论文标题

基于高原环境中地铁司机的多参数生命体征对城市铁路运营的实时监测和预警分析

Real-time Monitoring and Early Warning Analysis of Urban Railway Operation Based on Multi-parameter Vital Signs of Subway Drivers in Plateau Environment

论文作者

Sun, Zhiqiang, Jiang, Chaozhe, Lu, Yongjie, Wen, Chao, Yu, Xiaozuo, Yimer, Tesfaya Hailemariam

论文摘要

为了确保高原环境中铁路运输的驾驶员和乘客的人身安全,将驾驶员和乘客的生命体征和火车状况作为研究对象,并研究和分析了它们之间的动态关系。在本文中,在正常操作条件下的地铁驱动器被视为建立生命体征监测和预警系统的研究对象。地铁驱动器的生命体征数据,例如心率(HR),呼吸率(RR),体温(T)和地铁驱动器的血氧饱和度(SPO2),由头部安装的传感器收集,以及最小的均值平方自适应过滤算法,用于预读数据和消除互相信息。基于改进的BP(后代传播)神经网络算法,建立了一个预测模型,以实时预测地铁驱动器的生命体征。我们使用预警评分评估方法来衡量地铁驾驶员生命体征的风险,然后可以向控制中心的调度员提供必要的判断基础。实验表明,本文开发的系统可以准确预测地铁驱动因素的生命体征的演变,并及时警告异常状态。生命体征的预测值与实际值一致,并且预测的绝对误差小于允许范围内的0.5。

In order to ensure the personal safety of the drivers and passengers of rail transit in plateau environment, the vital signs and train conditions of the drivers and passengers are taken as the research object, and the dynamic relationship between them is studied and analyzed. In this paper, subway drivers under normal operation conditions are taken as research objects to establish the vital signs monitoring and early warning system. The vital signs data of the subway drivers, such as heart rate (HR), respiratory rate (RR), body temperature (T) and blood oxygen saturation (SPO2) of the subway driver are collected by the head-mounted sensor, and the least mean square adaptive filtering algorithm is used to preprocess the data and eliminate the interference information. Based on the improved BP (Back Propagation) neural network algorithm, a prediction model is established to predict the vital signs of subway drivers in real-time. We use the early warning score evaluation method to measure the risk of subway drivers' vital signs, and then the necessary judgment basis can be provided to dispatchers in the control center. Experiments show that the system developed in this paper can accurately predict the evolution of subway drivers' vital signs, and timely warn the abnormal states. The predicted value of vital signs is consistent with the actual value, and the absolute error of prediction is less than 0.5 which is within the allowable range.

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