TY - JOUR
T1 - Practical Intelligent Automatic Train Operations which Optimize Switching Times Autonomously
AU - Liu, Xiaoshuang
AU - Zhou, Jinjie
AU - Men, Yuanhao
AU - Pan, Limin
AU - Luo, Senlin
N1 - Publisher Copyright:
© The Author(s) 2025
PY - 2025
Y1 - 2025
N2 - Automatic train operation (ATO) is gradually replacing manual driving because of its reliable operation on both high-speed railways and urban metro systems. However, several existing methods rely on a substantial amount of expert knowledge and real data to simulate train operations, resulting in limited flexibility and scalability. Additionally, given train depreciation or wear, certain algorithms may not always be adaptive, leading to potential strain on the braking system and compromised riding comfort. To this end, this paper proposes a novel Meta-ATO approach based on meta-learning and reinforcement learning, which was successfully applied to the real-world case of Xi’an Metro Line 9. Specifically, the meta-gradient boosting (MGB) method is presented to construct a high-fidelity simulation operating environment with fewer data. Meta-ATO enables trains to quickly perceive actual conflicts among multiple objectives and set control parameters through reinforcement learning. Based on this knowledge, a train can adjust its control strategy autonomously and optimize switching times. The results indicate that Meta-ATO provides good riding comfort, precise parking, and low energy consumption. Moreover, it no longer requires periodic adjustment by human experts, as it can optimize its control strategy and operations autonomously.
AB - Automatic train operation (ATO) is gradually replacing manual driving because of its reliable operation on both high-speed railways and urban metro systems. However, several existing methods rely on a substantial amount of expert knowledge and real data to simulate train operations, resulting in limited flexibility and scalability. Additionally, given train depreciation or wear, certain algorithms may not always be adaptive, leading to potential strain on the braking system and compromised riding comfort. To this end, this paper proposes a novel Meta-ATO approach based on meta-learning and reinforcement learning, which was successfully applied to the real-world case of Xi’an Metro Line 9. Specifically, the meta-gradient boosting (MGB) method is presented to construct a high-fidelity simulation operating environment with fewer data. Meta-ATO enables trains to quickly perceive actual conflicts among multiple objectives and set control parameters through reinforcement learning. Based on this knowledge, a train can adjust its control strategy autonomously and optimize switching times. The results indicate that Meta-ATO provides good riding comfort, precise parking, and low energy consumption. Moreover, it no longer requires periodic adjustment by human experts, as it can optimize its control strategy and operations autonomously.
KW - artificial intelligence
KW - artificial intelligence and advanced computing applications
KW - data and data science
KW - rail
KW - railroad infrastructure design and maintenance
KW - reinforcement learning
KW - trains
UR - https://www.scopus.com/pages/publications/105019359410
U2 - 10.1177/03611981251337670
DO - 10.1177/03611981251337670
M3 - Article
AN - SCOPUS:105019359410
SN - 0361-1981
JO - Transportation Research Record
JF - Transportation Research Record
M1 - 03611981251337670
ER -