Optimal control of heavy haul train based on approximate dynamic programming

This research investigates the optimal control problem of heavy haul train for the minimization of longitudinal forces. As the heavy haul train is much heavier and longer than ordinary train, the in-train forces should be carefully manipulated to reduce the train’s maintenance cost and, most importa...

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Bibliographic Details
Main Authors: Xi Wang, Tao Tang, Hui He
Format: Article
Language:English
Published: SAGE Publishing 2017-04-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814017698110
Description
Summary:This research investigates the optimal control problem of heavy haul train for the minimization of longitudinal forces. As the heavy haul train is much heavier and longer than ordinary train, the in-train forces should be carefully manipulated to reduce the train’s maintenance cost and, most importantly, to ensure operation safety. Specifically, the limitations of pneumatically controlled braking system increase the need for the optimal control strategy to accounting for future grades, speed restrictions and uncertain disturbances. In this article, the stochastic dynamic programming model is adopt to set up a rigorous mathematical formulation for heavy haul train control, and approximate dynamic programming algorithm with lookup table representation is introduced to find the optimal solution of the considered problem. By handling the existed uncertainties in a mathematical way, the post-decision state variable is utilized to represent the state of the heavy haul train after we have made a control decision but before any exogenous information has arrived. Finally, the computational results demonstrate the effectiveness and performance of the proposed model and algorithm.
ISSN:1687-8140