The application of simulated annealing to the global optimization of a function on a compact subset of R^d is discussed. For the Langevin algorithm the class of convergent schedules depends on some a priori knowledge about the form of the function. It is shown that this problem disappears by using the simplest annealing algorithm of jump type, which can also be improved by performing local searches between two consecutive jump times. The resulting algorithm is essentially a multistart technique controlled by an annealing schedule
A new multiobjective simulated annealing algorithm for continuous optimization problems is presented...
In this work we consider the problem of finding all the global maximizers of a given nonlinear optim...
Hide-and-Seek is a powerful yet simple and easily implemented continuous simulated annealing algorit...
AbstractThe application of simulated annealing to the global optimization of a function on a compact...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
AbstractA fast descent algorithm, resorting to a “stretching” function technique and built on one hy...
Simulated annealing is a global optimization method that distinguishes between different local optim...
AbstractA derivative-free simulated annealing driven multi-start algorithm for continuous global opt...
All topics in this dissertation are centered around global optimization problems. The major part of ...
Abstract Simulated annealing is a popular local search meta-heuristic used to address discrete and, ...
In this paper we consider the problem of finding all the global maximizers of a given nonlinear opti...
Simulated annealing is a popular method for approaching the solution of a global optimization proble...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
In this paper a parallel algorithm for simulated annealing (S.A.) in the continuous case, the Multip...
In this work we consider the problem of finding all the global maximizers of a given nonlinear optim...
A new multiobjective simulated annealing algorithm for continuous optimization problems is presented...
In this work we consider the problem of finding all the global maximizers of a given nonlinear optim...
Hide-and-Seek is a powerful yet simple and easily implemented continuous simulated annealing algorit...
AbstractThe application of simulated annealing to the global optimization of a function on a compact...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
AbstractA fast descent algorithm, resorting to a “stretching” function technique and built on one hy...
Simulated annealing is a global optimization method that distinguishes between different local optim...
AbstractA derivative-free simulated annealing driven multi-start algorithm for continuous global opt...
All topics in this dissertation are centered around global optimization problems. The major part of ...
Abstract Simulated annealing is a popular local search meta-heuristic used to address discrete and, ...
In this paper we consider the problem of finding all the global maximizers of a given nonlinear opti...
Simulated annealing is a popular method for approaching the solution of a global optimization proble...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
In this paper a parallel algorithm for simulated annealing (S.A.) in the continuous case, the Multip...
In this work we consider the problem of finding all the global maximizers of a given nonlinear optim...
A new multiobjective simulated annealing algorithm for continuous optimization problems is presented...
In this work we consider the problem of finding all the global maximizers of a given nonlinear optim...
Hide-and-Seek is a powerful yet simple and easily implemented continuous simulated annealing algorit...