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Parking Assignment: Minimizing Parking Expenses and Balancing Parking Demand Among Multiple Parking Lots

机译:停车分配:在多个停车场之间最大限度地减少停车费和平衡停车需求

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Recently, a rapid growth in the number of vehicles on the road has led to an unexpected surge of parking demand. Consequently, finding a parking space has become increasingly difficult and expensive. One of the viable approaches is to utilize both public and private parking lots (PLs) to effectively share the parking spaces. However, when the parking demands are not balanced among PLs, a local congestion problem occurs where some PLs are overloaded, and others are underutilized. Therefore, in this article, we formulate the parking assignment problem with two objectives: 1) minimizing parking expenses and 2) balancing parking demand among multiple PLs. First, we derive a matching solution for minimizing parking expenses. Then, we extend our study by considering both parking expenses and balancing parking demand, formulating this as a mixed-integer linear programming problem. We solve that problem by using an alternating direction method of multipliers (ADMM)-based algorithm that can enable a distributed implementation. Finally, the simulation results show that the matching game approach outperforms the greedy approach by 8.5% in terms of parking utilization, whereas the ADMM-based algorithm produces performance gains up to 27.5% compared with the centralized matching game approach. Furthermore, the ADMM-based proposed algorithm can obtain a near-optimal solution with a fast convergence that does not exceed eight iterations for the network size with 1000 vehicles.Note to Practitioners-The efficiency of the parking assignment is critical to the parking management systems in order to provide the best parking guides. This article investigates the cost minimization problem for parking assignment while balancing parking demand among multiple parking lots (PLs). Previous parking assignment approaches do not jointly investigate the cost of parking and the cast of PL utilization. Therefore, they can fail to the local congestion problem caused by a large number of vehicles driving toward the same PL. In this article, a new method that considers both of minimizing parking expenses and balancing parking demand is proposed. It is obtained by using the alternating direction method of multipliers (ADMM)-based proposal that distributively solves a constrained optimization problem. Based on the experimental results, the ADMM-hasecl algorithm outperforms the matching-based algorithm and the greedy algorithm in terms of the balancing parking demand and reducing parking expenses. The proposed method can be readily implemented in real-world industrial PLs. In the future work where parking assignments for electric vehicles are needed, our proposed mechanism can then be extended to solve the balanced electricity overload multiple charging stations.
机译:最近,道路上车辆数量的快速增长导致了停车需求的意外激增。因此,寻找停车位变得越来越困难且昂贵。其中一种可行的方法是利用公共和私人停车场(PLS)来有效地分享停车位。然而,当停车需求在PLS之间不平衡时,发生一些PLS过载的局部拥塞问题,其他人未被利用。因此,在本文中,我们制定了两个目标的停车分配问题:1)最小化停车费和2)多项PLS之间的平衡停车需求。首先,我们推出了一个匹配的解决方案,以尽量减少停车费用。然后,我们通过考虑停车费和平衡停车需求来扩展我们的研究,这是作为混合整数线性规划问题的制定。我们通过使用可以实现分布式实现的乘法器(ADMM)的交替方向方法来解决该问题。最后,仿真结果表明,在停车利用率方面,匹配游戏方法优于贪婪的方法8.5%,而基于ADMM的算法与集中式匹配游戏方法相比,基于ADMM的算法可以产生高达27.5%的性能提升。此外,基于ADMM的提议算法可以获得近最优的解决方案,其快速会聚不会超过1000辆车辆的网络尺寸的八次迭代。对从业者来说,驻车分配的效率对停车管理系统至关重要为了提供最佳停车指南。本文调查了停车分配的成本最小化问题,同时平衡了多个停车场(PLS)之间的停车需求。之前的停车分配方法不共同调查停车的成本和PL利用率的铸件。因此,它们不能通过朝向同一PL驱动的大量车辆引起的局部拥塞问题。在本文中,提出了一种提出最小化停车费和平衡停车需求的新方法。通过使用分配地解决受约束优化问题的基于乘法器(ADMM)的交替方向方法而获得。基于实验结果,ADMM-HASECL算法在平衡停车需求方面优于基于匹配的算法和贪婪算法,减少停车费。所提出的方法可以在现实世界的工业PLS中容易地实施。在需要停车分配的未来工作中,我们可以扩展我们所提出的机制以解决平衡电过载多重充电站。

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