AbstractThis paper highlights and validates the use of shape analysis using Mathematical Morphology tools as a means to develop meaningful clustering of historical data. Furthermore, through clustering more appropriate grouping can be accomplished that can result in the better parameterization or estimation of models. This results in more effective prediction model development. Hence, in an effort to highlight this within the research herein, a Back-Propagation Neural Network is used to validate the classification achieved through the employment of MM tools. Specifically, the Granulometric Size Distribution (GSD) is used to achieve clustering of daily traffic flow patterns based solely on their shape. To ascertain the significance of shape ...
The biggest challenge of analysing network traffic dynamics of large-scale networks is its complexit...
This paper presents a trajectory clustering method to discover spatial and temporal travel patterns ...
AbstractThis paper presents a trajectory clustering method to discover spatial and temporal travel p...
This paper highlights and validates the use of shape analysis using Mathematical Morphology tools as...
AbstractThis paper highlights and validates the use of shape analysis using Mathematical Morphology ...
This paper highlights and validates the use of shape analysis using Mathematical Morphology tools as...
This dissertation proposes a methodology for traffic flow pattern analysis, its validation, and fore...
AbstractThis paper investigates application of clustering techniques in partitioning traffic flow da...
AbstractTraffic flow estimates play a key role for strategic and operational planning of transport n...
Classification of congestion patterns is important in many areas in traffic planning and management,...
Historical traffic patterns can be used for the prediction of traffic flows, as input for macroscopi...
Abstract. Packet header traces are widely used in network analysis. Header traces are the aggregate ...
Recognition of spatio-temporal traffic patterns at the network-wide level plays an important role in...
Classification of speed profiles is necessary to allow interpretation of automatic speed measurement...
Classification of speed profiles is necessary to allow interpretation of automatic speed measurement...
The biggest challenge of analysing network traffic dynamics of large-scale networks is its complexit...
This paper presents a trajectory clustering method to discover spatial and temporal travel patterns ...
AbstractThis paper presents a trajectory clustering method to discover spatial and temporal travel p...
This paper highlights and validates the use of shape analysis using Mathematical Morphology tools as...
AbstractThis paper highlights and validates the use of shape analysis using Mathematical Morphology ...
This paper highlights and validates the use of shape analysis using Mathematical Morphology tools as...
This dissertation proposes a methodology for traffic flow pattern analysis, its validation, and fore...
AbstractThis paper investigates application of clustering techniques in partitioning traffic flow da...
AbstractTraffic flow estimates play a key role for strategic and operational planning of transport n...
Classification of congestion patterns is important in many areas in traffic planning and management,...
Historical traffic patterns can be used for the prediction of traffic flows, as input for macroscopi...
Abstract. Packet header traces are widely used in network analysis. Header traces are the aggregate ...
Recognition of spatio-temporal traffic patterns at the network-wide level plays an important role in...
Classification of speed profiles is necessary to allow interpretation of automatic speed measurement...
Classification of speed profiles is necessary to allow interpretation of automatic speed measurement...
The biggest challenge of analysing network traffic dynamics of large-scale networks is its complexit...
This paper presents a trajectory clustering method to discover spatial and temporal travel patterns ...
AbstractThis paper presents a trajectory clustering method to discover spatial and temporal travel p...