Facility location optimization of battery electric vehicle (BEV) fast charging stations in an urban transportation network
Abstract
Electric Vehicles (EVs) are expected to play a significant role in the reduction of global emissions
originating from the transportation sector. Penetration of EVs has been shown to be a significant
enabler for rapid adoption of EV technology among light-duty passenger vehicles. An analysis of
contemporary EV charging technologies and charging mechanics is performed. The location of EV
fast charging facilities in an urban transportation network is posited as a part of an existing body of
research on facility location optimization.
A flow capturing facility location problem is formulated for identifying optimal locations of EV fast
charging points in an urban transportation network. In the solution, vehicular traffic is allocated using
a shortest path algorithm to optimally located charging stations. The weighted total supply chain costs
consisting of operating costs (OC), travel costs (TC), and service costs (SC) is minimized. A concave
service cost function is included to ensure adherence to preset service levels, which is then
approximated as a set of linear constraints. A computationally efficient solution to the mixed integer
linear programming (MILP) problem is obtained using IBM ILOG CPLEX.
The sensitivity of optimum facility count and computational time with increasing order of magnitude
of operating cost is analyzed. Using a social equity approach, facility count and total costs are
analyzed by restricting the maximum customer detour permitted within the model.
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- Working Papers [2627]