网约车平台中司机反应策略建模:基于智能体的仿真模型与近似解析模型

Modelling driver's reactive strategies in e-hailing platforms: an agent-based simulation model and an approximate analytical model

International Journal of Production Research · 2021
被引 10
ABS 3

中文导读

研究了网约车司机在平台广播订单时,为最大化利润而采取的接受或拒绝策略,通过仿真和解析模型发现基于距离的拒绝策略可比不拒绝多赚约25%。

Abstract

For an e-hailing taxi operation, we analyse a driver's profit-maximising reactive strategy (to either accept or refuse a ride request) in response to the ride request broadcast by the platform. We analyse four operating modes, each of which is a combination of either of two reactive strategies: no refusal and refusal based on proximity, and either of two broadcasting methods. In an operating mode, our objective is to evaluate the expected total profit in a shift. We adopt a two-stage methodology to answer the research questions. In the first stage, we develop an agent-based simulation model to capture the effect of multiple taxis on driver's reactive strategy. Using real trip data, we find that a driver could follow a strategy of refusal based on proximity and earn approximately 25% more than the baseline no refusal strategy. In the second stage, we develop an approximate analytical model for a single taxi operation and compare the performance against the agent-based simulation model. We develop closed-form expressions of the expected total profit for each operating mode and topology of the service region. We find that our approximate analytical model provides an upper bound, and the profit deviation lies within 20% of the agent-based simulation model.

网约车司机策略仿真建模运营管理