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Determining the optimum installation of energy storage systems in railway electrical infrastructures by means of swarm and evolutionary optimization algorithms

机译:通过Swarm和进化优化算法确定铁路电气基础设施中储能系统的最佳安装

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The installation of wayside Energy Storage Systems (ESSs) in DC-electrified railway systems is one of the main measures to improve their energy efficiency. They store the excess of regenerated energy produced by the trains during the braking phases and give it back to the system when necessary. Nevertheless, the big cost of the associated installation can make railway operators hesitate about the convenience of the investment. Additionally, the decisions about the configuration of the installation (locations and sizes for the ESSs) are usually based on the previous experience of the railway operators or, at best, in assessments made with simulation tools with low accuracy.This paper proposes a model to optimize the profitability of the investment. Nature-inspired optimization algorithms are applied in combination with a very realistic railway simulator. The flexibility of the natureinspired optimization algorithms, together with their ability to successfully deal with the computationally-intensive and highly non-linear and non-convex problem posed by the realistic railway simulator, makes them the perfect choice.Three different nature-inspired optimization algorithms have been selected and compared: the Genetic Algorithm (GA) as the main exponent of the evolutionary algorithms, the Particle Swarm Optimization algorithm (PSO) as the main exponent of the swarm algorithms and the Fireworks Algorithm (FA) as another variant of the swarm algorithms. The algorithms have shown an excellent behavior, providing solutions that combine the increase of energy efficiency with a very good profitability of the installation required to obtain that increase.
机译:DC电气化铁路系统中的航路能量存储系统(ESS)的安装是提高其能效的主要措施之一。它们在制动阶段期间存储由列车产生的过量的再生能量,并在必要时将其送回系统。尽管如此,相关安装的大成本可以使铁路运营商犹豫不决投资的便利性。此外,关于安装(ESS的位置和尺寸)的决定通常基于铁路运营商的先前经验,或者充其至上,使用具有低精度的仿真工具进行的评估。本文提出了一种模型优化投资的盈利能力。自然启发的优化算法与一个非常现实的铁路模拟器组合应用。 NatureinSpired优化算法的灵活性以及他们成功地处理了现实铁路模拟器构成的计算密集和高度非线性和非凸面的能力,使其成为完美的选择。三种不同的自然启发优化算法已被选中和比较:遗传算法(GA)作为进化算法的主要指数,粒子群优化算法(PSO)作为群体算法的主要指数和烟花算法(FA)作为群体的另一个变体算法。该算法显示出优异的行为,提供了将能源效率提高的解决方案,以获得增加的安装的非常好的盈利能力。

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