This paper analyses traffic prediction based on a Generic Self-Evolving Takagi-Sugeno-Kang (GSETSK) fuzzy neural network. Traffic prediction is a problem that requires online adaptive systems with high accuracy performance. The proposed GSETSK framework can learn incrementally with high accuracy without any prior assumption about the data sets. To keep an up-to-date fuzzy rule base, a novel `gradual'-forgetting-based rule pruning approach is proposed to unlearn outdated data by deleting obsolete rules. Experiments conducted on real-life traffic data confirm the validity of the design and the accuracy performance of the GSETSK system
The principal aim of this study was to develop a method for making a short-term prediction model of ...
Facilitating citizens with accurate traffic flow prediction increases the quality of life. Roadside ...
The selection of the most appropriate traffic control actions to solve non-recurrent traffic congest...
This paper develops a fuzzy-neural model (FNM) to predict the traffic flows in an urban street netwo...
Abstract—Information on the future state of traffic flow provides a solid foundation for the efficie...
To assist in the broadcasting of time-critical traffic information in an Internet of Vehicles (IoV) ...
Accurate estimation of the future state of the traffic is an attracting area for researchers in the ...
The transport system in Singapore is well developed. Singapore is facing a first world public transp...
In this paper, we propose a fuzzy system to control vehicle traffic flows on a street network. At a ...
AbstractAccurate estimation of the future state of the traffic is an attracting area for researchers...
Takagi-Sugeno neural fuzzy models (TS-models) have commonly been applied in the development of traff...
[[abstract]]This study presents a systematic process combining trajfic forecasting and data mining m...
Abstract— In an intelligent transportation system, traffic prediction is vital. Accurate traffic for...
In rainy weather, the accurate prediction of traffic status not only helps road traffic managers to ...
Efficient transport and communication systems lay the groundwork for Singapore’s urban development. ...
The principal aim of this study was to develop a method for making a short-term prediction model of ...
Facilitating citizens with accurate traffic flow prediction increases the quality of life. Roadside ...
The selection of the most appropriate traffic control actions to solve non-recurrent traffic congest...
This paper develops a fuzzy-neural model (FNM) to predict the traffic flows in an urban street netwo...
Abstract—Information on the future state of traffic flow provides a solid foundation for the efficie...
To assist in the broadcasting of time-critical traffic information in an Internet of Vehicles (IoV) ...
Accurate estimation of the future state of the traffic is an attracting area for researchers in the ...
The transport system in Singapore is well developed. Singapore is facing a first world public transp...
In this paper, we propose a fuzzy system to control vehicle traffic flows on a street network. At a ...
AbstractAccurate estimation of the future state of the traffic is an attracting area for researchers...
Takagi-Sugeno neural fuzzy models (TS-models) have commonly been applied in the development of traff...
[[abstract]]This study presents a systematic process combining trajfic forecasting and data mining m...
Abstract— In an intelligent transportation system, traffic prediction is vital. Accurate traffic for...
In rainy weather, the accurate prediction of traffic status not only helps road traffic managers to ...
Efficient transport and communication systems lay the groundwork for Singapore’s urban development. ...
The principal aim of this study was to develop a method for making a short-term prediction model of ...
Facilitating citizens with accurate traffic flow prediction increases the quality of life. Roadside ...
The selection of the most appropriate traffic control actions to solve non-recurrent traffic congest...