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Sensor fault detection and isolation of an industrial gas turbine using partial adaptive KPCA

机译:使用部分自适应KPCA传感器故障检测和工业燃气轮机的隔离

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In this paper, sensor fault detection and isolation of time-varying nonlinear dynamical systems is studied by utilizing an adaptive kernel principal component analysis (KPCA) solution as a useful method to overcome the weaknesses of conventional KPCA approach in dealing with time-varying dynamical processes. Toward this goal, adaptive Hotelling's T-2 is used with KPCA to tackle the time-varying behavior of nonlinear systems. Moreover, for fault isolation, partial adaptive KPCA (AKPCA) is proposed where a set of residual signals is generated based on the structured residual set framework. The simulation studies demonstrate that using the proposed methodology, the occurrence of sensor faults in the nonlinear dynamic model of an aeroderivative gas turbine can be effectively detected and isolated in the presence of component degradation. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文通过利用适应性核主成分分析(KPCA)解决方案作为一种有用的方法,研究了传感器故障检测和时变非线性动力系统的隔离,以克服传统KPCA方法在处理时变动态过程中的弱点 。 朝向这一目标,自适应热均热的T-2与KPCA一起使用,以解决非线性系统的时变行为。 此外,对于故障隔离,提出了部分自适应KPCA(AKPCA),其中基于结构化残差集框架产生一组残差信号。 仿真研究表明,使用所提出的方法,可以有效地检测和分离成分降解的空气燃气轮机的非线性动态模型中的传感器故障的发生。 (c)2018年elestvier有限公司保留所有权利。

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