Tackling the Crowdsourced Shared-Trip Delivery Problem at Scale with a Novel Decomposition Heuristic
This paper presents a set-partitioning formulation and a novel decomposition heuristic (D-H) solution algorithm to solve large-scale instances of the urban crowdsourced shared-trip delivery (CSD) problem. The CSD problem involves dedicated vehicles (DVs) and shared personal vehicles (SPVs) fulfillin...
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Zusammenfassung: | This paper presents a set-partitioning formulation and a novel decomposition
heuristic (D-H) solution algorithm to solve large-scale instances of the urban
crowdsourced shared-trip delivery (CSD) problem. The CSD problem involves
dedicated vehicles (DVs) and shared personal vehicles (SPVs) fulfilling
delivery orders, wherein the SPVs have their own trip origins and destinations.
The D-H begins by assigning as many package delivery orders (PDOs) to SPVs as
possible, where the D-H enumerates the set of routes each SPV can feasibly
traverse and then solves a PDO-SPV-route assignment problem. For PDO-DV
assignment and DV routing, the D-H solves a multi-vehicle routing problem with
time-window, tour duration, and capacity constraints using an insertion
heuristic. Finally, the D-H seeks potential solution improvements by switching
PDOs between SPV and DV routes through a simulated annealing (SA)-inspired
procedure. The D-H outperforms a commercial solver in terms of computational
efficiency while obtaining near-optimal solutions for small problem instances.
The SA-inspired switching procedure outperforms a large neighborhood search
algorithm regarding run time, and the two are comparable regarding solution
quality. Finally, the paper uses the D-H to analyze the impact of several
relevant factors on city-scale CSD system performance, namely the number of
participating SPVs and the maximum willingness to detour of SPVs. Consistent
with the existing literature, we find that CSD can substantially reduce
delivery costs. However, we find that CSD can increase vehicle miles traveled.
Our findings provide meaningful insights for logistics practitioners, while the
algorithms illustrate promise for large real-world systems. |
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DOI: | 10.48550/arxiv.2203.14719 |