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移动表面上天气降水强度建模及其在自动驾驶车辆中的应用

Modelling Weather Precipitation Intensity on Surfaces in Motion with Application to Autonomous Vehicles.

作者信息

Carvalho Mateus, Hangan Horia

机构信息

Department of Mechanical Engineering, Ontario Tech University, Oshawa, ON L1G 0C5, Canada.

出版信息

Sensors (Basel). 2023 Sep 22;23(19):8034. doi: 10.3390/s23198034.

Abstract

With advances in the development of autonomous vehicles (AVs), more attention has been paid to the effects caused by adverse weather conditions. It is well known that the performance of self-driving vehicles is reduced when they are exposed to stressors that impair visibility or cause water or snow accumulation on sensor surfaces. This paper proposes a model to quantify weather precipitation, such as rain and snow, perceived by moving vehicles based on outdoor data. The modeling covers a wide range of parameters, such as varying the wind direction and realistic particle size distributions. The model allows the calculation of precipitation intensity on inclined surfaces of different orientations and on a circular driving path. The modeling results were partially validated against direct measurements carried out using a test vehicle. The model outputs showed a strong correlation with the experimental data for both rain and snow. Mitigation strategies for heavy precipitation on vehicles can be developed, and correlations between precipitation rate and accumulation level can be traced using the presented analytical model. A dimensional analysis of the problem highlighted the critical parameters that can help the design of future experiments. The obtained results highlight the importance of the angle of the sensing surface for the perceived precipitation level. The proposed model was used to analyze optimal orientations for minimization of the precipitation flux, which can help to determine the positioning of sensors on the surface of autonomous vehicles.

摘要

随着自动驾驶汽车(AVs)的发展,不利天气条件所造成的影响受到了更多关注。众所周知,当自动驾驶车辆暴露于损害能见度或导致传感器表面积水或积雪的应激源时,其性能会降低。本文基于室外数据提出了一个模型,用于量化行驶车辆所感知到的降雨和降雪等天气降水情况。该建模涵盖了广泛的参数,例如改变风向和实际颗粒大小分布。该模型能够计算不同方向倾斜表面以及圆形行驶路径上的降水强度。建模结果通过使用测试车辆进行的直接测量得到了部分验证。模型输出结果显示,降雨和降雪的模型输出与实验数据均具有很强的相关性。可以制定车辆应对强降水的缓解策略,并且利用所提出的分析模型可以追踪降水速率与积雪水平之间的相关性。对该问题的量纲分析突出了有助于设计未来实验的关键参数。所获得的结果凸显了传感表面角度对于所感知降水水平的重要性。所提出的模型用于分析使降水通量最小化的最佳方向,这有助于确定自动驾驶车辆表面传感器的位置。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6480/10575205/c3a910a98f5a/sensors-23-08034-g001.jpg

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