To enhance the convergence speed and calculation precision of the grey wolf optimization algorithm (GWO), this paper proposes a dynamic generalized opposition-based grey wolf optimization algorithm (DOGWO). A dynamic generalized opposition-based learning strategy enhances the diversity of search populations and increases the potential of finding better solutions which can accelerate the convergence speed, improve the calculation precision, and avoid local optima to some extent. Furthermore, 23 benchmark functions were employed to evaluate the DOGWO algorithm. Experimental results show that the proposed DOGWO algorithm could provide very competitive results compared with other analyzed algorithms, with a faster convergence speed, higher calc...
1193-1207This paper introduces one improved version of the Grey Wolf Optimization algorithm (GWO), o...
In this paper, an improved Grey Wolf Optimizer (GWO) algorithm, termed LGWO, is introduced. The enha...
To overcome the shortcomings of grey wolf optimization algorithm (GWO) such as being easy to fall in...
To enhance the convergence speed and calculation precision of the grey wolf optimization algorithm (...
The grey wolf optimization (GWO) algorithm is widely utilized in many global optimization applicatio...
In this paper, two novel meta-heuristic algorithms are introduced to solve global optimization probl...
Grey wolf optimization (GWO) is one of the recently proposed heuristic algorithms imitating the lead...
Abstract Grey wolf optimization (GWO) algorithm is a new emerging algorithm that is based on the soc...
This paper proposed an improved Grey Wolf Optimizer (GWO) to resolve the problem of instability and ...
The grey wolf optimization (GWO) is a nature inspired and meta-heuristic algorithm, it has successfu...
This article proposes an efficient meta-heuristic approach, namely, oppositional grey wolf optimizat...
The complexity of real-world problems motivated researchers to innovate efficient problem-solving te...
Most real-world optimization problems tackle a large number of decision variables, known as Large-Sc...
Abstract The grey wolf optimizer is an effective and well-known meta-heuristic algorithm, but it als...
Traditional grey wolf optimizers (GWOs) have difficulty balancing convergence and diversity when use...
1193-1207This paper introduces one improved version of the Grey Wolf Optimization algorithm (GWO), o...
In this paper, an improved Grey Wolf Optimizer (GWO) algorithm, termed LGWO, is introduced. The enha...
To overcome the shortcomings of grey wolf optimization algorithm (GWO) such as being easy to fall in...
To enhance the convergence speed and calculation precision of the grey wolf optimization algorithm (...
The grey wolf optimization (GWO) algorithm is widely utilized in many global optimization applicatio...
In this paper, two novel meta-heuristic algorithms are introduced to solve global optimization probl...
Grey wolf optimization (GWO) is one of the recently proposed heuristic algorithms imitating the lead...
Abstract Grey wolf optimization (GWO) algorithm is a new emerging algorithm that is based on the soc...
This paper proposed an improved Grey Wolf Optimizer (GWO) to resolve the problem of instability and ...
The grey wolf optimization (GWO) is a nature inspired and meta-heuristic algorithm, it has successfu...
This article proposes an efficient meta-heuristic approach, namely, oppositional grey wolf optimizat...
The complexity of real-world problems motivated researchers to innovate efficient problem-solving te...
Most real-world optimization problems tackle a large number of decision variables, known as Large-Sc...
Abstract The grey wolf optimizer is an effective and well-known meta-heuristic algorithm, but it als...
Traditional grey wolf optimizers (GWOs) have difficulty balancing convergence and diversity when use...
1193-1207This paper introduces one improved version of the Grey Wolf Optimization algorithm (GWO), o...
In this paper, an improved Grey Wolf Optimizer (GWO) algorithm, termed LGWO, is introduced. The enha...
To overcome the shortcomings of grey wolf optimization algorithm (GWO) such as being easy to fall in...