Risk estimator for control in intelligent transportation system

D. Prokhorov
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引用次数: 5

Abstract

This paper introduces a two-level risk estimation system suitable to control in ITS. The top-level risk estimation is done on the basis of perceived risk associated with various driving situations and affected by weather, traffic and road conditions. The high-level risk estimation is then refined on the basis of real-time information about the vehicle surrounding, such as motions of other vehicles. The approach is illustrated on examples of maneuvers in which the risk is estimated via logic, lookup tables and neural networks.
智能交通系统控制的风险估计
本文介绍了一种适用于智能交通系统控制的两级风险评估系统。顶层风险评估是根据各种驾驶情况的感知风险进行的,并受天气、交通和道路状况的影响。然后,根据周围车辆的实时信息(如其他车辆的运动情况),对高水平的风险估计进行改进。该方法通过通过逻辑、查找表和神经网络来估计风险的演习实例加以说明。
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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