基于仿真的大规模网络收费优化

C. Osorio, B. Atasoy
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引用次数: 10

摘要

针对大规模路网的高维收费优化问题,提出了一种基于仿真的优化技术。我们提出了一个新的分析网络模型。后者嵌入在基于元模型仿真的优化(SO)算法中。它为SO算法提供了底层问题的解析性和可微性结构信息。因此,该算法不再将模拟器视为黑盒。解析模型被表述为一个非线性方程组,可以用标准求解器有效地求解。方程组的维数与网络的大小成线性关系。它的扩展独立于路由选择集的维度和链路属性(如链路长度)。因此,它是一种适用于大规模网络优化的可扩展公式。例如,该模型在本文的案例研究中用于新加坡网络的收费优化,该网络有超过4,050对OD(始发目的地)和18,200条可行路线。相应的解析模型由860个非线性方程组成。基于一维玩具网络问题对分析网络模型进行了验证。它捕捉了基于仿真的目标函数的主要趋势,更重要的是,它准确地定位了所有实验的全局最优。然后,将提出的SO方法用于优化新加坡高速公路和主要干线网络的一组16个收费。并将该方法与通用算法进行了比较。提出的方法在第一次迭代中识别出高质量的解决方案。基准方法在计算2天后识别性能相似的解决方案,或者在模拟超过30个点后识别相似的解决方案。实例研究表明,解析网络模型提供给算法的解析结构信息使其能够(i)快速识别出高质量的解,(ii)对初始点的质量和模拟器的随机性都具有鲁棒性。该算法识别的最终解比基准方法平均高出18%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Simulation-Based Toll Optimization for Large-Scale Networks
This paper proposes a simulation-based optimization technique for high-dimensional toll optimization problems of large-scale road networks. We formulate a novel analytical network model. The latter is embedded within a metamodel simulation-based optimization (SO) algorithm. It provides analytical and differentiable structural information of the underlying problem to the SO algorithm. Hence, the algorithm no longer treats the simulator as a black box. The analytical model is formulated as a system of nonlinear equations that can be efficiently evaluated with standard solvers. The dimension of the system of equations scales linearly with network size. It scales independently of the dimension of the route choice set and of link attributes such as link length. Hence, it is a scalable formulation suitable for the optimization of large-scale networks. For instance, the model is used in the case study of the paper for toll optimization of a Singapore network with more than 4,050 OD (origin-destination) pairs and 18,200 feasible routes. The corresponding analytical model is implemented as a system of 860 nonlinear equations. The analytical network model is validated based on one-dimensional toy network problems. It captures the main trends of the simulation-based objective function and, more importantly, accurately locates the global optimum for all experiments. The proposed SO approach is then used to optimize a set of 16 tolls for the network of expressways and major arterials of Singapore. The proposed method is compared with a general-purpose algorithm. The proposed method identifies good quality solutions at the very first iteration. The benchmark method identifies solutions with similar performance after 2 days of computation or similarly after more than 30 points have been simulated. The case study indicates that the analytical structural information provided to the algorithm by the analytical network model enables it to (i) identify good quality solutions fast and (ii) become robust to both the quality of the initial points and to the stochasticity of the simulator. The final solutions identified by the proposed algorithm outperform those of the benchmark method by an average of 18%.
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