智能铁路信号系统轨道布局建模:机器学习应用

Y. Baviskar, U. Suryawanshi, A. Sheikh
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引用次数: 2

摘要

铁路信号领域是一个复杂的关键基础设施,连接通信和许多控制元件。确保铁路信号系统的安全一直被认为是铁路正常运行的保障。目前的信号系统由集中控制器组成,这些控制器提供了联锁和水平交叉控制等单一功能。印度铁路(IR)使用面板联锁(PI),路线继电器联锁(RRI)和固态联锁(SSI)或电子联锁(EI)来保证信号安全,然而,允许火车的运动取决于人类的手中。主要的挑战是结合多个数据源并定义一个可以增强系统功能的系统。本文的重点是开发一个自动化模型,有利于智能信令系统(ISS)。评估其做出决定的能力,根据时间表授权列车运行,并根据使用机器学习(ML)的实时信息对其进行修改。在建模方面,考虑了红外标准单线站点布局,并采用了基于图形模型的设计技术。在分析时,将轨道段作为节点,信号作为起点和终点,与特定路线相连接,并对开发的模型进行各种操作场景的评估,严格检查完整性和一致性。在铁路网中实施这种系统不仅将为铁路运输提供全面的安全水平,而且还将朝着将各种方法和策略系统化迈出一步,例如重新调度系统,使用ML在一个屋檐下监控性能
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Modelling of Track Layout for Intelligent Railway Signalling System: A Machine Learning Application
The railway signalling domain is a complex critical infrastructure, linking communication and number of control elements. Ensuring safety in railway signalling system is always considered as a guarantee of intact operation of the railway. Current signalling system composes of centralized controllers which provide a single feature such as interlocking, and level crossing control. The Indian Railways (IR) uses Panel Interlocking (PI), Route Relay Interlocking (RRI), and Solid State Interlocking (SSI) or Electronic Interlocking (EI) for signalling safety, however, permitting movement of the trains lies in the hands of a human. The main challenge is to combine multiple sources of data and define a system which can intensify the functionality of the system. This paper mainly focuses on development of an automated model, beneficial to Intelligent Signalling System (ISS). Assessing its ability to take a decision which authorizes the movement of trains according to the timetable and modify it depending on real-time information using Machine Learning (ML). For modelling, IR standard single line station layout is considered and graphical model-based design techniques are implied. For analysis consider the track sections as nodes, signals as the start point and the end point linked to specific routes and assessing the developed model for various operating scenarios keeping a strict check on completeness and consistency. Implementation of such system in the railway network will not only provide a comprehensive level of safety in railway transportation but also takes a step forward towards systematizing various methods and strategies such as rescheduling system, monitoring performance under one roof using ML
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