In this paper, a new fuzzy harmony search algorithm (FHS) for solving optimization problems is presented. FHS is based on a recent method using fuzzy logic for dynamic adaptation of the harmony memory accepting (HMR) and pitch adjustment (PArate) parameters that improve the convergence rate of traditional harmony search algorithm (HS). The objective of the method is to dynamically adjust the parameters in the range from 0.7 to 1. The impact of using fixed parameters in the harmony search algorithm is discussed and a strategy for efficiently tuning these parameters using fuzzy logic is presented. The FHS algorithm was successfully applied to different benchmarking optimization problems. The results of simulation and comparison studies demons...
This paper presents an adaptive harmony search algorithm for solving structural optimization problem...
The Harmony Search (HS) algorithm appeared around the year 2000 and it now has a substantial literat...
Harmony search (HS) is a derivative-free real parameter optimization algorithm. It draws inspiration...
In this paper, a new fuzzy harmony search algorithm (FHS) for solving optimization problems is prese...
This paper presents a method for dynamic parameter adaptation in the harmony search algorithm (HS) b...
This article focuses on the dynamic parameter adaptation in the harmony search algorithm using Type-...
In recent years, many researchers have utilized metaheuristic optimization algorithms along with fuz...
A Harmony Search (HS) algorithm is a population based-meta-heuristics approach that is superior in ...
A metaheuristic algorithm, called Harmony Search is quite highly applied in optimizing parameters in...
In this paper, we propose an improved harmony search algorithm named LHS with three key features: (i...
Many optimisation problems are dynamic in the sense that changes occur during the optimisation proce...
AbstractMany optimisation problems are dynamic in the sense that changes occur during the optimisati...
The performance of the Harmony Search (HS) algorithm is highly dependent on the parameter settings a...
Harmony search algorithm is the recently developed metaheuristic in the last decade. It mimics the b...
A novel global harmony search (NGHS) algorithm, as proposed in 2010, is an improved algorithm that c...
This paper presents an adaptive harmony search algorithm for solving structural optimization problem...
The Harmony Search (HS) algorithm appeared around the year 2000 and it now has a substantial literat...
Harmony search (HS) is a derivative-free real parameter optimization algorithm. It draws inspiration...
In this paper, a new fuzzy harmony search algorithm (FHS) for solving optimization problems is prese...
This paper presents a method for dynamic parameter adaptation in the harmony search algorithm (HS) b...
This article focuses on the dynamic parameter adaptation in the harmony search algorithm using Type-...
In recent years, many researchers have utilized metaheuristic optimization algorithms along with fuz...
A Harmony Search (HS) algorithm is a population based-meta-heuristics approach that is superior in ...
A metaheuristic algorithm, called Harmony Search is quite highly applied in optimizing parameters in...
In this paper, we propose an improved harmony search algorithm named LHS with three key features: (i...
Many optimisation problems are dynamic in the sense that changes occur during the optimisation proce...
AbstractMany optimisation problems are dynamic in the sense that changes occur during the optimisati...
The performance of the Harmony Search (HS) algorithm is highly dependent on the parameter settings a...
Harmony search algorithm is the recently developed metaheuristic in the last decade. It mimics the b...
A novel global harmony search (NGHS) algorithm, as proposed in 2010, is an improved algorithm that c...
This paper presents an adaptive harmony search algorithm for solving structural optimization problem...
The Harmony Search (HS) algorithm appeared around the year 2000 and it now has a substantial literat...
Harmony search (HS) is a derivative-free real parameter optimization algorithm. It draws inspiration...