Eco-Driving for Metro Trains: A Computationally Efficient Approach Using Convex Programming
Journal article, 2023

Eco-driving for trains has traditionally focused on minimizing mechanical energy consumption at wheels, while completely ignoring traction chain losses that are rather significant. This paper presents a computationally efficient approach to minimize the total electrical energy consumption from traction substations (TS). After a nonlinear and non-convex program is formulated in time domain, a nonlinear and non-convex program is formulated in space domain to overcome the drawbacks of the model in time domain. By convex modeling steps, the non-convex program in space domain is reformulated as a convex program that can be efficiently solved. To further reduce computational effort, a real-time iteration sequential quadratic programming (SQP) algorithm is proposed to solve the convex program in a model predictive control framework. Numerical results indicate that the proposed SQP method yields a near-optimal solution with high computational efficiency. Compared to a traditional mechanical energy consumption model, a TS-to-traction energy efficiency can be improved.

Inverters

Force

Computational efficiency

Voltage

Traction motors

Computational modeling

energy-efficient driving

Energy consumption

model predictive control

convex modeling

Urban rail transit

Author

Zhuang Xiao

Southwest Jiaotong University

Nikolce Murgovski

Chalmers, Electrical Engineering, Systems and control

Mo Chen

Southwest Jiaotong University

Xiaoyun Feng

Southwest Jiaotong University

Qingyuan Wang

Southwest Jiaotong University

Pengfei Sun

Southwest Jiaotong University

IEEE Transactions on Vehicular Technology

0018-9545 (ISSN) 1939-9359 (eISSN)

Vol. 72 8 10063-10076

Subject Categories

Applied Mechanics

Vehicle Engineering

Control Engineering

DOI

10.1109/TVT.2023.3262345

More information

Latest update

3/7/2024 9