This paper attempts to introduce the application of Neuro fuzzy techniques for fulltime worker trip production estimations in Adelaide metropolitan area using the household/person characteristics such as age, vehicle ownership and distance from CBD. In the last 30 years, several linear regression models have been developed for this purpose. These models' linear structure does not seem suitable to predict highly nonlinear behaviour of urban transport systems. Consequently, intelligent modelling methods, as powerful nonlinear tools, have attracted much attention in the prediction of trip productions. In 1993, fuzzy logic and artificial neural networks were combined and neuro-fuzzy technique was emerged to model engineering systems. Since then...
This paper explores the potential capabilities of fuzzy and genetic fuzzy system approaches in urban...
Passenger flow modeling and station dwelling time estimation are significant elements for railway ma...
This study has proposed and empirically tested for the first time two adaptive neuro-fuzzy inference...
Abstract. One of the most important stages in the urban transportation planning procedure is predict...
Fuzzy inference has become a popular approach to modeling systems in which uncertainties associated ...
This study develops a model to forecast inbound tourism to Japan, using a combination of artificial ...
Trip distribution is the second step of the transport modelling process. Errors in this trip distrib...
Singapore has one of the most cost-efficient and well-developed public transport networks in the wor...
Traditional mode choice models consider travel modes of an individual in a consecutive trip to be in...
Trip distribution is the second important stage in the 4-step travel demand forecasting. The purpose...
Developing precise travel behavior models is important for estimating traffic demand and, consequent...
Summarization: This paper presents a novel approach to forecasting the success of a newly launched s...
Labour mobility is one of the key features of economic development and its characterizations are clo...
Thesis (Doctoral)--Izmir Institute of Technology, City and Regional Planning, Izmir, 2010Includes bi...
To keep the freeway networks in a good condition, road works such as maintenance and reconstruction ...
This paper explores the potential capabilities of fuzzy and genetic fuzzy system approaches in urban...
Passenger flow modeling and station dwelling time estimation are significant elements for railway ma...
This study has proposed and empirically tested for the first time two adaptive neuro-fuzzy inference...
Abstract. One of the most important stages in the urban transportation planning procedure is predict...
Fuzzy inference has become a popular approach to modeling systems in which uncertainties associated ...
This study develops a model to forecast inbound tourism to Japan, using a combination of artificial ...
Trip distribution is the second step of the transport modelling process. Errors in this trip distrib...
Singapore has one of the most cost-efficient and well-developed public transport networks in the wor...
Traditional mode choice models consider travel modes of an individual in a consecutive trip to be in...
Trip distribution is the second important stage in the 4-step travel demand forecasting. The purpose...
Developing precise travel behavior models is important for estimating traffic demand and, consequent...
Summarization: This paper presents a novel approach to forecasting the success of a newly launched s...
Labour mobility is one of the key features of economic development and its characterizations are clo...
Thesis (Doctoral)--Izmir Institute of Technology, City and Regional Planning, Izmir, 2010Includes bi...
To keep the freeway networks in a good condition, road works such as maintenance and reconstruction ...
This paper explores the potential capabilities of fuzzy and genetic fuzzy system approaches in urban...
Passenger flow modeling and station dwelling time estimation are significant elements for railway ma...
This study has proposed and empirically tested for the first time two adaptive neuro-fuzzy inference...