This study presents an efficient metaheuristic approach for combinatorial optimisation and scheduling problems. The hybrid algorithm proposed in this paper integrates different features of several well-known heuristics. The core component of the proposed algorithm is a simulated annealing module. This component utilises three types of memories, one long-term memory and two short-term memories. The main characteristics of the proposed metaheuristic are the use of positive (reinforcement) and negative (inhibitory) memories as well as an evolution-based diversification approach. Job shop scheduling is selected to evaluate the performance of the proposed method. Given the benchmark problem, an extended version of the proposed method is also dev...
This paper presents a Hybrid Evolutionary Algorithm (HEA) to solve the Job Shop Scheduling Problem (...
AbstractThere are different reasons, such as a preventive maintenance, for the lack of machines in t...
A new issue for combinatorial optimization problems is to incorporate local search into the framewor...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to m...
In the last few decades, several effective algorithms to solve combinatorial problems have been prop...
Scheduling problems have been studied extensively in the literature but because they are so hard to ...
Scheduling is considered as an important topic in production management and combinatorial optimizati...
In this paper, the Evolutionary Simulated Annealing (ESA) algorithm, its distributed implementation ...
Abstract This paper presents a simulated annealing search procedure developed to solve job shop sche...
The choice of a search algorithm can play a vital role in the success of a scheduling application. E...
This work proposes a hybrid metaheuristic (HMH) approach which integrates several features from tabu...
Complex nonlinear optimization problems require specific resolution techniques. These problems are o...
One of the attractive features of recent metaheuristics is in its robustness and simplicity. To inve...
[[abstract]]Complex optimisation problems with many degrees of freedom are often characterised by th...
We present here a hybrid algorithm for the Flexible Job-Shop Scheduling Problem (FJSSP). This proble...
This paper presents a Hybrid Evolutionary Algorithm (HEA) to solve the Job Shop Scheduling Problem (...
AbstractThere are different reasons, such as a preventive maintenance, for the lack of machines in t...
A new issue for combinatorial optimization problems is to incorporate local search into the framewor...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to m...
In the last few decades, several effective algorithms to solve combinatorial problems have been prop...
Scheduling problems have been studied extensively in the literature but because they are so hard to ...
Scheduling is considered as an important topic in production management and combinatorial optimizati...
In this paper, the Evolutionary Simulated Annealing (ESA) algorithm, its distributed implementation ...
Abstract This paper presents a simulated annealing search procedure developed to solve job shop sche...
The choice of a search algorithm can play a vital role in the success of a scheduling application. E...
This work proposes a hybrid metaheuristic (HMH) approach which integrates several features from tabu...
Complex nonlinear optimization problems require specific resolution techniques. These problems are o...
One of the attractive features of recent metaheuristics is in its robustness and simplicity. To inve...
[[abstract]]Complex optimisation problems with many degrees of freedom are often characterised by th...
We present here a hybrid algorithm for the Flexible Job-Shop Scheduling Problem (FJSSP). This proble...
This paper presents a Hybrid Evolutionary Algorithm (HEA) to solve the Job Shop Scheduling Problem (...
AbstractThere are different reasons, such as a preventive maintenance, for the lack of machines in t...
A new issue for combinatorial optimization problems is to incorporate local search into the framewor...