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Multi Boost with ENN-based ensemble fault diagnosis method and its application in complicated chemical process 被引量:1

Multi Boost with ENN-based ensemble fault diagnosis method and its application in complicated chemical process
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摘要 Fault diagnosis plays an important role in complicated industrial process.It is a challenging task to detect,identify and locate faults quickly and accurately for large-scale process system.To solve the problem,a novel Multi Boost-based integrated ENN(extension neural network) fault diagnosis method is proposed.Fault data of complicated chemical process have some difficult-to-handle characteristics,such as high-dimension,non-linear and non-Gaussian distribution,so we use margin discriminant projection(MDP) algorithm to reduce dimensions and extract main features.Then,the affinity propagation(AP) clustering method is used to select core data and boundary data as training samples to reduce memory consumption and shorten learning time.Afterwards,an integrated ENN classifier based on Multi Boost strategy is constructed to identify fault types.The artificial data sets are tested to verify the effectiveness of the proposed method and make a detailed sensitivity analysis for the key parameters.Finally,a real industrial system—Tennessee Eastman(TE) process is employed to evaluate the performance of the proposed method.And the results show that the proposed method is efficient and capable to diagnose various types of faults in complicated chemical process. Fault diagnosis plays an important role in complicated industrial process.It is a challenging task to detect,identify and locate faults quickly and accurately for large-scale process system.To solve the problem,a novel Multi Boost-based integrated ENN(extension neural network) fault diagnosis method is proposed.Fault data of complicated chemical process have some difficult-to-handle characteristics,such as high-dimension,non-linear and non-Gaussian distribution,so we use margin discriminant projection(MDP) algorithm to reduce dimensions and extract main features.Then,the affinity propagation(AP) clustering method is used to select core data and boundary data as training samples to reduce memory consumption and shorten learning time.Afterwards,an integrated ENN classifier based on Multi Boost strategy is constructed to identify fault types.The artificial data sets are tested to verify the effectiveness of the proposed method and make a detailed sensitivity analysis for the key parameters.Finally,a real industrial system-Tennessee Eastman(TE) process is employed to evaluate the performance of the proposed method.And the results show that the proposed method is efficient and capable to diagnose various types of faults in complicated chemical process.
出处 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第5期1183-1197,共15页 中南大学学报(英文版)
基金 Project (61203021) supported by the National Natural Science Foundation of China Project (2011216011) supported by the Key Science and Technology Program of Liaoning Province,China Project (2013020024) supported by the Natural Science Foundation of Liaoning Province,China Project (LJQ2015061) supported by the Program for Liaoning Excellent Talents in Universities,China
关键词 extension neural network multi-classifier ensembles margin discriminant projection affinity propagation FAULTDIAGNOSIS TE process 故障诊断方法 化学过程 集成 应用 复杂工业过程 化工过程 故障类型 非高斯分布
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