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Paper accepted for publication @ VHB A journal

The paper "Modeling and solving the multimodal car- and ride-sharing problem" by Miriam Enzia,b, Sophie N. Parraghb, David Pisingerc, Matthias Prandtstettera has been accepted for publication at European Journal of Operational Research.

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aCenter for Mobility Systems, AIT Austrian Institute of Technology

bInstitute of Production and Logistics Management, Johannes Kepler University Linz 

cDepartment of Management Engineering, Technical University of Denmark

Abstract: 

We introduce the multimodal car- and ride-sharing problem (MMCRP), in which a pool of cars is used to cover a set of ride requests, while uncovered requests are assigned to other modes of transport (MOT). A car’s route consists of one or more trips. Each trip must have a specific but non-predetermined driver, start in a depot and finish in a (possibly different) depot. Ride-sharing between users is allowed, even when two rides do not have the same origin and/or destination. A user has always the option of using other modes of transport according to an individual list of preferences.

The problem can be formulated as a vehicle scheduling problem. In order to solve the problem, an auxiliary graph is constructed in which each trip starting and ending in a depot, and covering possible ride- shares, is modeled as an arc in a time-space graph. We propose a two-layer decomposition algorithm based on column generation, where the master problem ensures that each request can only be covered at most once, and the pricing problem generates new promising routes by solving a kind of shortest-path problem in a time-space network. Computational experiments based on realistic instances are reported. The benchmark instances are based on demographic, spatial, and economic data of Vienna, Austria. We solve large instances with the column generation based approach to near optimality in reasonable time, and we further investigate various exact and heuristic pricing schemes.