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Model Predictive Traffic Control: A Mixed-Logical Dynamic Approach Based on the Link Transmission Model

机译:模型预测交通控制:基于链路传输模型的混合逻辑动态方法

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In this paper, model predictive control of traffic networks using first-order macroscopic link transmission model (LTM) is considered. The LTM model provides fast yet accurate predictions for traffic networks compared to other models. In order to use this model for traffic control, it is extended to include ramp metering. Using the extended LTM model as prediction model in a model predictive control framework, one can determine optimal control signals for metered on-ramps. However, the optimization problem is still nonlinear and nonconvex, and in general it is not tractable to find its global optimimum, as global or multi-start local optimization techniques take considerable time. Therefore, in this paper the extended LTM model is transformed into a mixed logical dynamic model. The resulting optimization problem can be recast as a mixed integer linear program (MILP) that can be solved much more efficiently than the nonlinear optimization problem, and it allows to determine a global optimum efficiently. A simple case study is selected, first to test the modeling performance of the extended LTM and next to compare the control performance of the MILP approach and the original nonlinear formulation in terms of computational efficiency and total cost.
机译:本文考虑了使用一阶宏观链接传输模型(LTM)的业务网络的模型预测控制。与其他模型相比,LTM模型为交通网络提供了快速但准确的预测。为了使用此模型进行流量控制,扩展到包括斜坡计量。在模型预测控制框架中使用延长的LTM模型作为预测模型,可以确定用于计量斜坡的最佳控制信号。然而,优化问题仍然是非线性和非凸,并且通常它不易找到其全局最佳,因为全局或多开始本地优化技术需要相当长的时间。因此,在本文中,将扩展的LTM模型转换为混合逻辑动态模型。由此产生的优化问题可以是混合整数线性程序(MILP)的重量,这些程序可以比非线性优化问题更有效地解决,并且它允许有效地确定全球最佳。选择一个简单的案例研究,首先要测试延长LTM的建模性能,并在计算效率和总成本方面比较MILP方法的控制性能和原始非线性配方。

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