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Classification of Time Series Measurement Data for Lock-Up Clutch of Automatic Transmission of Vehicles Using Deep Convolutional Neural Networks
Technical Paper
2018-01-0399
ISSN: 0148-7191, e-ISSN: 2688-3627
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Abstract
A newly developed classifying method for time series measurement data of automatic transmission of vehicles is presented. The proposed method uses deep convolutional neural networks to learn what is comfortable acceleration. In addition, our proposal method employs supervised learning based on experienced engineer’s criterion. As a demonstrative problem, we consider the classification of time series measurement data for lock-up clutch control of an 8 speed automatic transmission.
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Kawakami, T., Ide, T., Tomita, K., Moriyama, E. et al., "Classification of Time Series Measurement Data for Lock-Up Clutch of Automatic Transmission of Vehicles Using Deep Convolutional Neural Networks," SAE Technical Paper 2018-01-0399, 2018, https://doi.org/10.4271/2018-01-0399.Data Sets - Support Documents
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