首页> 外文会议>ASME joint rail conference >A NEW RAILYARD SAFETY APPROACH FOR DETECTION AND TRACKING OF PERSONNEL AND DYNAMIC OBJECTS USING SOFTWARE-DEFINED RADAR
【24h】

A NEW RAILYARD SAFETY APPROACH FOR DETECTION AND TRACKING OF PERSONNEL AND DYNAMIC OBJECTS USING SOFTWARE-DEFINED RADAR

机译:使用软件定义的雷达检测和跟踪人员和动态对象的一种新的Riallyard安全方法

获取原文

摘要

In a typical railyard environment, a myriad of large and dynamic objects pose significant risks to railyard workers. Unintentional falls, trips and collisions with dynamic rolling stock due to distractions or lack of situational awareness are an unfortunate reality in modern railyards. The challenges of current technologies in detecting and tracking multiple differently-sized mobile objects in situations such as ⅰ) one-on-one, ⅱ) many-to-one, ⅲ) one-to-many, ⅳ) blind spot, and ⅴ) interferingon-interfering separation creates the possibility for reduction or loss of situational awareness in this fast-paced environment. The simultaneous tracking of assets with different size, velocity and material composition in different working and environmental conditions can only be accomplished through joint infrastructure-based asset discovery and localization sensors that cause no interference or impediment to the railyard workers, and which are capable of detecting near-misses as well. Our team is investigating the design and performance of such a solution, and is currently focusing on the innovative usage of lightweight low-cost RADAR under different conditions that are expected to be encountered in railyards across North America. We are employing Ancorteks 580-AD Software Defined RADAR (SDRadar) system, which operates at the license-free frequency of 5.8 GHz and with a variety of different configuration options that make it well-suited for generalized object tracking. The challenges, however, stem from the unique interplay between tracking large metallic objects such as railcars, locomotives, and trucks, as well as smaller objects such as railyard workers, in particular their robust discernment from each other. Our design's higher-level system can interact with the lower-level SDRadar design to change the parameters in real-time to detect and track large objects over significant distances. The algorithm optimally adjusts waveform, sweep time and sample rate based on one or multiple detected object cross-sections and subsequently alters these parameters to be able to discern other objects from them that are in close proximity. We also use an ensemble method to determine the velocity and distance of target objects to accurately track the subject and larger objects at a distance. The methodology has been field-tested with several test cases in a multitude of weather and lighting conditions. We have also tested the proper height, azimuth and elevation angles for positioning our SDRadar to alleviate the risk of blind spots and enhancing the detection and tracking capabilities of our algorithm. The approach has outperformed our previous tests using visual and acoustic sensors for detection and tracking railroad workers in terms of accuracy and operating flexibility. In this paper, we discuss the details of our proposed approach and present our results from the field tests.
机译:在典型的铁路场环境中,无数大型动态物体对铁路场工人构成了重大风险。在现代铁路车站,由于分散注意力或缺乏态势感知而导致的意外跌落,绊倒和与动态机车的碰撞是不幸的现实。当前技术在以下情况下检测和跟踪多个不同大小的移动对象所面临的挑战:ⅰ)一对一、,)多对一,ⅲ)一对多,ⅳ)盲点和ⅴ )干扰/非干扰分离在这种快节奏的环境中为减少或丧失态势感知创造了可能性。只有在基于联合基础设施的资产发现和定位传感器的配合下,才能同时跟踪具有不同大小,速度和材料成分的资产,这些资产不会对场站工作人员造成干扰或阻碍,并且能够检测差错也是如此。我们的团队正在研究这种解决方案的设计和性能,并且目前专注于在北美铁路场预计会遇到的不同条件下轻量级低成本RADAR的创新使用。我们正在使用Ancorteks 580-AD软件定义的雷达(SDRadar)系统,该系统以5.8 GHz的免许可频率运行,并具有多种不同的配置选项,使其非常适合于广义对象跟踪。然而,挑战源于跟踪大型金属物体(如铁路车,机车和卡车)以及较小的物体(如铁路工人)之间的独特相互作用,尤其是它们彼此之间的强大区分能力。我们设计的较高级别的系统可以与较低级别的SDRadar设计进行交互,以实时更改参数,以检测和跟踪较大距离内的大型物体。该算法根据一个或多个检测到的对象横截面来最佳地调整波形,扫描时间和采样率,然后更改这些参数以能够从彼此接近的其他对象中识别出其他对象。我们还使用合奏方法确定目标物体的速度和距离,以精确地跟踪目标物体和较大距离的物体。该方法已在多种天气和光照条件下通过几个测试案例进行了现场测试。我们还测试了合适的高度,方位角和仰角,以定位SDRadar,以减轻盲点风险并增强算法的检测和跟踪能力。在准确性和操作灵活性方面,该方法的性能优于我们以前使用视觉和声音传感器检测和跟踪铁路工人的测试。在本文中,我们讨论了我们提出的方法的细节,并提出了来自现场测试的结果。

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