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深海载人潜水器推进器系统故障诊断的新型主元分析算法
引用本文:程学龙,朱大奇.深海载人潜水器推进器系统故障诊断的新型主元分析算法[J].控制理论与应用,2018,35(12):1796-1804.
作者姓名:程学龙  朱大奇
作者单位:上海海事大学 信息工程学院,上海海事大学 信息工程学院
基金项目:国家自然科学基金(U1706224,51575336,91748117);国家重点研发计划(2017YFC0306302)
摘    要:针对"蛟龙号"深海载人潜水器多推进器系统的故障检测与快速定位难题,将基于信度分配的模糊小脑神经网络(credit assignment-based fuzzy cerebellar model articulation controller, FCA–CMAC)应用于主元分析模型,提出一种基于主元分析(principal component analysis, PCA)的深海载人潜水器推进器系统故障诊断模型.首先,应用推进器系统正常运行的历史电流样本数据,由主元分析模型得到各推进器的电流预测值.其次,计算出故障检测统计量均方预测误差(squared prediction error, SPE),根据SPE值是否跳变,判断推进器系统有无故障发生.通过分别重构各推进器电流信号的SPE值对故障推进器进行定位和隔离.最后,通过对实际海试数据进行仿真处理说明了该算法的可行性,并通过与多层前馈神经网络(back propagation, BP)和常规小脑神经网络(cerebellar model articulation control-ler, CMAC)神经网络进行比较,说明基于FCA–CMAC神经网络的主元分析模型的优越性.

关 键 词:载人潜水器,主元分析,信号预测,故障检测,信号重构,故障隔离
收稿时间:2018/8/20 0:00:00
修稿时间:2018/11/27 0:00:00

Principal component analysis algorithm for fault diagnosis of thruster system in dep-sea human occupied vehicle
Cheng Xue-long and Zhu Da-qi.Principal component analysis algorithm for fault diagnosis of thruster system in dep-sea human occupied vehicle[J].Control Theory & Applications,2018,35(12):1796-1804.
Authors:Cheng Xue-long and Zhu Da-qi
Affiliation:Shanghai Maritime University,Shanghai Maritime University
Abstract:For the problem of fault detection and fault isolation in the multi-thruster system, a fault diagnosis model of thruster system in deep-sea human occupied vehicle based on principal component analysis(PCA) and fuzzy cerebellar model articulation controller neural network (FCA-CMAC) is proposed.Firstly,the forecasting electric current values of thrusters are computed by using historical data measured under fault-free conditions and the PCA model.Secondly, the squared prediction error (SPE) is calculated to characterize the operational status of the thruster system. A fault can be detected when the SPE increases suddenly.Current values are reconstructed respectively to newly calculate the SPE to locate the faulty thruster. Finally, compared to BP and conventional CMAC,the method proposed is proved feasible and effective by the simulation of the actual sea trial data.
Keywords:human occupied vehicle  principal component analysis  signal forecast  fault detection  fault isolation  signal reconstruction
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