TY - JOUR PY - 2019// TI - Cooperative control of high-speed trains for headway regulation: a self-triggered model predictive control based approach JO - Transportation research part C: emerging technologies A1 - Xun, Jing A1 - Yin, Jiateng A1 - Liu, Ronghui A1 - Liu, Fan A1 - Zhou, Yang A1 - Tang, Tao SP - 106 EP - 120 VL - 102 IS - N2 - The advanced train-to-train and train-to-ground communication technologies equipped in high-speed railways have the potential to allow trains to follow each with a steady headway and improve the safety and performance of the railway systems. A key enabler is a train control system that is able to respond to unforeseen disturbances in the system (e.g., incidents, train delays), and to adjust and coordinate the train headways and speeds. This paper proposes a multi-train cooperative control model based on the dynamic features during train longitude movement to adjust train following headway. In particular, our model simultaneously considers several practical constraints, e.g., train controller output constraints, safe train following distance, as well as communication delays and resources. Then, this control problem is solved through a rolling horizon approach by calculating the Riccati equation with Lagrangian multipliers. Due to the practical communication resource constraints and riding comfort requirement, we also improved the rolling horizon approach into a novel self-triggered model predictive control scheme to overcome these issues. Finally, two case studies are given through simulation experiments. The simulation results are analyzed which demonstrate the effectiveness of the proposed approach.
Language: en
LA - en SN - 0968-090X UR - http://dx.doi.org/10.1016/j.trc.2019.02.023 ID - ref1 ER -