LSTM-PPO-Based Dynamic Scheduling Optimization for High-Speed Railways Under Blizzard Conditions

Severe snowstorms pose multiple threats to high-speed rail systems, including sudden drops in track friction coefficients, icing of overhead contact lines, and reduced visibility. These conditions can trigger dynamic risks such as train speed restrictions, cascading delays, and operational disruptio...

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Published in:Systems
Main Authors: Na Wang, Zhiyuan Cai, Yinzhen Li
Format: Article
Language:English
Published: MDPI AG 2025-10-01
Subjects:
Online Access:https://www.mdpi.com/2079-8954/13/10/884
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author Na Wang
Zhiyuan Cai
Yinzhen Li
author_facet Na Wang
Zhiyuan Cai
Yinzhen Li
author_sort Na Wang
collection DOAJ
container_title Systems
description Severe snowstorms pose multiple threats to high-speed rail systems, including sudden drops in track friction coefficients, icing of overhead contact lines, and reduced visibility. These conditions can trigger dynamic risks such as train speed restrictions, cascading delays, and operational disruptions. Addressing the limitations of traditional scheduling methods in spatio-temporal modeling during blizzards, real-time multi-objective trade-offs, and high-dimensional constraint solving efficiency, this paper proposes a collaborative optimization approach integrating temporal forecasting with deep reinforcement learning. A dual-module LSTM-PPO model is constructed using LSTM (Long Short-Term Memory) and PPO (Proximal Policy Optimization) algorithms, coupled with a composite reward function. This design collaboratively optimizes punctuality and scheduling stability, enabling efficient schedule adjustments. To validate the proposed method’s effectiveness, a simulation environment based on the Lanzhou-Xinjiang High-Speed Railway line was constructed. Experiments employing a three-stage blizzard evolution mechanism demonstrated that this approach effectively achieves a dynamic equilibrium among safety, punctuality, and scheduling stability during severe snowstorms. This provides crucial decision support for intelligent scheduling of high-speed rail systems under extreme weather conditions.
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spelling doaj-art-e7bb462b83a6449f8aacd7ab2407f1462025-10-28T16:58:44ZengMDPI AGSystems2079-89542025-10-01131088410.3390/systems13100884LSTM-PPO-Based Dynamic Scheduling Optimization for High-Speed Railways Under Blizzard ConditionsNa Wang0Zhiyuan Cai1Yinzhen Li2School of Traffic and Transportation, Lanzhou Jiaotong University, Lanzhou 730070, ChinaSchool of Traffic and Transportation, Lanzhou Jiaotong University, Lanzhou 730070, ChinaSchool of Traffic and Transportation, Lanzhou Jiaotong University, Lanzhou 730070, ChinaSevere snowstorms pose multiple threats to high-speed rail systems, including sudden drops in track friction coefficients, icing of overhead contact lines, and reduced visibility. These conditions can trigger dynamic risks such as train speed restrictions, cascading delays, and operational disruptions. Addressing the limitations of traditional scheduling methods in spatio-temporal modeling during blizzards, real-time multi-objective trade-offs, and high-dimensional constraint solving efficiency, this paper proposes a collaborative optimization approach integrating temporal forecasting with deep reinforcement learning. A dual-module LSTM-PPO model is constructed using LSTM (Long Short-Term Memory) and PPO (Proximal Policy Optimization) algorithms, coupled with a composite reward function. This design collaboratively optimizes punctuality and scheduling stability, enabling efficient schedule adjustments. To validate the proposed method’s effectiveness, a simulation environment based on the Lanzhou-Xinjiang High-Speed Railway line was constructed. Experiments employing a three-stage blizzard evolution mechanism demonstrated that this approach effectively achieves a dynamic equilibrium among safety, punctuality, and scheduling stability during severe snowstorms. This provides crucial decision support for intelligent scheduling of high-speed rail systems under extreme weather conditions.https://www.mdpi.com/2079-8954/13/10/884railway transportationdynamic scheduling for high-speed railwaysLSTM-PPO algorithmblizzard conditionsdelay propagationmulti-objective optimization
spellingShingle Na Wang
Zhiyuan Cai
Yinzhen Li
LSTM-PPO-Based Dynamic Scheduling Optimization for High-Speed Railways Under Blizzard Conditions
railway transportation
dynamic scheduling for high-speed railways
LSTM-PPO algorithm
blizzard conditions
delay propagation
multi-objective optimization
title LSTM-PPO-Based Dynamic Scheduling Optimization for High-Speed Railways Under Blizzard Conditions
title_full LSTM-PPO-Based Dynamic Scheduling Optimization for High-Speed Railways Under Blizzard Conditions
title_fullStr LSTM-PPO-Based Dynamic Scheduling Optimization for High-Speed Railways Under Blizzard Conditions
title_full_unstemmed LSTM-PPO-Based Dynamic Scheduling Optimization for High-Speed Railways Under Blizzard Conditions
title_short LSTM-PPO-Based Dynamic Scheduling Optimization for High-Speed Railways Under Blizzard Conditions
title_sort lstm ppo based dynamic scheduling optimization for high speed railways under blizzard conditions
topic railway transportation
dynamic scheduling for high-speed railways
LSTM-PPO algorithm
blizzard conditions
delay propagation
multi-objective optimization
url https://www.mdpi.com/2079-8954/13/10/884
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