Efficient battery thermal management is critical for the performance, safety, and lifespan of modern electric and hybrid vehicles under dynamic operating conditions. This study presents an integrated experimental and data-driven analysis of a hybrid cooling system combining thermoelectric Peltier modules with Al 2 O 3 -based nanofluid-assisted liquid cooling. The system is benchmarked against a conventional radiator-based cooling configuration under varying flow rates (1–4 LPM) and nanoparticle concentrations (0.5–2.0 vol.%). The results demonstrate that demand-controlled thermoelectric activation enhances cooling performance by approximately 8%, while reducing auxiliary energy consumption by nearly 30%. A maximum heat-transfer enhancement of 53.4% is achieved at 4 LPM and 2.0 vol.% nanofluid concentration, whereas the highest temperature reduction of 31.6% is observed at low flow conditions (1 LPM). To enable predictive thermal analysis, multiple machine learning models are developed and compared with a Physics-Informed Neural Network (PINN). The PINN improves prediction accuracy by approximately 50% while ensuring physical consistency by embedding governing heat-transfer constraints. The proposed hybrid nanofluid-thermoelectric cooling framework offers a compact, energy-efficient, and scalable solution for next-generation electric vehicle battery thermal management, with enhanced thermal performance, adaptive control capability, and predictive reliability.
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Sharma et al. (Wed,) studied this question.
synapsesocial.com/papers/6a1a827f0307b78509434262 — DOI: https://doi.org/10.1177/09544062261452315
Himanshu Sharma
Rajiv Gandhi Technical University
Ravindra Randa
Madhya Pradesh Bhoj Open University
Gaurav Saxena
Lakshmibai National Institute of Physical Education
Proceedings of the Institution of Mechanical Engineers Part C Journal of Mechanical Engineering Science
Hiroshima University
Delhi Technological University
Rajiv Gandhi Technical University
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