Smart Shift Decision Method Based on Stacked Autoencoders

Manual calibration and testing on real vehicles are common methods of generating shifting schedules for newly developed vehicles. However, these methods are time-consuming. Shifting gear timing is an important operating parameter that affects shifting time, power loss, fuel efficiency, and driver co...

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Main Authors: Zengcai Wang, Yazhou Qi, Guoxin Zhang, Lei Zhao
Format: Article
Language:English
Published: Hindawi Limited 2018-01-01
Series:Journal of Control Science and Engineering
Online Access:http://dx.doi.org/10.1155/2018/1098753
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spelling doaj-5175a9b625b14613bd42320b6f90f6e62020-11-24T22:01:08ZengHindawi LimitedJournal of Control Science and Engineering1687-52491687-52572018-01-01201810.1155/2018/10987531098753Smart Shift Decision Method Based on Stacked AutoencodersZengcai Wang0Yazhou Qi1Guoxin Zhang2Lei Zhao3School of Mechanical Engineering, Shandong University, Jinan, ChinaSchool of Mechanical Engineering, Shandong University, Jinan, ChinaSchool of Mechanical Engineering, Shandong University, Jinan, ChinaSchool of Mechanical Engineering, Shandong University, Jinan, ChinaManual calibration and testing on real vehicles are common methods of generating shifting schedules for newly developed vehicles. However, these methods are time-consuming. Shifting gear timing is an important operating parameter that affects shifting time, power loss, fuel efficiency, and driver comfort. The stacked autoencoder (SAE) algorithm, a type of artificial neural network, is used in this study to predict shifting gear timing on the basis of throttle percentage, vehicle velocity, and acceleration. Experiments are conducted to obtain training and testing data. Different neural networks are trained with experimental data on a real vehicle under different road conditions collected using the CANcaseXL device and control AMESim simulation model, which was constructed based on real vehicle parameters. The input number of SAE is determined through a comparison between two and three parameters. The output type of SAE is determined through a comparative experiment on pattern recognition and multifitting. Meanwhile, the network structure of SAE is determined through a comparative experiment on simple and deep-learning neural networks. Experimental results demonstrate that using the SAE intelligent shift control strategy to determine shift timing not only is feasible and accurate but also saves time and development costs.http://dx.doi.org/10.1155/2018/1098753
collection DOAJ
language English
format Article
sources DOAJ
author Zengcai Wang
Yazhou Qi
Guoxin Zhang
Lei Zhao
spellingShingle Zengcai Wang
Yazhou Qi
Guoxin Zhang
Lei Zhao
Smart Shift Decision Method Based on Stacked Autoencoders
Journal of Control Science and Engineering
author_facet Zengcai Wang
Yazhou Qi
Guoxin Zhang
Lei Zhao
author_sort Zengcai Wang
title Smart Shift Decision Method Based on Stacked Autoencoders
title_short Smart Shift Decision Method Based on Stacked Autoencoders
title_full Smart Shift Decision Method Based on Stacked Autoencoders
title_fullStr Smart Shift Decision Method Based on Stacked Autoencoders
title_full_unstemmed Smart Shift Decision Method Based on Stacked Autoencoders
title_sort smart shift decision method based on stacked autoencoders
publisher Hindawi Limited
series Journal of Control Science and Engineering
issn 1687-5249
1687-5257
publishDate 2018-01-01
description Manual calibration and testing on real vehicles are common methods of generating shifting schedules for newly developed vehicles. However, these methods are time-consuming. Shifting gear timing is an important operating parameter that affects shifting time, power loss, fuel efficiency, and driver comfort. The stacked autoencoder (SAE) algorithm, a type of artificial neural network, is used in this study to predict shifting gear timing on the basis of throttle percentage, vehicle velocity, and acceleration. Experiments are conducted to obtain training and testing data. Different neural networks are trained with experimental data on a real vehicle under different road conditions collected using the CANcaseXL device and control AMESim simulation model, which was constructed based on real vehicle parameters. The input number of SAE is determined through a comparison between two and three parameters. The output type of SAE is determined through a comparative experiment on pattern recognition and multifitting. Meanwhile, the network structure of SAE is determined through a comparative experiment on simple and deep-learning neural networks. Experimental results demonstrate that using the SAE intelligent shift control strategy to determine shift timing not only is feasible and accurate but also saves time and development costs.
url http://dx.doi.org/10.1155/2018/1098753
work_keys_str_mv AT zengcaiwang smartshiftdecisionmethodbasedonstackedautoencoders
AT yazhouqi smartshiftdecisionmethodbasedonstackedautoencoders
AT guoxinzhang smartshiftdecisionmethodbasedonstackedautoencoders
AT leizhao smartshiftdecisionmethodbasedonstackedautoencoders
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