Abstract

Taxi order demand prediction is of tremendous importance for continuous upgrading of an intelligent transportation system to realise city-scale and personalised services. An accurate short-term taxi demand prediction model in both spatial and temporal relations can assist a city pre-allocate its resources and facilitate city-scale taxi operation management in a megacity. To address problems similar to the above, in this study, we proposed a multi-zone order demand prediction model to predict short-term taxi order demand in different zones at city-scale. A two-step methodology was developed, including order zone division and multi-zone order prediction. For the zone division step, the K-means++ spatial clustering algorithm was used, and its parameter k was estimated by the between–within proportion index. For the prediction step, six methods (backpropagation neural network, support vector regression, random forest, average fusion-based method, weighted fusion-based method, and k-nearest neighbour fusion-based method) were used for comparison. To demonstrate the performance, three multi-zone weighted accuracy indictors were proposed to evaluate the order prediction ability at city-scale. These models were implemented and validated on real-world taxi order demand data from a three-month consecutive collection in Shenzhen, China. Experiment on the city-scale taxi demand data demonstrated the superior prediction performance of the multi-zone order demand prediction model with the k-nearest neighbour fusion-based method based on the proposed accuracy indicator.

Highlights

  • Traffic has become an important factor impacting city management and operation as well as the daily lives of numerous dwellers

  • The order demand is predicted in the different divided zones based on six different prediction models: k-nearest neighbour (kNN) fusion-based method, BP–neural networks (NNs), support vector regression (SVR), random forest (RF), average fusion-based method, and weighted fusion-based method

  • This study considers the taxi order demand to Shenzhen International Airport as a case study for the order zone division and the order demand prediction in different zones

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Summary

Introduction

Traffic has become an important factor impacting city management and operation as well as the daily lives of numerous dwellers. Multi-zone prediction analysis of city-scale travel order demand because the data may be highly complex, posing tremendous challenges for the real-time calculation of city-scale system operation management To address this problem, a critical approach is accurate short-term multi-zone taxi demand prediction by dividing the order zone to reduce the processing time and improve the prediction accuracy simultaneously. An accurate prediction of the taxi order demand implies the provision of assistance to a city to pre-allocate resources and facilitation of city-scale taxi operation management in a megacity [1]. This type of a model can be beneficial to numerous city-scale operational management scenarios. For taxi operation management, it can reduce the imbalance between the taxi supply and demand in some areas

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