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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Fog-Based Multi-Class Dispatching and Charging for Autonomous Electric Mobility On-Demand
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Fog-Based Multi-Class Dispatching and Charging for Autonomous Electric Mobility On-Demand

机译:基于雾的多类调度和按需自主充电

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摘要

Despite the significant advances in vehicle automation and electrification, the next-decade aspirations for massive deployments of autonomous electric mobility on demand (AEMoD) services in big cities are still threatened by two major bottlenecks, namely, the communication/computation and charging delays. In order to target the communication/computation delays, the paper suggests the exploitation of fog-based architectures for localized AEMoD system operations. These emerging architectures are soon to become widely used, allowing for all localized operational decisions to be made with very low latency by fog controllers located close to the end applications (e.g., each city zone for AEMoD systems). As for the charging delays, an optimized multi-class charging and dispatching queuing model, with partial charging option for AEMoD vehicles is developed for each of these zones. The stability conditions of this model and the optimal number of classes are then derived. The decisions on the proportions of each class vehicles to partially/fully charge or directly serve customers are optimized to minimize the maximum and average system response times using convex optimization and Lagrangian analysis. The results show the merits of our proposed model and optimized decision scheme compared to both the always-charge and the equal-split scheme. Furthermore, the comparison of the maximum and average response time minimization results shows a very low variance in performance, which suggests by using the linear programming solution for lower complexity.
机译:尽管汽车自动化和电气化取得了重大进步,但下一个在大城市大规模部署自动按需电动汽车(AEMoD)服务的愿望仍受到两个主要瓶颈的威胁,即通信/计算和充电延迟。为了针对通信/计算延迟,本文建议针对本地AEMoD系统操作开发基于雾的体系结构。这些新兴的体系结构很快将被广泛使用,从而允许通过靠近最终应用程序(例如AEMoD系统的每个城市区域)的烟雾控制器以极低的延迟做出所有本地化的操作决策。至于充电延迟,针对这些区域中的每个区域,开发了优化的多类别充电和调度排队模型,以及针对AEMoD车辆的部分充电选项。然后得出该模型的稳定性条件和最佳类别数。通过使用凸优化和拉格朗日分析,可以优化有关部分/全部向客户部分/完全充电或直接为客户服务的车辆比例的决策,以最大程度地缩短系统响应的最大和平均时间。结果表明,与总是充电和等分方案相比,我们提出的模型和优化决策方案的优点。此外,最大响应时间和平均响应时间最小化结果的比较表明,性能差异非常小,这建议使用线性编程解决方案以降低复杂度。

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