RPSBPT: A Route Planning Scheme with Best Profit for Taxi

Yuhua Qiu, Xiaolong Xu
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引用次数: 6

Abstract

Reasonable route planning for taxi can not only improve quality of customer experience, but also maximize the benefit of taxi drivers. Most current taxi planning schemes are designed to achieve the shortest route or the shortest time, not to achieve the best profit. In this paper, we propose a route planning scheme with best profit for taxi (RPSBPT). First, we define the optimal profit point and the profit per unit time function. Second, we design the workflow of data cleaning, sampling and partitioning for preprocessing the dataset of taxi trajectory. Then, we integrate the DBSCAN algorithm and the K-means algorithm to obtain the optimal profit points. Finally, the simulate anneal Algorithm (SA), the genetic algorithm (GA), and the ant colony optimization algorithm (ACO) are adopted respectively to plan route for taxi. We constructed the taxi route planning prototype system and applied the proposed route planning scheme to the system. Based on the system and the collected taxi trajectory data at the Jinjiang district of the Chengdu city, we performed a series of experiments to compare the performance of three heuristic algorithms, including optimal route length, algorithm stability, total profit and profitability per unit time. Experimental results show that ACO has the best performance.
出租车最优收益路线规划方案
合理的出租车路线规划不仅可以提高客户体验质量,而且可以使出租车司机的利益最大化。目前大多数出租车规划方案都是为了实现最短的路线或最短的时间,而不是为了实现最佳的利润。本文提出了出租车最优利润路线规划方案(RPSBPT)。首先定义最优利润点和单位时间利润函数。其次,设计了对滑行轨迹数据集进行预处理的数据清洗、采样和划分工作流程。然后,将DBSCAN算法与K-means算法相结合,得到最优利润点。最后,分别采用模拟退火算法(SA)、遗传算法(GA)和蚁群优化算法(ACO)对出租车进行路线规划。构建了出租车路线规划原型系统,并将提出的路线规划方案应用于该系统。基于该系统和成都市锦江区收集的出租车轨迹数据,我们进行了一系列实验,比较了三种启发式算法的性能,包括最优路线长度、算法稳定性、总利润和单位时间盈利能力。实验结果表明,蚁群算法具有较好的性能。
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