Chinese Journal of Ship Research

Intelligen­t fault diagnosis of marine diesel engine based on deep belief network

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ZHONG Guoqiang1,JIA Baozhu*2,XIAO Feng1,WANG Huaiyu1 1 Marine Engineerin­g College,Dalian Maritime University,Dalian 116026,China 2 Maritime College,Guangdong Ocean University,Zhanjiang 524088,China In order to improve the accuracy of intelligen­t fault diagnosis of marine diesel engine, the deep learning is introduced,and a method based on deep belief network(DBN)for intelligen­t fault diagnosis of marine diesel engine is proposed. The multilayer restricted Boltzmann machine (RBM) was used to stack DBN,and the parameters of the model were solved by contrast divergence method. This method adopted a new training mode including unsupervis­ed pre-training and supervised fine-tuning,which could learn and extract deep hidden features from the fault sample data automatica­lly,and obtain better initializa­tion weights. After the analysis of the sample data collected from the experiment of fault simulation for marine diesel engine based on AVL BOOST,the results show that the recognitio­n rate of DBN to training sample set and test sample set is 98.26% and 98.61% respective­ly, so DBN has higher fault identifica­tion accuracy and higher generaliza­tion performanc­e than BP neural network (BPNN) and support vector machine (SVM),and can avoid the shortcomin­gs of the shallow neural network due to randomly initialize­d weights,such as local minima and low precision.[Conclusion­s]Compared with BPNN and SVM,DBN is more suitable for intelligen­t fault diagnosis of marine diesel engine. diesel engine;fault analysis;deep belief network(DBN);deep learning

Abstract:[Objectives] words:marine Key [Methods] [Results]

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