首页> 外文期刊>Engineering Applications of Artificial Intelligence >Real time regulation of efficient driving of high speed trains based on a genetic algorithm and a fuzzy model of manual driving
【24h】

Real time regulation of efficient driving of high speed trains based on a genetic algorithm and a fuzzy model of manual driving

机译:基于遗传算法和人工驾驶模糊模型的高速列车高效驾驶实时调节

获取原文
获取原文并翻译 | 示例
           

摘要

Nowadays one of the main priorities for railways administrations and operators is the reduction of energy consumption, due to its impact on CO_2 emissions and economic costs. This is especially important on high speed lines, in expansion in many countries, given that very high levels of consumption are involved. Energy saving strategies focused on traffic operation can be applied in the short term with low levels of investment, in particular ecodriving, timetable design and the on line regulation of trains. However approaches in the literature to minimize energy do not normally consider specific models for manual driving in high speed lines and the commercial punctuality constraints of this type of services, and do not take into account the uncertainty associated with manual driving. The aim of this paper is the on line regulation of high speed trains recalculating the energy efficient manual driving to be executed by the driver when significant delays arise. The manual driving is modeled by means of fuzzy parameters: the speed regulation and the response time of the driver when a new driving command has to be applied. The punctuality requirement of the railway operator is represented as a necessity fuzzy measure of punctual arrival at stations. The proposed method for the on line recalculation of efficient driving is a Genetic Algorithm with fuzzy parameters based on an accurate simulation of the train motion. This algorithm is applied on a real Spanish high speed line to assess the energy savings provided by the efficient regulation algorithm compared to the typical driving style that is applied when a train has to get back on schedule after a delay.
机译:如今,由于减少了对CO_2排放和经济成本的影响,减少能源消耗是铁路管理和运营商的主要优先事项之一。考虑到非常高的消费水平,这在许多国家的高速线路上尤其重要。专注于交通运营的节能策略可以在短期内以较低的投资水平应用,尤其是节能驾驶,时间表设计和火车的在线监管。然而,文献中将能量最小化的方法通常没有考虑用于高速线路中的手动驾驶的特定模型以及这种类型的服务的商业准点约束,并且没有考虑与手动驾驶相关的不确定性。本文的目的是对高速列车进行在线调节,从而在出现重大延误时重新计算驾驶员要执行的节能手动驾驶。手动驾驶是通过模糊参数建模的:需要应用新的驾驶命令时的速度调节和驾驶员的响应时间。铁路运营商的守时要求被表示为准时到达车站的必要性模糊度量。所提出的用于高效驾驶的在线重新计算的方法是基于列车运动的精确仿真的具有模糊参数的遗传算法。与火车在延迟后必须按时返回时所采用的典型驾驶方式相比,该算法在西班牙高速铁路上应用,以评估高效调节算法所提供的节能效果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号