Anke Ye

Anke Ye
  • Doctor of Philosophy
  • PostDoc Position at Technical University of Munich

About

5
Publications
396
Reads
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9
Citations
Introduction
Anke Ye is a PhD candidate at Zhejiang University. Her main research interests lie in shared urban transportation systems, with a central focus on on-demand logistics and transportation market analysis.
Current institution
Technical University of Munich
Current position
  • PostDoc Position
Additional affiliations
Zhejiang University
Position
  • PhD Student
Education
September 2020 - September 2024
Zhejiang University
Field of study
  • Pavement and Traffic Engineering
October 2016 - January 2019
RWTH Aachen University
Field of study
  • Mobility and Transport
September 2011 - July 2015
Tongji University
Field of study
  • Transportation Engineering

Publications

Publications (5)
Article
This paper investigates the impacts of introducing autonomous vehicles (AVs) into an on-demand meal delivery system at a strategic level. The proposed model consists of (i) a microscopic physical model describing the delivery process for bundled orders and (ii) a macroscopic network equilibrium model characterizing the interactions among customers,...
Article
This paper proposes an analytical framework for an on-demand meal delivery market that features order bundling and courier sharing among restaurants. The proposed model consists of (i) a physical model describing the delivery process with order bundling, and (ii) an aggregated market equilibrium model characterizing the demand and supply interactio...
Preprint
Full-text available
Meal delivery services provided by platforms with integrated delivery systems are becoming increasingly popular. This paper adopts a rolling horizon approach to solve the meal delivery routing problem (MDRP). To improve delivery efficiency in scenarios with high delivery demand, multiple orders are allowed to be combined into one bundle with orders...

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