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首页> 外文期刊>Reliability Engineering & System Safety >A Feature Selection-based Approach for the Identification of Critical Components in Complex Technical Infrastructures: Application to the CERN Large Hadron Collider
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A Feature Selection-based Approach for the Identification of Critical Components in Complex Technical Infrastructures: Application to the CERN Large Hadron Collider

机译:基于特征选择的方法,用于识别复杂技术基础设施中的关键组件:应用于Cern大型Hadron撞机

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摘要

Complex Technical Infrastructures (CTIs) are large-scale systems made of tens of thousands of interdependent components organized in complex hierarchical architectures. They evolve in time in a way that at one point their functional logic may be more complex than originally designed, and, therefore, traditional reliability/risk importance measures cannot be used for identifying the critical components on which the protection and recovery efforts should be primarily allocated. We propose an approach for identifying the most critical components based on the large amount of operational data collected from the CTI monitoring systems over long time periods and under different operational settings. The underlying idea is to develop binary classifiers to associate different combinations of measured signals to the CTI operating or failed state. The critical CTI components are those whose condition monitoring signals allow optimally classifying the CTI state. To identify the signals and to build the classifier, we consider a feature selection wrapper approach based on the combined use of Support Vector Machine classifiers and the Binary Differential Evolution algorithm for optimization. The approach is successfully applied to a real dataset collected from the CERN (European Centre for Nuclear Research) Large Hadron Collider, a CTI for experiments of physics.
机译:复杂的技术基础设施(CTI)是大量由成千上万的相互依存部件组织在复杂的分层体系结构中制成的大型系统。它们以一定程度的方式在一定程度上发展,它们的功能逻辑可能比最初设计更复杂,因此,传统的可靠性/风险重要性措施不能用于识别保护和恢复工作的关键组件主要是主要的分配。我们提出了一种方法,用于根据从CTI监控系统收集的大量运行数据在长时间段和不同的操作设置下基于从CTI监控系统收集的大量操作数据来识别最关键的组件。潜在的想法是开发二进制分类器以将测量信号的不同组合与CTI相关联,以便对CTI操作或失败的状态。关键CTI组件是那些状态监测信号允许最佳地对CTI状态进行分类的组件。为了识别信号并构建分类器,我们考虑基于支持向量机分类器的组合使用和二进制差分演化算法进行优化的特征选择包装方法。该方法成功地应用于来自CERN(欧洲核研究中心)大型HADRON COLLIDER的真实数据集,用于物理实验的CTI。

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