Back to Search Start Over

PPtaxi: Non-stop Package Delivery via Multi-hop Ridesharing

Authors :
Chen, Yueyue
Guo, Deke
Xu, Ming
Tang, Guoming
Zhou, Tongqing
Ren, Bangbang
Publication Year :
2018

Abstract

City-wide package delivery becomes popular due to the dramatic rise of online shopping. It places a tremendous burden on the traditional logistics industry, which relies on dedicated couriers and is labor-intensive. Leveraging the ridesharing systems is a promising alternative, yet existing solutions are limited to one-hop ridesharing or need consignment warehouses as relays. In this paper, we propose a new package delivery scheme which takes advantage of multi-hop ridesharing and is entirely consignment free. Specifically, a package is assigned to a taxi which is guided to deliver the package all along to its destination while transporting successive passengers. We tackle it with a two-phase solution, named \textbf{PPtaxi}. In the first phase, we use the Multivariate Gauss distribution and Bayesian inference to predict the passenger orders. In the second phase, both the computation efficiency and solution effectiveness are considered to plan package delivery routes. We evaluate \textbf{PPtaxi} with a real-world dataset from an online taxi-taking platform and compare it with multiple benchmarks. The results show that the successful delivery rate of packages with our solution can reach $95\%$ on average during the daytime, and is at most $46.9\%$ higher than those of the benchmarks.<br />Comment: 14pages,10figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1809.04733
Document Type :
Working Paper