
Mixed-Integer Energy Management for Multi-Motor Electric Vehicles with Clutch On-Off: Finding Global Optimum Efficiently
Author(s) -
Anand Ganesan,
Nikolce Murgovski,
Derong Yang,
Sebastien Gros
Publication year - 2025
Publication title -
ieee transactions on vehicular technology
Language(s) - English
Resource type - Magazines
SCImago Journal Rank - 1.365
H-Index - 178
eISSN - 1939-9359
pISSN - 0018-9545
DOI - 10.1109/tvt.2025.3589964
Subject(s) - transportation , aerospace
This article introduces a novel approach to energy management in multi-motor electric vehicles, leveraging mixedinteger model predictive control (MI-MPC). First, an energy management strategy is proposed to co-optimize torque allocation and decoupling decisions, minimizing both energy consumption and frequency of clutch engagement changes. Secondly, to address computational challenge inherent in solving the resultant mixed-integer (MI) problem, a bi-level programming approach is proposed. In this approach, the torque allocation subproblem is efficiently solved at the inner level with explicit closed-form analytical solution, while the outer level optimizes clutch decisions through implicit dynamic programming (i-DP). Evaluation in a high fidelity virtual environment shows energy savings exceeding 4% compared to heuristic controllers prevalent in modern electric vehicles. The i-DP based solution process guarantees finding global optimum for the MI problem in every MPC update. The presented strategy shows an average solution time of 1 ms in a laptop, conceptually indicating its real-time potential and possible integration in multi-motor electric vehicles.
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