A clustering algorithm for urban taxi carpooling based on data field energy and point spacing is proposed to solve the clustering problem of taxi carpooling on urban roads. The data field energy function is used to calculate the field energy of each data point in the passenger taxi offpoint dataset. To realize the clustering of taxis, the central point, outlier, and data points of each cluster subset are discriminated according to the threshold value determined by the product of each data point field values and point spacing. The classical algorithm and proposed algorithm are compared and analyzed by using the compactness, separation, and Dunn validity index. The clustering results of the proposed algorithm are better than those of the clas...
Massive data from different sources are becoming available in transportation field, and spurring new...
In order to alleviate the traffic congestion and reduce the complexity of traffic control and manage...
This paper proposes a novel supervised clustering algorithm to analyze large datasets. The proposed ...
Car sharing is a type of car rental service, by which consumers rent cars for short periods of time,...
In this research, we analyze taxi pickup data using k-means clustering to gain insights into the spa...
Taxi is an important part of urban passenger transportation system. The research and analysis of tax...
In view of the practical application requirements for the rapid expansion of electric taxis (ETs) an...
Urban hotspot area detection is an important issue that needs to be explored for urban planning and ...
Taxi trajectories reflect human mobility over the urban roads’ network. Although taxi drivers cruise...
Crowdedness spot is a crowded area with an abnormal number of objects. Detecting the crowdedness spo...
A method of trajectory clustering based on decision graph and data field is proposed in this paper. ...
Abstract—In this paper, we introduce a variant of the density peaks clustering (DPC) approach for di...
AbstractThis paper describes the development of a car driving cycle for the city of Tehran and its s...
Carpooling has been long deemed a promising approach to better utilizing existing transportation inf...
Understanding trajectory data is instrumental in extracting a pattern from moving objects, this can ...
Massive data from different sources are becoming available in transportation field, and spurring new...
In order to alleviate the traffic congestion and reduce the complexity of traffic control and manage...
This paper proposes a novel supervised clustering algorithm to analyze large datasets. The proposed ...
Car sharing is a type of car rental service, by which consumers rent cars for short periods of time,...
In this research, we analyze taxi pickup data using k-means clustering to gain insights into the spa...
Taxi is an important part of urban passenger transportation system. The research and analysis of tax...
In view of the practical application requirements for the rapid expansion of electric taxis (ETs) an...
Urban hotspot area detection is an important issue that needs to be explored for urban planning and ...
Taxi trajectories reflect human mobility over the urban roads’ network. Although taxi drivers cruise...
Crowdedness spot is a crowded area with an abnormal number of objects. Detecting the crowdedness spo...
A method of trajectory clustering based on decision graph and data field is proposed in this paper. ...
Abstract—In this paper, we introduce a variant of the density peaks clustering (DPC) approach for di...
AbstractThis paper describes the development of a car driving cycle for the city of Tehran and its s...
Carpooling has been long deemed a promising approach to better utilizing existing transportation inf...
Understanding trajectory data is instrumental in extracting a pattern from moving objects, this can ...
Massive data from different sources are becoming available in transportation field, and spurring new...
In order to alleviate the traffic congestion and reduce the complexity of traffic control and manage...
This paper proposes a novel supervised clustering algorithm to analyze large datasets. The proposed ...