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A rear-end collision prediction scheme based on deep learning in the Internet of Vehicles

机译:车联网中基于深度学习的追尾碰撞预测方案

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Recently, the deep learning schemes have been well investigated for improving the driving safety and efficiency in the transportation systems. In this paper, a probabilistic model named as CPGN (Collision Prediction model based on GA-optimized Neural Network) for decision-making in the rear-end collision avoidance system is proposed, targeting modeling the impact of important influential factors of collisions on the occurring probability of possible accidents in the Internet of Vehicles (IoV). The decision on how to serve the chauffeur is determined by a typical deep learning model, i.e., the BP neural network through evaluating the possible collision risk with V2I (Vehicle-to-Infrastructure) communication, V2V (Vehicle-to-Vehicle) communication and GPS infrastructure supporting. The proper structure of our BP neural network model is deeply learned with training data generated from VISSIM with multiple influential factors considered. In addition, since the selection of the connection coefficient array and thresholds of the neural network has great randomness, a local optimization issue is readily occurring during the modeling procedure. To overcome this problem and consider the ability to efficiently find out a global optimization, this paper chooses the genetic algorithm to optimize the coefficient array and thresholds of proposed neural network. For the purpose of enhancing the convergence speed of the proposed model, we further adjust the studying rate according to the relationship between the actual and predicated values of two adjacent iterations. Simulation results demonstrate that the proposed collision risk evaluation framework could offer rationale estimations to the possible collision risk in car-following scenarios for the next discrete monitoring interval.
机译:近年来,已经对深度学习方案进行了深入研究,以提高运输系统中的驾驶安全性和效率。本文针对后避撞系统中的决策问题,提出了一种概率模型CPGN(基于遗传算法优化神经网络的冲突预测模型)进行决策,其目标是建模碰撞的重要影响因素对事故发生的影响。车联网(IoV)中可能发生事故的可能性。如何为司机服务的决定由典型的深度学习模型(即BP神经网络)通过评估V2I(车辆对基础设施)通信,V2V(车辆对车辆)通信和GPS基础设施支持。我们使用VISSIM生成的训练数据深入考虑了我们的BP神经网络模型的正确结构,并考虑了多个影响因素。另外,由于连接系数阵列和神经网络阈值的选择具有很大的随机性,因此在建模过程中很容易出现局部优化问题。为了克服这个问题并考虑有效地找出全局优化的能力,本文选择遗传算法来优化所提出的神经网络的系数阵列和阈值。为了提高所提出模型的收敛速度,我们根据两个相邻迭代的实际值与预测值之间的关系进一步调整学习率。仿真结果表明,所提出的碰撞风险评估框架可以为下一个离散的监控间隔的跟车场景中的可能碰撞风险提供合理的估计。

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