Multitrip Vehicle Routing with Delivery Options: A Data-Driven Application to the Parcel Industry

39 Pages Posted: 14 Jun 2022

See all articles by Lukas Janinhoff

Lukas Janinhoff

University of Augsburg

Robert Klein

University of Augsburg

Daniel Scholz

General Logistics Systems Germany GmbH & Co. OHG

Date Written: June 7, 2022

Abstract

To make the last mile of parcel delivery more efficient, service providers offer an increasing number of modes of delivery as alternatives to the traditional and often cost-intensive home delivery service. Parcel lockers and pickup stations can be utilized to reduce the number of stops and avoid costly detours. To design smart delivery networks, service providers must evaluate different business models. In this context, a multitrip vehicle routing problem with delivery options and location-dependent costs arises. We present a data-driven framework to evaluate alternative delivery strategies, formulate a corresponding model and solve the problem heuristically using adaptive large neighborhood search. By examining large, real-life instances from a major European parcel service, we determine the potential and benefits of different delivery options. Specifically, we show that delivery costs can be mitigated by consolidating orders in pickup stations and illustrate how pricing can be applied to steer customer demand toward profitable, eco-friendly products.

Keywords: Data-Driven Decision Making, Last-Mile Delivery, Fulfillment Options, Vehicle Routing, Adaptive Large Neighborhood Search, Demand Management

Suggested Citation

Janinhoff, Lukas and Klein, Robert and Scholz, Daniel, Multitrip Vehicle Routing with Delivery Options: A Data-Driven Application to the Parcel Industry (June 7, 2022). Available at SSRN: https://ssrn.com/abstract=4130046 or http://dx.doi.org/10.2139/ssrn.4130046

Lukas Janinhoff

University of Augsburg ( email )

Universitätsstr. 2
Augsburg, 86159
Germany

Robert Klein (Contact Author)

University of Augsburg ( email )

Universitätsstr. 2
Augsburg, 86159
Germany

Daniel Scholz

General Logistics Systems Germany GmbH & Co. OHG

Germany

Do you have negative results from your research you’d like to share?

Paper statistics

Downloads
106
Abstract Views
307
Rank
463,779
PlumX Metrics