Improved Quantile Convolutional and Recurrent Neural Networks for Electric Vehicle Battery Temperature Prediction

The battery thermal management of electric vehicles can be improved using neural networks predicting quantile sequences of the battery temperature. This work extends a method for the development of Quantile Convolutional and Quantile Recurrent Neural Networks (namely Q*NN). Fleet data of 225 629 dri...

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Main Authors: Andreas M. Billert, Runyao Yu, Stefan Erschen, Michael Frey, Frank Gauterin
Format: Article
Language:English
Published: Tsinghua University Press 2024-06-01
Series:Big Data Mining and Analytics
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Online Access:https://www.sciopen.com/article/10.26599/BDMA.2023.9020028
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author Andreas M. Billert
Runyao Yu
Stefan Erschen
Michael Frey
Frank Gauterin
author_facet Andreas M. Billert
Runyao Yu
Stefan Erschen
Michael Frey
Frank Gauterin
author_sort Andreas M. Billert
collection DOAJ
description The battery thermal management of electric vehicles can be improved using neural networks predicting quantile sequences of the battery temperature. This work extends a method for the development of Quantile Convolutional and Quantile Recurrent Neural Networks (namely Q*NN). Fleet data of 225 629 drives are clustered and balanced, simulation data from 971 simulations are augmented before they are combined for training and testing. The Q*NN hyperparameters are optimized using an efficient Bayesian optimization, before the Q*NN models are compared with regression and quantile regression models for four horizons. The analysis of point-forecast and quantile-related metrics shows the superior performance of the novel Q*NN models. The median predictions of the best performing model achieve an average RMSE of 0.66°C and R2 of 0.84. The predicted 0.99 quantile covers 98.87% of the true values in the test data. In conclusion, this work proposes an extended development and comparison of Q*NN models for accurate battery temperature prediction.
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id doaj-art-19e30b28d0ad4efb9b5d89f5f11b944d
institution Kabale University
issn 2096-0654
language English
publishDate 2024-06-01
publisher Tsinghua University Press
record_format Article
series Big Data Mining and Analytics
spelling doaj-art-19e30b28d0ad4efb9b5d89f5f11b944d2025-02-03T09:01:25ZengTsinghua University PressBig Data Mining and Analytics2096-06542024-06-017251253010.26599/BDMA.2023.9020028Improved Quantile Convolutional and Recurrent Neural Networks for Electric Vehicle Battery Temperature PredictionAndreas M. Billert0Runyao Yu1Stefan Erschen2Michael Frey3Frank Gauterin4Karlsruhe Institute of Technology (KIT), Institute of Vehicle System Technology, Karlsruhe 76131, Germany, and also with Bayerische Motoren Werke (BMW) AG, Munich 80788, GermanyTechnical University of Munich (TUM), Munich 80333, GermanyBMW AG, Munich 80788, GermanyKIT, Institute of Vehicle System Technology, Karlsruhe 76131, GermanyKIT, Institute of Vehicle System Technology, Karlsruhe 76131, GermanyThe battery thermal management of electric vehicles can be improved using neural networks predicting quantile sequences of the battery temperature. This work extends a method for the development of Quantile Convolutional and Quantile Recurrent Neural Networks (namely Q*NN). Fleet data of 225 629 drives are clustered and balanced, simulation data from 971 simulations are augmented before they are combined for training and testing. The Q*NN hyperparameters are optimized using an efficient Bayesian optimization, before the Q*NN models are compared with regression and quantile regression models for four horizons. The analysis of point-forecast and quantile-related metrics shows the superior performance of the novel Q*NN models. The median predictions of the best performing model achieve an average RMSE of 0.66°C and R2 of 0.84. The predicted 0.99 quantile covers 98.87% of the true values in the test data. In conclusion, this work proposes an extended development and comparison of Q*NN models for accurate battery temperature prediction.https://www.sciopen.com/article/10.26599/BDMA.2023.9020028battery temperaturedeep learningconvolutional and recurrent neural networkquantile forecasting
spellingShingle Andreas M. Billert
Runyao Yu
Stefan Erschen
Michael Frey
Frank Gauterin
Improved Quantile Convolutional and Recurrent Neural Networks for Electric Vehicle Battery Temperature Prediction
Big Data Mining and Analytics
battery temperature
deep learning
convolutional and recurrent neural network
quantile forecasting
title Improved Quantile Convolutional and Recurrent Neural Networks for Electric Vehicle Battery Temperature Prediction
title_full Improved Quantile Convolutional and Recurrent Neural Networks for Electric Vehicle Battery Temperature Prediction
title_fullStr Improved Quantile Convolutional and Recurrent Neural Networks for Electric Vehicle Battery Temperature Prediction
title_full_unstemmed Improved Quantile Convolutional and Recurrent Neural Networks for Electric Vehicle Battery Temperature Prediction
title_short Improved Quantile Convolutional and Recurrent Neural Networks for Electric Vehicle Battery Temperature Prediction
title_sort improved quantile convolutional and recurrent neural networks for electric vehicle battery temperature prediction
topic battery temperature
deep learning
convolutional and recurrent neural network
quantile forecasting
url https://www.sciopen.com/article/10.26599/BDMA.2023.9020028
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