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Smoothening for Efficient Solution of Model Predictive Control for Urban Traffic Networks Considering Endpoint Penalties

机译:考虑终点惩罚的城市交通网络模型预测控制高效解决方案的平滑处理

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Traffic congestion together with emissions has become a big problem in urban areas. Traffic-responsive control systems aim to make the best use of the existing road capacity. Here, we propose a model-predictive controller for urban traffic networks, where the goal of the control is to find a balanced trade-off between reduction of congestion and emissions. The cost function is defined as a weighted combination of the total time spent, TTS, (as a criterion for evaluating the congestion level), the total emissions, TE, and the expected values of the TTS and TE caused by the vehicles that remain in the network at the end of the prediction horizon until they leave the network. We propose a method for estimation of the expected time spent and emissions by the remaining vehicles, where our method is based on a K Shortest path algorithm. For the prediction model of the MPC-based controller, we use a macroscopic integrated flow-emission model that includes the macroscopic flow S-model and the microscopic emission model, VT-micro. Since the S-model includes non-smooth functions, it does not allow us to benefit from efficient gradient-based methods to solve the optimization problem of the MPC-based controller. Therefore, in this paper we also propose smoothing methods for the S-model.
机译:在城市地区,交通拥堵和排放已成为一个大问题。交通响应控制系统旨在最大程度地利用现有道路通行能力。在这里,我们提出了一种用于城市交通网络的模型预测控制器,该控制器的目标是在减少拥堵和排放之间找到平衡的权衡。成本函数定义为总花费时间TTS(作为评估拥堵程度的标准),总排放量TE以及剩余车辆所造成的TTS和TE期望值的加权组合。网络在预测范围的尽头,直到他们离开网络。我们提出了一种估计剩余车辆的预期花费时间和排放量的方法,该方法基于K最短路径算法。对于基于MPC的控制器的预测模型,我们使用宏观综合流量排放模型,其中包括宏观流动S模型和微观排放模型VT-micro。由于S模型包含非平滑函数,因此它不允许我们受益于基于梯度的高效方法来解决基于MPC的控制器的优化问题。因此,在本文中,我们还提出了S模型的平滑方法。

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