Crowdsourcing Last-Mile Deliveries

Forthcoming in Manufacturing & Service Operations Management.

41 Pages Posted: 13 Aug 2019 Last revised: 20 Jan 2021

See all articles by Soraya Fatehi

Soraya Fatehi

University of Texas at Dallas - Naveen Jindal School of Management

Michael Wagner

University of Washington - Michael G. Foster School of Business

Date Written: August 8, 2019

Abstract

Problem definition: Due to the emergence and development of e-commerce, customers demand faster and cheaper delivery services. However, many retailers find it challenging to efficiently provide fast and on-time delivery services to their customers. Academic/practical relevance: Amazon and Walmart are among the retailers that are relying on independent crowd drivers to cope with on-demand delivery expectations. Methodology: We propose a novel robust crowdsourcing optimization model to study labor planning and pricing for crowdsourced last-mile delivery systems that are utilized for satisfying on-demand orders with guaranteed delivery time windows. We develop our model by combining crowdsourcing, robust queueing, and robust routing theories. We show the value of the robust optimization approach by analytically studying how to provide fast and guaranteed delivery services utilizing independent crowd drivers under uncertainties in customer demands, crowd availability, service times, and traffic patterns; we also allow for trend and seasonality in these uncertainties. Results: For a given delivery time window and an on-time delivery guarantee level, our model allows us to analytically derive the optimal delivery assignments to available independent crowd drivers and their optimal hourly wage.
Our results show that crowdsourcing can help firms decrease their delivery costs significantly, while keeping the promise of on-time delivery to their customers. Managerial implications: We provide extensive managerial insights and guidelines for how such a system should be implemented in practice.

Keywords: crowdsourcing, on-demand deliveries, robust optimization, queueing theory

Suggested Citation

Fatehi, Soraya and Wagner, Michael, Crowdsourcing Last-Mile Deliveries (August 8, 2019). Forthcoming in Manufacturing & Service Operations Management., Available at SSRN: https://ssrn.com/abstract=3434625 or http://dx.doi.org/10.2139/ssrn.3434625

Soraya Fatehi (Contact Author)

University of Texas at Dallas - Naveen Jindal School of Management ( email )

P.O. Box 830688
Richardson, TX 75083-0688
United States

Michael Wagner

University of Washington - Michael G. Foster School of Business ( email )

Box 353200
Seattle, WA 98195-3200
United States

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