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A comparative study on machine learning algorithms for green context-aware intelligent transportation systems

机译:绿色上下文感知智能交通系统机器学习算法的比较研究

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In this work, a green adaptive transportation decision system is proposed for choosing the best transportation route calculated for different means of transportation (train, metro and bus) to reach a certain destination at time t. This selection will be based on significant parameters like CO2 emissions of these transport means, travel duration, ticket tariff, waiting connection time to catch such a transport mean, connection time between the different transport means to reach the destination, and comfortability feedback. Q-Learning, a reinforcement learning technique based reward is applied for validating the first phase in this work. The second contribution is to build the prediction of the best transport route by using Support Vector Machine (SVM) learning techniques.
机译:在这项工作中,提出了一种绿色的自适应交通决策系统,用于选择为不同的交通工具(火车,地铁和公共汽车)计算的最佳交通路线,以在时间t到达某个目的地。该选择将基于这些运输工具的重要参数,例如CO 2 的排放量,行驶时间,车票费率,等待此类运输工具的等待连接时间,不同运输工具之间到达该运输工具的连接时间。目的地和舒适度反馈。 Q-Learning是一种基于强化学习技术的奖励,可用于验证该工作的第一阶段。第二个贡献是通过使用支持向量机(SVM)学习技术来建立最佳运输路线的预测。

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