The classical ant colony algorithm has the disadvantages of initial search blindness, slow convergence speed and easy to fall into local optimum when applied to mobile robot path planning. This paper presents an improved ant colony algorithm in order to solve these disadvantages. First, the algorithm use A* search algorithm for initial search to generate uneven initial pheromone distribution to solve the initial search blindness problem. At the same time, the algorithm also limits the pheromone concentration to avoid local optimum. Then, the algorithm optimizes the transfer probability and adopts the pheromone update rule of "incentive and suppression strategy" to accelerate the convergence speed. Finally, the algorithm builds an adaptive m...
As technologies are advancing, demand for an intelligent mobile robot also increases. In autonomous ...
An improved ant colony algorithm, differential evolution chaos ant colony optimization (DEACO) algor...
Aiming at the problems of long search time and local optimal solution of ant colony algorithm (ACA) ...
Ant two-way parallel searching strategy is adopted to accelerate searching speed, but it is clearly ...
This paper uses the grid method with coding tactic based on effective vertexes of barriers (EVB-CT-G...
Ant two-way parallel searching strategy presented in [1] is adopted to utilize cooperation ability b...
This paper proposes an improved ant colony algorithm to achieve efficient searching capabilities of ...
In order to solve the problems of deadlock, slow convergence, easy to get into local optimum and une...
The conventional ant colony algorithm is easy to fall into the local optimal in some complex environ...
AbstractThe basic ant colony algorithm for mobile robot path planning exists many problems, such as ...
This paper presents an improved ant colony algorithm for the path planning of the omnidirectional mo...
Under the condition of known static environment and dynamic environment, an improved ant colony opti...
Ant colony algorithm suffers drawbacks such as slow convergence and easy to trap into local optimum,...
For the problem of mobile robot’s path planning under the known environment, a path planning method ...
ABSTRACT This paper presents an improved ant system algorithm for path planning of the mobile robo...
As technologies are advancing, demand for an intelligent mobile robot also increases. In autonomous ...
An improved ant colony algorithm, differential evolution chaos ant colony optimization (DEACO) algor...
Aiming at the problems of long search time and local optimal solution of ant colony algorithm (ACA) ...
Ant two-way parallel searching strategy is adopted to accelerate searching speed, but it is clearly ...
This paper uses the grid method with coding tactic based on effective vertexes of barriers (EVB-CT-G...
Ant two-way parallel searching strategy presented in [1] is adopted to utilize cooperation ability b...
This paper proposes an improved ant colony algorithm to achieve efficient searching capabilities of ...
In order to solve the problems of deadlock, slow convergence, easy to get into local optimum and une...
The conventional ant colony algorithm is easy to fall into the local optimal in some complex environ...
AbstractThe basic ant colony algorithm for mobile robot path planning exists many problems, such as ...
This paper presents an improved ant colony algorithm for the path planning of the omnidirectional mo...
Under the condition of known static environment and dynamic environment, an improved ant colony opti...
Ant colony algorithm suffers drawbacks such as slow convergence and easy to trap into local optimum,...
For the problem of mobile robot’s path planning under the known environment, a path planning method ...
ABSTRACT This paper presents an improved ant system algorithm for path planning of the mobile robo...
As technologies are advancing, demand for an intelligent mobile robot also increases. In autonomous ...
An improved ant colony algorithm, differential evolution chaos ant colony optimization (DEACO) algor...
Aiming at the problems of long search time and local optimal solution of ant colony algorithm (ACA) ...