Multi-Type Diesel Engines Operating Condition Recognition Method Based on Stacked Auto-Encoder and Feature Transfer Learning
It is of great significance to diagnose the fault of diesel engine, which is widely used in many important fields as key power equipment. The accuracy of fault diagnosis can be effectively improved by obtaining the complex and changeable operating conditions, which can result in the change of monito...
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doaj-3de7bb44ab5640e1aa8b5d6d1a6406a82021-03-30T15:05:40ZengIEEEIEEE Access2169-35362021-01-019310433105210.1109/ACCESS.2021.30573999348906Multi-Type Diesel Engines Operating Condition Recognition Method Based on Stacked Auto-Encoder and Feature Transfer LearningGuoqing Xiong0Wensheng Ma1Nanyang Zhao2https://orcid.org/0000-0002-3018-4643Jinjie Zhang3https://orcid.org/0000-0001-9516-0127Zhinong Jiang4Zhiwei Mao5https://orcid.org/0000-0001-5839-5066Beijing Key Laboratory of High-End Mechanical Equipment Health Monitoring and Self-Recovery, Beijing University of Chemical Technology, Beijing, ChinaBeijing Key Laboratory of High-End Mechanical Equipment Health Monitoring and Self-Recovery, Beijing University of Chemical Technology, Beijing, ChinaBeijing Key Laboratory of High-End Mechanical Equipment Health Monitoring and Self-Recovery, Beijing University of Chemical Technology, Beijing, ChinaBeijing Key Laboratory of High-End Mechanical Equipment Health Monitoring and Self-Recovery, Beijing University of Chemical Technology, Beijing, ChinaBeijing Key Laboratory of High-End Mechanical Equipment Health Monitoring and Self-Recovery, Beijing University of Chemical Technology, Beijing, ChinaBeijing Key Laboratory of High-End Mechanical Equipment Health Monitoring and Self-Recovery, Beijing University of Chemical Technology, Beijing, ChinaIt is of great significance to diagnose the fault of diesel engine, which is widely used in many important fields as key power equipment. The accuracy of fault diagnosis can be effectively improved by obtaining the complex and changeable operating conditions, which can result in the change of monitoring signals. This study proposes a variable operating conditions recognition method based on stacked auto-encoder (SAE) and feature transfer learning. In this method, the vibration in the firing angle domain collected from multi-sensor signals is reconstructed. Then a feature set sensitive to working conditions is extracted from the recombinant signals by a well-constructed stack auto-encoder. According to the dataset test, the softmax classifier can effectively get a high recognition accuracy. Considering that the fault may affect the condition identification, the misfire fault that has a great influence on firing angle domain signals is used to test the robustness of the proposed method. Besides, to enable a well-trained test rig with a large amount of data to be effectively applied to another unit that lacks data, the BDA transfer learning method is used to map the operating conditions of two different engines to the same feature space. The results of experiments conducted on two large power marine multi-cylinder diesel engines show that BDA is capable of transferring the sensitive features of operating conditions.https://ieeexplore.ieee.org/document/9348906/Diesel engineoperating condition recognitionauto-encodertransfer learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Guoqing Xiong Wensheng Ma Nanyang Zhao Jinjie Zhang Zhinong Jiang Zhiwei Mao |
spellingShingle |
Guoqing Xiong Wensheng Ma Nanyang Zhao Jinjie Zhang Zhinong Jiang Zhiwei Mao Multi-Type Diesel Engines Operating Condition Recognition Method Based on Stacked Auto-Encoder and Feature Transfer Learning IEEE Access Diesel engine operating condition recognition auto-encoder transfer learning |
author_facet |
Guoqing Xiong Wensheng Ma Nanyang Zhao Jinjie Zhang Zhinong Jiang Zhiwei Mao |
author_sort |
Guoqing Xiong |
title |
Multi-Type Diesel Engines Operating Condition Recognition Method Based on Stacked Auto-Encoder and Feature Transfer Learning |
title_short |
Multi-Type Diesel Engines Operating Condition Recognition Method Based on Stacked Auto-Encoder and Feature Transfer Learning |
title_full |
Multi-Type Diesel Engines Operating Condition Recognition Method Based on Stacked Auto-Encoder and Feature Transfer Learning |
title_fullStr |
Multi-Type Diesel Engines Operating Condition Recognition Method Based on Stacked Auto-Encoder and Feature Transfer Learning |
title_full_unstemmed |
Multi-Type Diesel Engines Operating Condition Recognition Method Based on Stacked Auto-Encoder and Feature Transfer Learning |
title_sort |
multi-type diesel engines operating condition recognition method based on stacked auto-encoder and feature transfer learning |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2021-01-01 |
description |
It is of great significance to diagnose the fault of diesel engine, which is widely used in many important fields as key power equipment. The accuracy of fault diagnosis can be effectively improved by obtaining the complex and changeable operating conditions, which can result in the change of monitoring signals. This study proposes a variable operating conditions recognition method based on stacked auto-encoder (SAE) and feature transfer learning. In this method, the vibration in the firing angle domain collected from multi-sensor signals is reconstructed. Then a feature set sensitive to working conditions is extracted from the recombinant signals by a well-constructed stack auto-encoder. According to the dataset test, the softmax classifier can effectively get a high recognition accuracy. Considering that the fault may affect the condition identification, the misfire fault that has a great influence on firing angle domain signals is used to test the robustness of the proposed method. Besides, to enable a well-trained test rig with a large amount of data to be effectively applied to another unit that lacks data, the BDA transfer learning method is used to map the operating conditions of two different engines to the same feature space. The results of experiments conducted on two large power marine multi-cylinder diesel engines show that BDA is capable of transferring the sensitive features of operating conditions. |
topic |
Diesel engine operating condition recognition auto-encoder transfer learning |
url |
https://ieeexplore.ieee.org/document/9348906/ |
work_keys_str_mv |
AT guoqingxiong multitypedieselenginesoperatingconditionrecognitionmethodbasedonstackedautoencoderandfeaturetransferlearning AT wenshengma multitypedieselenginesoperatingconditionrecognitionmethodbasedonstackedautoencoderandfeaturetransferlearning AT nanyangzhao multitypedieselenginesoperatingconditionrecognitionmethodbasedonstackedautoencoderandfeaturetransferlearning AT jinjiezhang multitypedieselenginesoperatingconditionrecognitionmethodbasedonstackedautoencoderandfeaturetransferlearning AT zhinongjiang multitypedieselenginesoperatingconditionrecognitionmethodbasedonstackedautoencoderandfeaturetransferlearning AT zhiweimao multitypedieselenginesoperatingconditionrecognitionmethodbasedonstackedautoencoderandfeaturetransferlearning |
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1724180082879102976 |