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首页> 外文期刊>IEEE Transactions on Control Systems Technology >A Combined Data-Driven and Model-Based Residual Selection Algorithm for Fault Detection and Isolation
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A Combined Data-Driven and Model-Based Residual Selection Algorithm for Fault Detection and Isolation

机译:故障检测与隔离的数据驱动和基于模型的残差组合算法

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摘要

Selecting residual generators for detecting and isolating faults in a system is an important step when designing model-based diagnosis systems. However, finding a suitable set of residual generators to fulfill performance requirements is complicated by model uncertainties and measurement noise that have negative impact on fault detection performance. The main contribution is an algorithm for residual selection that combines model-based and data-driven methods to find a set of residual generators that maximizes fault detection and isolation performance. Based on the solution from the residual selection algorithm, a generalized diagnosis system design is proposed where test quantities are designed using multivariate residual information to improve detection performance. To illustrate the usefulness of the proposed residual selection algorithm, it is applied to find a set of residual generators to monitor the air path through an internal combustion engine.
机译:在设计基于模型的诊断系统时,选择残留发生器以检测和隔离系统中的故障是重要的一步。但是,模型不确定性和测量噪声会对故障检测性能产生负面影响,因此要找到一组合适的残差发生器来满足性能要求会很复杂。主要贡献是用于残差选择的算法,该算法结合了基于模型和数据驱动的方法,以找到一组残差生成器,以最大程度地提高故障检测和隔离性能。基于残差选择算法的解决方案,提出了一种广义诊断系统设计,其中使用多元残差信息设计测试量以提高检测性能。为了说明所提出的残差选择算法的有用性,将其应用于找到一组残差发电机以监控通过内燃机的空气路径。

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