Minimum-delay opportunity charging scheduling for electricbuses

IF 14.5 Q1 TRANSPORTATION
Dan McCabe , Xuegang (Jeff) Ban , Balaźs Kulcsár
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引用次数: 0

Abstract

Transit agencies that operate battery-electric buses must carefully manage fast-charging infrastructure to extend daily bus range without degrading on-time performance. To support this need, we propose a mixed-integer linear programming model to schedule opportunity charging that minimizes the amount of departure delay in all trips served by electric buses. Our novel approach directly tracks queuing at chargers in order to set and propagate departure delays. Allowing but minimizing delays makes it possible to optimize performance when delays due to traffic conditions and charging needs are inevitable, in contrast with existing methods that require charging to occur during scheduled layover time. To solve the model, we develop two algorithms based on decomposition. The first is an exact solution method based on combinatorial Benders (CB) decomposition, which avoids directly enumerating the model’s logic-based “big M” constraints and their inevitable computational challenges. The second, inspired by the CB approach but more efficient, is a polynomial-time heuristic based on linear programming that we call Select–Sequence–Schedule (3S). Computational experiments on both a simple notional transit network and the real bus system of King County, Washington, USA demonstrate the performance of both methods. The 3S method appears particularly promising for creating good charging schedules quickly at real-world scale.
电动公交车最小延迟机会充电调度
运营纯电动公交车的公共交通机构必须仔细管理快速充电基础设施,以延长公交车的日常行驶里程,同时不降低准点率。为了支持这一需求,我们提出了一个混合整数线性规划模型来安排机会收费,以最大限度地减少电动公交车服务的所有行程的出发延误量。我们的新方法直接跟踪收费站的排队情况,以设置和传播出发延误。当交通状况和收费需求不可避免地造成延误时,允许但最小化延误使得优化性能成为可能,而现有的方法要求在计划的中途停留时间内进行收费。为了求解该模型,我们开发了两种基于分解的算法。第一种是基于组合Benders (CB)分解的精确解方法,该方法避免了直接枚举模型基于逻辑的“大M”约束及其不可避免的计算挑战。第二种方法受到CB方法的启发,但效率更高,是一种基于线性规划的多项式时间启发式方法,我们称之为选择-序列-调度(3S)。在美国华盛顿州金县一个简单的概念公交网络和实际公交系统上进行了计算实验,验证了这两种方法的有效性。3S方法似乎特别有希望在实际规模下快速创建良好的充电计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
15.20
自引率
0.00%
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