AbstractThis paper investigates application of clustering techniques in partitioning traffic flow data to congested and free flow regimes. Clustering techniques identify the similarities and dissimilarities between data, and classify the data into groups with similar characteristics. Such techniques have been successfully used in market research, astronomy, psychiatry, and transportation. A framework is proposed for clustering traffic data based on fundamental traffic flow variables. Three types of clustering techniques are investigated: 1) connectivity-based clustering, 2) centroid-based clustering, and 3) distribution-based clustering. Specifically, hierarchical clustering, K-means clustering and general mixture model (GMM) were investiga...
Massive data from different sources are becoming available in transportation field, and spurring new...
Analysing the traffic data is a very important topic to improve traffic efficiency. It has no way to...
The study focuses on mapping spatiotemporal patterns and detecting the potential drivers of traffic ...
AbstractThis paper investigates application of clustering techniques in partitioning traffic flow da...
Classification of congestion patterns is important in many areas in traffic planning and management,...
This paper proposes a novel supervised clustering algorithm to analyze large datasets. The proposed ...
Historical traffic patterns can be used for the prediction of traffic flows, as input for macroscopi...
AbstractThis paper presents a trajectory clustering method to discover spatial and temporal travel p...
Nowadays traffic congestion has become significantly worse. Not only has it led to economic losses, ...
One of the most important issues in urban planning is developing sustainable public transportation. ...
This paper presents a trajectory clustering method to discover spatial and temporal travel patterns ...
AbstractThis paper highlights and validates the use of shape analysis using Mathematical Morphology ...
There is significant interest in the data mining and network management communities about the need t...
Traffic congestion clustering judgment is a fundamental problem in the study of traffic jam warning....
Many traffic management strategies, such as the deployment of intelligent transportation systems, re...
Massive data from different sources are becoming available in transportation field, and spurring new...
Analysing the traffic data is a very important topic to improve traffic efficiency. It has no way to...
The study focuses on mapping spatiotemporal patterns and detecting the potential drivers of traffic ...
AbstractThis paper investigates application of clustering techniques in partitioning traffic flow da...
Classification of congestion patterns is important in many areas in traffic planning and management,...
This paper proposes a novel supervised clustering algorithm to analyze large datasets. The proposed ...
Historical traffic patterns can be used for the prediction of traffic flows, as input for macroscopi...
AbstractThis paper presents a trajectory clustering method to discover spatial and temporal travel p...
Nowadays traffic congestion has become significantly worse. Not only has it led to economic losses, ...
One of the most important issues in urban planning is developing sustainable public transportation. ...
This paper presents a trajectory clustering method to discover spatial and temporal travel patterns ...
AbstractThis paper highlights and validates the use of shape analysis using Mathematical Morphology ...
There is significant interest in the data mining and network management communities about the need t...
Traffic congestion clustering judgment is a fundamental problem in the study of traffic jam warning....
Many traffic management strategies, such as the deployment of intelligent transportation systems, re...
Massive data from different sources are becoming available in transportation field, and spurring new...
Analysing the traffic data is a very important topic to improve traffic efficiency. It has no way to...
The study focuses on mapping spatiotemporal patterns and detecting the potential drivers of traffic ...