Abstract
Eco-cruising is considered an effective approach for reducing energy consumption of connected vehicles. Most eco-cruising controllers (ECs) do not comply with real-time implementation requirements when a short sampling interval is required. This paper presents a solution to this problem. Model predictive control (MPC) framework was applied to the speed-planning problem for a power-split hybrid electric vehicle (HEV). To overcome the limitations of time-domain MPC (TMPC), a nonlinear space-domain MPC (SMPC) was proposed in the space domain. A real-time iteration (RTI) algorithm was developed to accelerate nonlinear SMPC computations via generating warm initializations and subsequently forming the SMPC-RTI. Proposed speed controllers were evaluated in a hierarchical EC, where a heuristic energy management strategy was selected for powertrain control. Simulation results indicated that the proposed SMPC yields comparable fuel savings to the TMPC and the globally optimal solution. Meanwhile, SMPC reduced MPC computation time by 41% compared to TMPC, and SMPC-RTI further reduced MPC computation time without compromising optimization. During the hardware-in-loop (HIL) test, the mean computation time was 9.86 ms, demonstrating potential for real-time applications.
Funder
National Natural Science Foundation of China
Subject
Electrical and Electronic Engineering,Industrial and Manufacturing Engineering,Control and Optimization,Mechanical Engineering,Computer Science (miscellaneous),Control and Systems Engineering
Reference36 articles.
1. Electric vehicle market potential and associated energy and emissions reduction benefits;Dai;Appl. Energy,2022
2. Drivers of the electric vehicle market: A systematic literature review of empirical studies;Austmann;Financ. Res. Lett.,2021
3. Exploring the future electric vehicle market and its impacts with an agent-based spatial integrated framework: A case study of Beijing, China;Zhuge;J. Clean. Prod.,2022
4. Driving conditions-driven energy management strategies for hybrid electric vehicles: A review;Liu;Renew. Sustain. Energy Rev.,2021
5. Gao, Y., Yang, S., Wang, X., Li, W., Hou, Q., and Cheng, Q. (2022). Cyber Hierarchy Multiscale Integrated Energy Management of Intelligent Hybrid Electric Vehicles. Automot. Innov., 1–15.
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