Real Time Planning Algorithm of Automatic Train Driving Based on Global Optimization

Journal Title: Urban Mass Transit - Year 2024, Vol 27, Issue 6

Abstract

Objective The existing target speed planning algorithm for the automatic driving of urban rail transit train cannot handle in real time the temporary change of the line speed limit in case of emergency due to the large computational load and long computation time. With regard to the problem, a real-time target speed planning algorithm based on global optimization is proposed to generate the speed planning curve in real time. Method Based on the conditions of train current position, current speed and speed limit of the forward line, the speed planning curve is firstly generated in the shortest time through point by point calculation. Then the traction and braking levels are being adjusted to keep the train running at uniform acceleration or deceleration, optimizing the comfort index of the train running. Next, the cruising speed in the maximum speed limit section is adjusted to reduce unnecessary traction and braking time, optimizing the energy consumption index of the train running. Finally, the train speed planning curve is output. Result & Conclusion The simulation results show that the real-time speed planning curve generated by the proposed algorithm satisfies the basic constraints of safety, punctuality and accurate parking. Compared with the traditional algorithm, it improves the comfort level and reduces the energy consumption during train operation. Meanwhile, the proposed algorithm can effectively handle the temporary change of the line speed limit in emergency and optimize several operation indicators.

Authors and Affiliations

Kai WANG, Libo SONG, Runkai HUA, Qinyue ZHU

Keywords

Related Articles

Advanced Prediction Method for Shield Tunneling Cutterhead Torque Based on WaveNet Network

Objective Cutterhead torque is a crucial parameter that characterizes the safety of shield tunneling and the operating status of equipment. To address the difficulties in cutterhead torque prediction and excavation param...

Coasting-cruising Combined Control Strategy Based on Train Energy-efficient Operation

Objective Current train operation control system incorporates an automatic driving subsystem, enabling train cruising control. To further reduce train operational energy consumption while maintaining service quality, it...

Maintenance Strategy Optimization of Urban Rail Transit OCS Based on Intelligent Operation and Maintenance

Objective With the development of the intelligence technology and the building of intelligent operation and maintenance platform for urban rail transit overhead catenary/collector system (OCS), the operation and mainte...

Defect Detection Model for Catenary Components in Environments with Few Samples and Small Targets

[Objective] Aiming at the difficulties of detecting small-volume parts of rail transit catenary under few-sample conditions, a defect detection method integrating generative adversarial networks and deep segmentation m...

Fire Hazard Analysis and Application in Trains

Objective Fire accidents are major safety hazards in metro operation. To reduce fire hazards to an acceptable level and ensure the safe operation of trains, the research is specifically carried out. Method The safety ana...

Download PDF file
  • EP ID EP737737
  • DOI 10.16037/j.1007-869x.2024.06.008
  • Views 34
  • Downloads 0

How To Cite

Kai WANG, Libo SONG, Runkai HUA, Qinyue ZHU (2024). Real Time Planning Algorithm of Automatic Train Driving Based on Global Optimization. Urban Mass Transit, 27(6), -. https://europub.co.uk/articles/-A-737737