Three optimization methods derived from natural sciences are considered for allocating data to multicomputer nodes. These are simulated annealing, genetic algorithms and neural networks. A number of design choices and the addition of preprocessing and postprocessing steps lead to versions of the algorithms which differ in solution qualities and execution times. In this paper the performances of these versions are critically evaluated and compared for test cases with different features. The performance criteria are solution quality, execution time, robustness, bias and parallelizability. Experimental results show that the physical algorithms produce better solutions than those of recursive bisection methods and that they have diverse propert...
At present, a significant part of optimization problems, particularly questions of combinatorial opt...
The work presents a way of performing optimization calculations on a parallel computer of the cluste...
A general method to design optimal sensor networks able to estimate process key variables within a r...
Three parallel physical optimization algorithms for allocating irregular data to multicomputer nodes...
Three physical optimization methods are considered in this paper for load balancing parallel computa...
The paper presents two new parallel solution strategies to solve complex multiple criteria problems ...
In this thesis, a new global optimization technique, its applications in particular to neural networ...
The paper presents an analysis of the use of optimization algorithms in parallel solutions and distr...
We experimentally analyze some properties of simulated annealing algorithms (SA) and genetic algorit...
We present three genetic algorithms (GAs) for allocating irregular data sets to multiprocessors. The...
Includes bibliographical references.We worked on two physical optimization algorithms, Mean Field An...
this paper we present a genetic algorithm that determines the schedule of an application and the top...
In the proposed algorithm, several single population genetic algorithms with different cross-over an...
Constrained optimization is an essential problem in artificial intelligence, operations research, ro...
Optimizing Boggle boards: An evaluation of parallelizable techniques i This paper’s objective is to ...
At present, a significant part of optimization problems, particularly questions of combinatorial opt...
The work presents a way of performing optimization calculations on a parallel computer of the cluste...
A general method to design optimal sensor networks able to estimate process key variables within a r...
Three parallel physical optimization algorithms for allocating irregular data to multicomputer nodes...
Three physical optimization methods are considered in this paper for load balancing parallel computa...
The paper presents two new parallel solution strategies to solve complex multiple criteria problems ...
In this thesis, a new global optimization technique, its applications in particular to neural networ...
The paper presents an analysis of the use of optimization algorithms in parallel solutions and distr...
We experimentally analyze some properties of simulated annealing algorithms (SA) and genetic algorit...
We present three genetic algorithms (GAs) for allocating irregular data sets to multiprocessors. The...
Includes bibliographical references.We worked on two physical optimization algorithms, Mean Field An...
this paper we present a genetic algorithm that determines the schedule of an application and the top...
In the proposed algorithm, several single population genetic algorithms with different cross-over an...
Constrained optimization is an essential problem in artificial intelligence, operations research, ro...
Optimizing Boggle boards: An evaluation of parallelizable techniques i This paper’s objective is to ...
At present, a significant part of optimization problems, particularly questions of combinatorial opt...
The work presents a way of performing optimization calculations on a parallel computer of the cluste...
A general method to design optimal sensor networks able to estimate process key variables within a r...