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Improving the Efficiency of Stochastic Vehicle Routing: A Partial Lagrange Multiplier Method

机译:使用部分拉格朗日乘数法提高随机车辆路径选择的效率

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摘要

More realistic than deterministic vehicle routing, stochastic vehicle routing considers uncertainties in traffic. Its two representative optimization models are the probability tail (PT) and the stochastic shortest path problem with delay excess penalty (SSPD), which can be approximately solved by expressing them as mixed-integer linear programming (MILP) problems. The traditional method to solve these two MILP problems, i.e., branch and bound (B&B), suffers from exponential computation complexity because of integer constraints. To overcome this computation inefficiency, we propose a partial Lagrange multiplier method. It benefits from the total unimodularity of the incidence matrix in the models, which guarantees an optimal integer solution by only solving a linear programming (LP) problem. Thus, this partial Lagrange multiplier problem can be further solved using the subgradient method, and the proposed method can guarantee polynomial computation complexity. Moreover, we theoretically prove the convergence and the efficiency, which are also assessed by the experiments on three different scales of graphs (road networks): small scale, medium scale, and large scale. More importantly, the experimental results on the Beijing road network with real traffic data show that our method can efficiently solve the time-dependent routing problem. Additionally, the implementation on the navigation system based on the Singapore road network further confirms that our method can be applied to efficiently solve the real-world stochastic vehicle routing problem.
机译:比确定性车辆路线更为现实,随机车辆路线考虑了交通的不确定性。它的两个代表性优化模型是概率尾部(PT)和带延误超额罚金的随机最短路径问题(SSPD),可以通过将它们表示为混合整数线性规划(MILP)问题来近似解决。解决这两个MILP问题的传统方法(即分支定界(B&B))由于整数约束而遭受指数计算复杂性的困扰。为了克服这种计算效率低的问题,我们提出了一种局部拉格朗日乘数法。它得益于模型中入射矩阵的总单模性,从而仅通过解决线性规划(LP)问题即可保证最佳整数解。因此,可以使用次梯度方法进一步解决该部分拉格朗日乘子问题,并且所提出的方法可以保证多项式计算的复杂性。此外,我们从理论上证明了收敛性和效率,这也可以通过在三种不同比例的图形(道路网络)上的实验进行评估:小比例,中比例和大比例。更重要的是,在具有实际交通数据的北京路网上的实验结果表明,我们的方法可以有效解决时变路线问题。此外,基于新加坡道路网络的导航系统的实施进一步证实了我们的方法可用于有效解决现实世界中的随机车辆路径问题。

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