Thesis (Doctoral)--Izmir Institute of Technology, City and Regional Planning, Izmir, 2010Includes bibliographical references (leaves: 89-96)Text in English; Abstract: Turkish and Englishix, 141 leavesTrip distribution modelling is one of the most active parts of travel demand analysis. In recent years, use of soft computing techniques has introduced effective modelling approaches to the trip distribution problem. Fuzzy Rule-Based System (FRBS) and Genetic Fuzzy Rule-Based System (GFRBS: fuzzy system improved by a knowledge base learning process with genetic algorithms) modelling of trip distribution are two of these new approaches. However, much of the potential of these techniques has not been demonstrated so far. The present study explore...
The eight basic elements to design genetic algorithms (GA) are described and applied to solve a low ...
Many different optimisation problems can be formulated on networks: For instance, we might be intere...
Recently, Science defined transportation as the most potent component of logistics. In addition, it ...
This paper explores the potential capabilities of fuzzy and genetic fuzzy system approaches in urban...
Thesis (Doctoral)--Izmir Institute of Technology, City and Regional Planning, Izmir, 2010Includes bi...
Abstract- This article examines possibilities for the application of soft computing techniques espec...
Trip distribution is the second important stage in the 4-step travel demand forecasting. The purpose...
Trip distribution finds prime place after trip generation in sequential modelling of travel demand t...
This paper seeks to determine the effects of uncertainty in out-of-vehicle times on route choice. Da...
Sequential travel demand analysis consists of four phases, namely, trip generation, trip distributio...
Trip distribution is the second step of the transport modelling process. Errors in this trip distrib...
Analysis of the results of the theory of fuzzy logic and the genetic algorithms to determine the cor...
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 paper presents a new approach that designs the flow of passengers in mass transportation system...
The eight basic elements to design genetic algorithms (GA) are described and applied to solve a low ...
Many different optimisation problems can be formulated on networks: For instance, we might be intere...
Recently, Science defined transportation as the most potent component of logistics. In addition, it ...
This paper explores the potential capabilities of fuzzy and genetic fuzzy system approaches in urban...
Thesis (Doctoral)--Izmir Institute of Technology, City and Regional Planning, Izmir, 2010Includes bi...
Abstract- This article examines possibilities for the application of soft computing techniques espec...
Trip distribution is the second important stage in the 4-step travel demand forecasting. The purpose...
Trip distribution finds prime place after trip generation in sequential modelling of travel demand t...
This paper seeks to determine the effects of uncertainty in out-of-vehicle times on route choice. Da...
Sequential travel demand analysis consists of four phases, namely, trip generation, trip distributio...
Trip distribution is the second step of the transport modelling process. Errors in this trip distrib...
Analysis of the results of the theory of fuzzy logic and the genetic algorithms to determine the cor...
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 paper presents a new approach that designs the flow of passengers in mass transportation system...
The eight basic elements to design genetic algorithms (GA) are described and applied to solve a low ...
Many different optimisation problems can be formulated on networks: For instance, we might be intere...
Recently, Science defined transportation as the most potent component of logistics. In addition, it ...