力,可伸缩性和可重用性。当一个或多个模块由于维护其传感器而脱机时,仍然可以使用其余模块进行预测。另外,当通过更改物理设施的组件或传感器来重新配置物理设施时,与检修整个集中式系统相比,修改受变更影响的分散系统的一部分会更容易。可扩展性来自降低的系统设置,更新,通信和决策成本。分散监控的主要挑战包括过程分解和决策融合。;我们提出了一种分散模型,该模型基于稀疏主成分分析(PCA)算法将传感器划分为较小的,可能重叠的块,从而保留了传感器之间的强相关性,随后通过在每个块上训练局部模型,并基于建议的最大熵算法融合决策。此外,我们引入了一个新颖的框架来为稀疏PCA问题添加约束。约束通过强加通过优化以及现有的稀疏PCA目标可达到的其他目标,限制了可能的解决方案的集合。关于基准故障检测数据的实验结果表明,稀疏PCA可以利用在数据中不直接可用的先验知识,以产生理想的网络分区,并在通信成本和/或鲁棒性上有预先定义的限制。

著录项

  • 作者

    Grbovic, Mihajlo.;

  • 作者单位

    Temple University.;

  • 授予单位 Temple University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 157 p.
  • 总页数 157
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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