An adaptive neuro-fuzzy inference based delay estimation system is proposed. The system is compared with other delay estimation models, and tested through simulation and observation values. Rules, fuzzification and inference are modeled by neuro-fuzzy. Hybrid algorithm has been used for training and tests. The rule base of the delay estimation system is constructed either following a mathematical model or from real-time traffic operational data. This study has shown that adaptive neuro-fuzzy technique, a method to predict vehicle delays at signalized junctions, can be successfully applied to modeling of traffic systems
In modern society nowadays, the transportation is playing an increasingly crucial role both in econo...
An optimal design of Adaptive Neuro-Fuzzy Inference System (ANFIS) traffic signal controller is pres...
Many controllers have applied the Adaptive Neural-Fuzzy Inference System (ANFIS) concept for optimiz...
Modeling vehicle delay has been an interesting subject for traffic engineers and urban planners. Det...
Modeling vehicle delay has been an interesting subject for traffic engineers and urban planners. Det...
A fuzzy logic based delay estimation system is proposed and modelled. Conventional method of delay s...
Adaptive Neural-Fuzzy Inference System (ANFIS) that integrates the best features of fuzzy systems an...
Adaptive Neural-Fuzzy Inference System (ANFIS) that integrates the best features of fuzzy systems an...
Current traffic lights are pre-programmed and use daily signal timing schedules, which contribute to...
Conventional models estimating vehicle delay are all established only based on technical factors wit...
Delay of vehicles at signalized junctions is one of the main criteria used for evaluation of perform...
Delay of vehicles at signalized junctions is one of the main criteria used for evaluation of control...
Delay of vehicles at signalized junctions is one of the main criteria used for evaluation of control...
The transport system in Singapore is well developed. Singapore is facing a first world public transp...
An adaptive neuro-fuzzy approach is employed to optimize the traffic cycle on Al-Rabia signalized in...
In modern society nowadays, the transportation is playing an increasingly crucial role both in econo...
An optimal design of Adaptive Neuro-Fuzzy Inference System (ANFIS) traffic signal controller is pres...
Many controllers have applied the Adaptive Neural-Fuzzy Inference System (ANFIS) concept for optimiz...
Modeling vehicle delay has been an interesting subject for traffic engineers and urban planners. Det...
Modeling vehicle delay has been an interesting subject for traffic engineers and urban planners. Det...
A fuzzy logic based delay estimation system is proposed and modelled. Conventional method of delay s...
Adaptive Neural-Fuzzy Inference System (ANFIS) that integrates the best features of fuzzy systems an...
Adaptive Neural-Fuzzy Inference System (ANFIS) that integrates the best features of fuzzy systems an...
Current traffic lights are pre-programmed and use daily signal timing schedules, which contribute to...
Conventional models estimating vehicle delay are all established only based on technical factors wit...
Delay of vehicles at signalized junctions is one of the main criteria used for evaluation of perform...
Delay of vehicles at signalized junctions is one of the main criteria used for evaluation of control...
Delay of vehicles at signalized junctions is one of the main criteria used for evaluation of control...
The transport system in Singapore is well developed. Singapore is facing a first world public transp...
An adaptive neuro-fuzzy approach is employed to optimize the traffic cycle on Al-Rabia signalized in...
In modern society nowadays, the transportation is playing an increasingly crucial role both in econo...
An optimal design of Adaptive Neuro-Fuzzy Inference System (ANFIS) traffic signal controller is pres...
Many controllers have applied the Adaptive Neural-Fuzzy Inference System (ANFIS) concept for optimiz...