Smart Strategies for Improving Electric Vehicle Battery Performance and Efficiency

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Date

2025

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Volume Title

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Nature Research

Abstract

The increasing demand for Electric Vehicles (EVs) necessitates accurate range prediction and optimization of driving parameters to address range anxiety and improve user experience. This study proposes a machine learning-based framework for predicting EV range, optimum acceleration, and velocity using a synthetically generated dataset of 2,000 samples designed to reflect real-world driving scenarios. Four models—Random Forest (RF), Extra Trees (ET), Linear Regression (LR), and Long Short-Term Memory (LSTM)—were evaluated individually and in ensemble combinations. To ensure statistical reliability, all models were trained and tested over ten independent runs with randomized data partitions, and the results were reported as average performance with standard deviations. The ensembles consistently outperformed individual models, with the full ensemble (RF + ET + LSTM + LR) achieving the most robust performance across all metrics (MAE, MSE, and R²). Furthermore, a real-time web application was developed using the trained models to dynamically estimate driving parameters. The findings highlight the potential of integrating AI-driven predictive modelling into EV systems to support efficient driving behaviour and energy management. © The Author(s) 2025.

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Keywords

acceleration, article, benchmarking, customer experience, driving range anxiety, electric potential, energy conservation, ensemble learning, female, human, linear regression analysis, long short term memory network, machine learning, mean squared error, prediction, predictive model, random forest, reliability, velocity, adult, male

Citation

Scientific Reports, 2025, 15, 1, pp. -

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