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A review of deep learning models for traffic flow prediction in Autonomous Vehicles

机译:自动车辆交通流预测深层学习模型综述

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More and more rapid development has been seen in the last decade in self-driving car technologies, mostly developments in the field of machine learning and deep learning. The goal of the paper is to review the latest state of the art in the area of automated driving by using machine learning technologies. For autonomous vehicle usage the estimation of traffic flows is necessary and they agree to make changes about their relevant artefacts (e.g., turn left or correct, travel straight, shift direction, stop or speed). Work on autonomous vehicles has been seen from the current paper on machine learning methods. Moreover, the non-linear dynamic relationship between spatial and temporal data obtained from the surroundings at the previously described adaptive decision-making periods by vehicles does not extend explicitly to current machine learning models in this context. Throughout this paper, we discussed the learning models for autonomous vehicle traffic flux prediction throughout order to equate such models with their applicability in contemporary intelligent transport systems. In comparison, the paper further addresses problems and possible recommendations for science.
机译:在自动驾驶汽车技术的最后十年中,在过去的十年中得到了越来越快的发展,主要是机器学习领域的发展和深度学习。本文的目标是通过使用机器学习技术审查自动化领域的最新技术。对于自动车辆使用,使用交通流量的估计是必要的,他们同意改变他们的相关人工制品(例如,左转或纠正,行进直,换档方向,停止或速度。从目前的机器学习方法上看了自动车辆的工作。此外,通过在车辆前面描述的自适应决策周期从周围环境获得的空间和时间数据之间的非线性动态关系不明确地当前的机器学习模型在这种情况下延伸。在本文中,我们讨论了自动车辆交通通量预测的学习模型,以使这些模型在当代智能运输系统中等同于它们的适用性。相比之下,本文进一步解决了科学的问题和可能的建议。

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