Multi-Tier Adaptive Memory Programming and Cluster- and Job-based Relocation for Distributed On-demand Crowdshipping

05/14/2021
by   Tanvir Ahamed, et al.
0

With rapid e-commerce growth, on-demand urban delivery is having a high time especially for food, grocery, and retail, often requiring delivery in a very short amount of time after an order is placed. This imposes significant financial and operational challenges for traditional vehicle-based delivery methods. Crowdshipping, which employs ordinary people with a low pay rate and limited time availability, has emerged as an attractive alternative. This paper proposes a multi-tier adaptive memory programming (M-TAMP) to tackle on-demand assignment of requests to crowdsourcees with spatially distributed request origins and destination and crowdsourcee starting points. M-TAMP starts with multiple initial solutions constructed based on different plausible contemplations in assigning requests to crowdsourcees, and organizes solution search through waves, phases, and steps, imitating both ocean waves and human memory functioning while seeking the best solution. The assignment is further enforced by proactively relocating idle crowdsourcees, for which a computationally efficient cluster- and job-based strategy is devised. Numerical experiments demonstrate the superiority of MTAMP over a number of existing methods, and that relocation can greatly improve the efficiency of crowdsourcee-request assignment.

READ FULL TEXT
research
09/16/2020

Competitive Ratios for Online Multi-capacity Ridesharing

In multi-capacity ridesharing, multiple requests (e.g., customers, food ...
research
11/19/2020

On the Request-Trip-Vehicle Assignment Problem

The request-trip-vehicle assignment problem is at the heart of popular d...
research
10/28/2021

Share-a-ride problems: Models and Solution Algorithms

Some of today's greatest challenges in urban environments concern indivi...
research
08/31/2022

A case study of the profit-maximizing multi-vehicle pickup and delivery selection problem for the road networks with the integratable nodes

This paper is a study of an application-based model in profit-maximizing...
research
09/24/2020

SOUP: Spatial-Temporal Demand Forecasting and Competitive Supply

We consider a setting with an evolving set of requests for transportatio...

Please sign up or login with your details

Forgot password? Click here to reset