Score: 0

Deep Learning-Based Analysis of Power Consumption in Gasoline, Electric, and Hybrid Vehicles

Published: August 11, 2025 | arXiv ID: 2508.08034v1

By: Roksana Yahyaabadi , Ghazal Farhani , Taufiq Rahman and more

Potential Business Impact:

Predicts car's energy use accurately for any car.

Accurate power consumption prediction is crucial for improving efficiency and reducing environmental impact, yet traditional methods relying on specialized instruments or rigid physical models are impractical for large-scale, real-world deployment. This study introduces a scalable data-driven method using powertrain dynamic feature sets and both traditional machine learning and deep neural networks to estimate instantaneous and cumulative power consumption in internal combustion engine (ICE), electric vehicle (EV), and hybrid electric vehicle (HEV) platforms. ICE models achieved high instantaneous accuracy with mean absolute error and root mean squared error on the order of $10^{-3}$, and cumulative errors under 3%. Transformer and long short-term memory models performed best for EVs and HEVs, with cumulative errors below 4.1% and 2.1%, respectively. Results confirm the approach's effectiveness across vehicles and models. Uncertainty analysis revealed greater variability in EV and HEV datasets than ICE, due to complex power management, emphasizing the need for robust models for advanced powertrains.

Page Count
35 pages

Category
Computer Science:
Machine Learning (CS)