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Application of Genetic Algorithms for Driverless Subway Train Energy Optimization

机译:遗传算法在无人驾驶地铁能量优化中的应用

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摘要

After an introduction on the basic aspects of electric railway transports, focusing mainly on driverless subways and their related automation systems (ATC, ATP, and ATO), a technique for energy optimization of the train movement through their control using genetic algorithms will be presented. Genetic algorithms are a heuristic search and iterative stochastic method used in computing to find exact or approximate solutions to optimization problems. This optimization process has been calculated and tested on a real subway line in Milan through the implementation of a dedicated Matlab code. The so-defined algorithm provides the optimization of the trains movement through a coast control table created by the use of a genetic algorithm that minimizes the energy consumption and the train scheduled time. The obtained results suggest that the method is promising in minimizing the energy consumption of the electric trains.
机译:在介绍了铁路电气运输的基本方面之后,主要集中在无人驾驶地铁及其相关的自动化系统(ATC,ATP和ATO)上,将提出一种通过遗传算法控制列车运行能量的技术。遗传算法是一种启发式搜索和迭代随机方法,用于计算中,以找到优化问题的精确或近似解。通过实施专用的Matlab代码,已经在米兰的真实地铁线上计算并测试了此优化过程。如此定义的算法通过使用遗传算法创建的滑行控制表来优化列车的运动,该遗传控制算法使能耗和列车调度时间最小化。所得结果表明该方法在使电车的能量消耗最小化方面是有希望的。

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