Affordable public transit services are crucial for communities since they enable residents to access employment, education, and other services. Unfortunately, transit services that provide wide coverage tend to suffer from relatively low utilization, which results in high fuel usage per passenger per mile, leading to high operating costs and environmental impact. Electric vehicles (EVs) can reduce energy costs and environmental impact, but most public transit agencies have to employ them in combination with conventional, internal-combustion engine vehicles due to the high upfront costs of EVs. To make the best use of such a mixed fleet of vehicles, transit agencies need to optimize route assignments and charging schedules, which presents a challenging problem for large transit networks. We introduce a novel problem formulation to minimize fuel and electricity use by assigning vehicles to transit trips and scheduling them for charging, while serving an existing fixed-route transit schedule. We present an integer program for optimal assignment and scheduling, and we propose polynomial-time heuristic and meta-heuristic algorithms for larger networks. We evaluate our algorithms on the public transit service of Chattanooga, TN using operational data collected from transit vehicles. Our results show that the proposed algorithms are scalable and can reduce energy use and, hence, environmental impact and operational costs. For Chattanooga, the proposed algorithms can save $145,635 in energy costs and 576.7 metric tons of CO2 emission annually.
翻译:负担得起的公共过境服务对社区至关重要,因为这些服务使居民能够获得就业、教育和其他服务。不幸的是,提供广泛覆盖的过境服务往往使用率相对较低,导致每英里乘客的燃料使用率较高,导致高昂的运营成本和环境影响。电动车辆可以降低能源成本和环境影响,但大多数公共过境机构不得不与常规的、内部燃烧发动机车辆一起使用,因为EV的预付成本很高。为了最佳利用这种混合车辆的车队,过境机构需要优化路线分配和收费时间表,这对大型过境网络来说是一个具有挑战性的问题。我们引入了一种新的问题,通过指派车辆进行过境旅行并安排收费来尽量减少燃料和电力的使用,同时遵守现有的固定路线过境时间表。我们提出了一个最优化分配和排期的整数方案,我们提出了大型网络的混合时间超时和超湿度运算法。我们评估了查塔努加公共过境服务的算法,TN可以使用从过境车辆收集的操作数据来减少燃料和电力的使用量。我们提出的新的问题提法显示,在5美元的拟议运算法中可以降低成本。