Litcius/Paper detail

Solving Last-Mile Logistics Problem in Spatiotemporal Crowdsourcing via Role Awareness With Adaptive Clustering

Baoying Huang, Haibin Zhu, Dongning Liu, Naiqi Wu, Yan Qiao, Qian Jiang

2021IEEE Transactions on Computational Social Systems55 citationsDOI

Abstract

Last-mile logistics is a crucial phase of online commodity trades. In last-mile logistics, one of the critical problems is to reasonably assign couriers to distribute the products in time in order to ensure the quality of service, especially for fresh produce. The last-mile assignment problem (LMAP) for fresh produce poses a challenge on traditional logistics since fresh produce is difficult to preserve. This article formalizes the LMAP for fresh produce via the group role assignment framework and proposes a role awareness method by using adaptive clustering in spatiotemporal crowdsourcing based on task granularity. The formalization of LMAP makes it easy to find a solution using the IBM ILOG CPLEX optimization package (CPLEX). The proposed method allows one to take the time and space factor into consideration, helps spatiotemporal crowdsourcing assign couriers for efficient delivering daily orders, and improves the quality of service in last-mile logistics. It is verified by simulation experiments. The experimental results demonstrate the practicability of the proposed solutions in this article.

Topics & Concepts

CrowdsourcingComputer scienceCluster analysisLast mile (transportation)IBMGranularityTask (project management)Quality (philosophy)Service (business)Quality of serviceOperations researchMileArtificial intelligenceEngineeringComputer networkSystems engineeringWorld Wide WebBusinessOperating systemMaterials scienceNanotechnologyAstronomyMarketingPhysicsEpistemologyPhilosophyMobile Crowdsensing and CrowdsourcingUrban and Freight Transport LogisticsVehicle Routing Optimization Methods