Reflection loss-based roadway water depth measurement for driver safety

Yi Geng, Ting Zeng
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Abstract

Flood fatalities generally occur in flood-prone areas such as low water bridges and tunnels, and most are vehiclerelated. The existing water depth measurement solutions are neither cost-efficient nor suitable for roadway scenarios. This paper proposes two water depth measurement methods that can be integrated into cellular networks. The proposed methods reuse the periodic communication signals of 5G and 6G to avoid allocating dedicated sensing signals and conflicting with the communication requirements. The main idea of these methods is based on the fact that the Reflection Loss (RL) induced by a water surface exhibits a strong dependence on the water depth. The peak counting method measures the water depth by counting the successive RL peaks separated by a constant spacing. The RL fingerprinting method integrates the RL peak positions and the measured RL values to determine the water depth. Several factors affecting the water depth measurement resolution are also analyzed. The simulation results show that the measurable water depth range of the proposed methods is larger than the water depth that may pose danger to vehicles, indicating that the proposed methods are feasible for roadway scenarios.
基于反射损耗的行车安全巷道水深测量
洪水死亡通常发生在洪水易发地区,如低水位桥梁和隧道,而且大多数与车辆有关。现有的水深测量解决方案既不具有成本效益,也不适合道路场景。本文提出了两种可以集成到蜂窝网络中的水深测量方法。本文提出的方法重用了5G和6G的周期性通信信号,避免了分配专用传感信号与通信需求相冲突。这些方法的主要思想是基于这样一个事实,即水面引起的反射损失(RL)对水深有很强的依赖性。峰值计数法通过计算间隔恒定的连续RL峰值来测量水深。RL指纹法将RL峰值位置与实测RL值相结合,确定水深。分析了影响水深测量分辨率的几个因素。仿真结果表明,所提方法的可测水深范围大于可能对车辆构成危险的水深范围,表明所提方法在道路场景下是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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