GENETIC ALGORITHM IN UNCERTAIN ENVIRONMENTS FOR SOLVING STOCHASTIC PROGRAMMING PROBLEM
スポンサーリンク
概要
- 論文の詳細を見る
Many real problems with uncertainties may often be formulated as Stochastic Programmming Problem. In this study, Genetic Algorithm (GA) which has been recently used for solving mathematical programming problem is expanded for use in uncertain environments. The modified GA is referred as GA in uncertain environments (GAUCE). In the method, the objective function and/or the constraint are fluctuated according to the distribution functions of their stochastic variables. Firstly, the individual with highest frequency through all generations is nominated as the individual associated with the solution presenting the best expected value of objective function. The individual with highest frequency is associated with the solution by GAUCE. The proposed method is applied to Stochastic Optimal Assignment Problem, Stochastic Knapsack Problem and newly formulated Stochastic Image Compression Problem. Then, it has been proved that the solution by GAUCE has excellent agreement with the solution presenting the best expected value of objective function, incases of both Stochastic Optimal Assignment Problem and Stochastic Knapsack Problem. GAUCE is also successfully applied to Stochastic Image Compression Problem where the coefficients of discrete cosine transformation are treated as stochastic variables.
- 社団法人日本オペレーションズ・リサーチ学会の論文
著者
-
Tomita Shigeyuki
Computer Science And Systems Engineering Miyazaki University
-
Yoshitomi Yasunari
Department of Computer Science and Systems Engineering, Faculty of Engineering, Miyazaki University
-
Ikenoue Hiroko
Kumamoto National College of Technology
-
Takeba Toshifumi
Ohmiya Engineering Center, Meitec Corporation
-
Takeba Toshifumi
Ohmiya Engineering Center Meitec Corporation
-
Yoshitomi Y
Department Of Computer Science And Systems Engineering Faculty Of Engineering Miyazaki University
-
Yoshitomi Yasunari
Department Of Computer Science And Systems Engineering Faculty Of Engineering Miyazaki University
関連論文
- GENETIC ALGORITHM IN UNCERTAIN ENVIRONMENTS FOR SOLVING STOCHASTIC PROGRAMMING PROBLEM
- Neural Net Pattern Recognition Equation for Stereoscopic Vision