This study presents a multi-objective optimization model for the urban electric transit network problem with the aim of simultaneously designing the layout of bus routes, the frequency and the location and size of charging stations by making a tradeoff between two inconsistent objectives from the perspectives of passengers and operators. A Pareto artificial fish swarm algorithm (PAFSA) embedded with the genetic algorithm (GA) is developed to solve the proposed model. The PAFSA is designed to iteratively search for the proper network configuration satisfying two conflicting objectives. During which, the demand assignment with real-time transit information is performed to update the frequency of each newly designed route. The GA embedded into...
Transit route network design for urban bus systems involves the selection of a set of routes and the...
This paper considers solving a biobjective urban transit routing problem with a genetic algorithm ap...
The purpose of this work is to create an efficient optimization framework for demand-responsive feed...
The transit network design problem (TNDP) aims to find a set of routes and corresponding frequencies...
The multi-objective transit network design and frequency setting problem (TNDFSP) involves finding a...
The research presented in this paper proposes a Particle Swarm Optimization (PSO) approach for solv...
The transit network design problem is concerned with the finding of a set of routes with correspondi...
Layouts of bus networks in cities are always irrational currently, transport service frequencies als...
The transportation network design and frequency setting problem concerns the optimization of transpo...
The problem of road congestion occurs in most of the urban cities in the world. An e±cient public tr...
Internationally, there are heightened demands for efficient public transportation systems due to hig...
Significant research efforts have been recently devoted to city bus transport system electrification...
Electric buses have long been recognized as a promising direction for offering sustainable public tr...
Evolutionary algorithms have been used extensively over the past 2 decades to provide solutions to t...
In order to minimize the total time cost of all the trips, a new transit network optimization model ...
Transit route network design for urban bus systems involves the selection of a set of routes and the...
This paper considers solving a biobjective urban transit routing problem with a genetic algorithm ap...
The purpose of this work is to create an efficient optimization framework for demand-responsive feed...
The transit network design problem (TNDP) aims to find a set of routes and corresponding frequencies...
The multi-objective transit network design and frequency setting problem (TNDFSP) involves finding a...
The research presented in this paper proposes a Particle Swarm Optimization (PSO) approach for solv...
The transit network design problem is concerned with the finding of a set of routes with correspondi...
Layouts of bus networks in cities are always irrational currently, transport service frequencies als...
The transportation network design and frequency setting problem concerns the optimization of transpo...
The problem of road congestion occurs in most of the urban cities in the world. An e±cient public tr...
Internationally, there are heightened demands for efficient public transportation systems due to hig...
Significant research efforts have been recently devoted to city bus transport system electrification...
Electric buses have long been recognized as a promising direction for offering sustainable public tr...
Evolutionary algorithms have been used extensively over the past 2 decades to provide solutions to t...
In order to minimize the total time cost of all the trips, a new transit network optimization model ...
Transit route network design for urban bus systems involves the selection of a set of routes and the...
This paper considers solving a biobjective urban transit routing problem with a genetic algorithm ap...
The purpose of this work is to create an efficient optimization framework for demand-responsive feed...