Machine learning-based carbon dioxide concentration prediction for hybrid vehicles

Abstract

The current understanding of CO2 emission concentrations in hybrid vehicles (HVs) is limited, due to the complexity of the constant changes in their power-train sources. This study aims to address this problem by examining the accuracy, speed and size of traditional and advanced machine learning (ML) models for predicting CO2 emissions in HVs. A new long short-term memory (LSTM)-based model called UWS-LSTM has been developed to overcome the deficiencies of existing models. The dataset collected includes more than 20 parameters, and an extensive input feature optimization has been conducted to determine the most effective parameters. The results indicate that the UWS-LSTM model outperforms traditional ML and artificial neural network (ANN)-based models by achieving 97.5% accuracy. Furthermore, to demonstrate the efficiency of the proposed model, the CO2-concentration predictor has been implemented in a low-powered IoT device embedded in a commercial HV, resulting in rapid predictions with an average latency of 21.64 ms per prediction. The proposed algorithm is fast, accurate and computationally efficient, and it is anticipated that it will make a significant contribution to the field of smart vehicle applications.

Publication DOI: https://doi.org/10.3390/s23031350
Divisions: College of Engineering & Physical Sciences
College of Engineering & Physical Sciences > School of Computer Science and Digital Technologies
Aston University (General)
Additional Information: Copyright © 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Uncontrolled Keywords: hybrid vehicles,IoT,CO2,LSTM
Publication ISSN: 1424-8220
Last Modified: 18 Apr 2025 07:25
Date Deposited: 11 Apr 2025 12:40
Full Text Link:
Related URLs: https://www.mdp ... -8220/23/3/1350 (Publisher URL)
PURE Output Type: Article
Published Date: 2023-01-25
Accepted Date: 2023-01-21
Authors: Tena-Gago, David
Golcarenarenji, Gelayol
Martinez-Alpiste, Ignacio
Wang, Qi
Alcaraz-Calero, Jose M. (ORCID Profile 0000-0002-2654-7595)

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License: Creative Commons Attribution


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