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Precise vehicle location as a fundamental parameter for intelligent self-aware rail-track maintenance systems

机译:精确的车辆位置作为智能自智轨道轨道维护系统的基本参数

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The rail industry in the UK is undergoing substantial changes in response to a modernisation vision for 2040. Development and implementation of these will lead to a highly automated and safe railway. Real-time regulation of traffic will optimise the performance of the network, with trains running in succession within an adjacent movable safety zone. Critically, maintenance will use intelligent trainborae and track-based systems. These will provide accurate and timely information for condition based intervention at precise track locations, reducing possession downtime and minimising the presence of workers in operating railways. Clearly, precise knowledge of trains' real-time location is of paramount importance. The positional accuracy demand of the future railway is less than 2m. A critical consideration of this requirement is the capability to resolve train occupancy in adjacent tracks, with the highest degree of confidence. A finer resolution is required for locating faults such as damage or missing parts, precisely. Location of trains currently relies on track signalling technology. However, these systems mostly provide an indication of the presence of trains within discrete track sections. The standard Global Navigation Satellite Systems (GNSS), cannot precisely and reliably resolve location as required either. Within the context of the needs of the future railway, state of the art location technologies and systems were reviewed and critiqued. It was found that no current technology is able to resolve location as required. Uncertainty is a significant factor. A new integrated approach employing complimentary technologies and more efficient data fusion process, can potentially offer a more accurate and robust solution. Data fusion architectures enabling intelligent self-aware rail-track maintenance systems are proposed.
机译:英国的铁路行业正在对2040年的现代化愿景进行大量变化。发展和实施这些将导致一个高度自动化和安全的铁路。实时调节交通将优化网络的性能,其中列车在相邻的可移动区域内连续运行。批判性地,维护将使用智能训练堡和基于轨道的系统。这些将在精确的轨道位置提供准确和及时的信息,以便在精确的轨道位置进行条件干预,减少占有停机时间,并最大限度地减少工人在运营铁路中的存在。显然,对火车的实时位置的精确了解是至关重要的。未来铁路的位置准确性需求小于2米。对这一要求的批判性考虑是能够在相邻轨道中解析火车占用的能力,具有最高的自信心。精确定位损坏或丢失部件等故障所需的更精细的分辨率。列车的位置目前依赖于轨道信号技术。然而,这些系统主要提供离散轨道部分内的列车存在的指示。标准的全局导航卫星系统(GNSS)不能精确地且可靠地解决所需位置。在未来铁路需求的背景下,审查和批评了最先进的地位技术和系统。发现没有当前技术能够根据需要解决位置。不确定性是一个重要因素。一种采用免费技术和更高效的数据融合过程的新综合方法,可能会提供更准确和强大的解决方案。提出了能够实现智能自智轨道轨道维护系统的数据融合架构。

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