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Educational Driving Through Intelligent Traffic Simulation

机译:通过智能交通仿真进行教育驾驶

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Modelling driving dynamics in experimental educational scenarios represents a key enhancement of a SMART city, where citizen-oriented politics promote traffic rules knowledge retention and awareness. We propose an instructional design of mapping simulations of real-world urban networks as use cases for practicing traffic rules. Traffic simulations have been implemented through Reinforcement Learning agents, using a modified Policy Proximal Optimization (PPO) strategy, demonstrating a good sample efficiency. The proposed objective function and the selected policy positive and negative rewards empower the car agent to reach a predefined destination, from a predefined start position, while adapting to the route line. Results validate the applicability of the proposed approach to educational simulations, within a generic gamified environment. The approach proposes a further extension towards adaption to complex lane design (e.g. traffic signs) and player's in-game behavior.
机译:在实验性教育情景中对驾驶动态进行建模代表了SMART城市的一项关键增强功能,在该城市中,以公民为导向的政治促进了交通规则的知识保留和认知。我们建议对现实世界中的城市网络进行映射模拟的教学设计,作为实践交通规则的用例。通过强化学习代理,使用修改后的策略近邻优化(PPO)策略已实现了流量模拟,证明了良好的样本效率。拟议的目标函数和选择的策略正负奖励使汽车代理商能够从预定的起始位置到达预定的目的地,同时适应路线。结果证明了在通用游戏化环境中所提出的方法在教育模拟中的适用性。该方法建议进一步扩展以适应复杂的车道设计(例如交通标志)和玩家的游戏行为。

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