Journal of Advanced Transportation (Jan 2022)

A Bi-Level Optimization Model for Ride-Sourcing Platform’s Spatial Pricing Strategy

  • Wei Tang,
  • Heng Wang,
  • Yang Wang,
  • Chuqiao Chen,
  • Xiqun (Michael) Chen

DOI
https://doi.org/10.1155/2022/9120129
Journal volume & issue
Vol. 2022

Abstract

Read online

This article investigates a long-term optimal spatial pricing strategy for a ride-sourcing platform that serves a particular (possibly populated) area with profit-driven service providers (i.e., drivers) and time- and price-sensitive customers (i.e., passengers). By observing that oftentimes, the price strategy is anisotropic and spatial-dependent, both the supply and request are endogenous, and we build an analytical bi-level optimization mode. In the upper-level formulation, the ride-sourcing platform aims at setting up the spatially heterogeneous pricing strategy to maximize its total profit. However, in the lower level, we solve the trip distribution model that characterizes the flow rates among zones given the travel demand rate at each zone. We prove that when the platform seeks to expand its business, the optimal number of participating drivers and their optimal wages will be influenced not only by the pricing strategy but also by the level of service of the entire platform. Our further investigation shows that the profit at a particular zone can be influenced by the potential customers’ service requests from other zones. Finally, we use the real-world data provided by DiDi Chuxing to numerically illustrate our model and theoretical results.