OPTIMIZING BATTERY THERMAL MANAGEMENT SYSTEMS FOR ELECTRIC VEHICLES USING FIREFLY OPTIMIZATION AND SUPPORT VECTOR MACHINES
Keywords:
Battery Electric Vehicles, Battery Thermal Management System, Firefly Optimization Algorithm, Machine Learning, Support Vector Machines.Abstract
Battery Electric Vehicles (BEVs) have a high dependency on effective Battery Thermal Management Systems
(BTMS) to guarantee better performance, safety and long-life cycle of lithium-ion battery. Such issues associated
with temperatures variations demand efficient thermal control systems. The research paper is carried out under
the scope of exploring the applicability of machine learning (especially, Support Vector Machines (SVM) and
Firefly Optimization Algorithm (FOA)) in optimising BTMS behaviour in real-time. This combination of
techniques enables efficiency and flexibility in manipulating cooling systems in the changing conditions of
operation, greatly benefiting efficiency and minimizing the requirements of the costly testing facilities. Findings
demonstrate that the proposed model manages to predict and optimize cooling power and Coefficient of
Performance (COP) with a relatively low cost and scalable solution of thermal management of BEVs.
