Multi-zone prediction analysis of city-scale travel order demand.

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 res...

Full description

Bibliographic Details
Main Authors: Pengshun Li, Jiarui Chang, Yi Zhang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0248064
id doaj-3b8bf9207d0d45778f051dec11dcd327
record_format Article
spelling doaj-3b8bf9207d0d45778f051dec11dcd3272021-04-06T04:31:00ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01163e024806410.1371/journal.pone.0248064Multi-zone prediction analysis of city-scale travel order demand.Pengshun LiJiarui ChangYi ZhangYi ZhangTaxi 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.https://doi.org/10.1371/journal.pone.0248064
collection DOAJ
language English
format Article
sources DOAJ
author Pengshun Li
Jiarui Chang
Yi Zhang
Yi Zhang
spellingShingle Pengshun Li
Jiarui Chang
Yi Zhang
Yi Zhang
Multi-zone prediction analysis of city-scale travel order demand.
PLoS ONE
author_facet Pengshun Li
Jiarui Chang
Yi Zhang
Yi Zhang
author_sort Pengshun Li
title Multi-zone prediction analysis of city-scale travel order demand.
title_short Multi-zone prediction analysis of city-scale travel order demand.
title_full Multi-zone prediction analysis of city-scale travel order demand.
title_fullStr Multi-zone prediction analysis of city-scale travel order demand.
title_full_unstemmed Multi-zone prediction analysis of city-scale travel order demand.
title_sort multi-zone prediction analysis of city-scale travel order demand.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description 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.
url https://doi.org/10.1371/journal.pone.0248064
work_keys_str_mv AT pengshunli multizonepredictionanalysisofcityscaletravelorderdemand
AT jiaruichang multizonepredictionanalysisofcityscaletravelorderdemand
AT yizhang multizonepredictionanalysisofcityscaletravelorderdemand
AT yizhang multizonepredictionanalysisofcityscaletravelorderdemand
_version_ 1714691549777887232