Current optimisation methods, especially stochastic methods, are short of intermediate data analysis and control. Moreover the intermediate data has rarely been interpreted into the knowledge useful for either optimisation itself or industry productions. In this paper, we proposed a new optimisation method featuring on the capability of intermediate data analysis and control without setting any computational burden on optimisation. The method makes use of the long Markov process whose concept is borrowed from that in the simulated annealing but meanwhile bypasses its inherent sequential nature by using the proposed conceptual pools to populate the generated solutions. Four simple optimisation problems were selected to investigate the validi...
This book presents state of the art contributes to Simulated Annealing (SA) that is a well-known pro...
How long should we run a stochastic global optimisation algorithm such as simulated annealing? How s...
ABSTRACT: In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for ap...
Current optimisation methods, especially stochastic methods, are short of intermediate data analysis...
Temperature is the control parameter of Simulated Annealing, one of the best-known local search opti...
The goal of the research out of which this monograph grew, was to make annealing as much as possible...
Advanced optimization techniques, based on analogies related to physical systems rather than on clas...
Simulated annealing is a combinatorial optimization method based on randomization techniques. The me...
Since its introduction as a generic heuristic for discrete optimisation in 1983, simulated annealing...
[[abstract]]Complex optimisation problems with many degrees of freedom are often characterised by th...
Though a global optimization procedure using a randomized algorithm and a commercial process simulat...
A useful measure of quality of a global optimisation algorithm such as simulated annealing is the le...
Simulated annealing is a combinatorial optimization method based on randomization techniques. The me...
Importance sampling Simulated annealing a b s t r a c t In this paper, we introduce a new efficient ...
In this thesis, a methodology for the integration of a general purpose heuristic optimization algori...
This book presents state of the art contributes to Simulated Annealing (SA) that is a well-known pro...
How long should we run a stochastic global optimisation algorithm such as simulated annealing? How s...
ABSTRACT: In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for ap...
Current optimisation methods, especially stochastic methods, are short of intermediate data analysis...
Temperature is the control parameter of Simulated Annealing, one of the best-known local search opti...
The goal of the research out of which this monograph grew, was to make annealing as much as possible...
Advanced optimization techniques, based on analogies related to physical systems rather than on clas...
Simulated annealing is a combinatorial optimization method based on randomization techniques. The me...
Since its introduction as a generic heuristic for discrete optimisation in 1983, simulated annealing...
[[abstract]]Complex optimisation problems with many degrees of freedom are often characterised by th...
Though a global optimization procedure using a randomized algorithm and a commercial process simulat...
A useful measure of quality of a global optimisation algorithm such as simulated annealing is the le...
Simulated annealing is a combinatorial optimization method based on randomization techniques. The me...
Importance sampling Simulated annealing a b s t r a c t In this paper, we introduce a new efficient ...
In this thesis, a methodology for the integration of a general purpose heuristic optimization algori...
This book presents state of the art contributes to Simulated Annealing (SA) that is a well-known pro...
How long should we run a stochastic global optimisation algorithm such as simulated annealing? How s...
ABSTRACT: In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for ap...