Path planning is the focus and difficulty of research in the field of mobile robots, and it is the basis for further research and applications of robots. In order to obtain the global optimal path of the mobile robot, an improved moth-flame optimization (IMFO) algorithm is proposed in this paper. The IMFO features the following two improvement. Firstly, referring to the spotted hyena optimization (SHO) algorithm, the concept of historical best flame average is introduced to improve the moth-flame optimization (MFO) algorithm update law to increase the ability of the algorithm to jump out of the local optimum; Secondly, the quasi-opposition-based learning (QOBL) is used to perturb the location, increase the population diversity and improve t...
Automatic parking path optimization is a key point for automatic parking. However, it is difficult t...
As technologies are advancing, demand for an intelligent mobile robot also increases. In autonomous ...
The classical ant colony algorithm has the disadvantages of initial search blindness, slow convergen...
The Moth flame optimization (MFO) algorithm belongs to the swarm intelligence family and is applied ...
The moth-flame optimization (MFO) algorithm is a novel nature-inspired heuristic paradigm. The main ...
In this paper, Improved Moth-Flame Optimization (IMFO) algorithm has been proposed for solving React...
<p>A novel bio-inspired optimization algorithm based on the navigation strategy of Moths in universe...
Moth-flame optimization (MFO) is a prominent problem solver with a simple structure that is widely u...
The original moth-flame optimization (MFO) algorithm neither generates high-performance flames, nor ...
Feature selection methods are used to select a subset of features from data, therefore only the usef...
In order to achieve the fastest fire-fighting purpose, warehouse autonomous mobile fire-fighting rob...
Mobile Robot is an extremely essential technology in the industrial world. Optimal path planning is ...
The conventional ant colony algorithm is easy to fall into the local optimal in some complex environ...
This paper uses the grid method with coding tactic based on effective vertexes of barriers (EVB-CT-G...
This article presents the implementation and comparison of fruit fly optimization (FOA), ant colony ...
Automatic parking path optimization is a key point for automatic parking. However, it is difficult t...
As technologies are advancing, demand for an intelligent mobile robot also increases. In autonomous ...
The classical ant colony algorithm has the disadvantages of initial search blindness, slow convergen...
The Moth flame optimization (MFO) algorithm belongs to the swarm intelligence family and is applied ...
The moth-flame optimization (MFO) algorithm is a novel nature-inspired heuristic paradigm. The main ...
In this paper, Improved Moth-Flame Optimization (IMFO) algorithm has been proposed for solving React...
<p>A novel bio-inspired optimization algorithm based on the navigation strategy of Moths in universe...
Moth-flame optimization (MFO) is a prominent problem solver with a simple structure that is widely u...
The original moth-flame optimization (MFO) algorithm neither generates high-performance flames, nor ...
Feature selection methods are used to select a subset of features from data, therefore only the usef...
In order to achieve the fastest fire-fighting purpose, warehouse autonomous mobile fire-fighting rob...
Mobile Robot is an extremely essential technology in the industrial world. Optimal path planning is ...
The conventional ant colony algorithm is easy to fall into the local optimal in some complex environ...
This paper uses the grid method with coding tactic based on effective vertexes of barriers (EVB-CT-G...
This article presents the implementation and comparison of fruit fly optimization (FOA), ant colony ...
Automatic parking path optimization is a key point for automatic parking. However, it is difficult t...
As technologies are advancing, demand for an intelligent mobile robot also increases. In autonomous ...
The classical ant colony algorithm has the disadvantages of initial search blindness, slow convergen...