首页 /研究 /A hybrid neural-genetic multimodel parameter estimation algorithm
MANIPULATION

A hybrid neural-genetic multimodel parameter estimation algorithm

V. Petridis, E. Paterakis, Athanasios Kehagias

发表年份
1998
引用次数
32

摘要

We introduce a hybrid neural-genetic multimodel parameter estimation algorithm. The algorithm is applied to structured system identification of nonlinear dynamical systems. The main components of the algorithm are 1) a recurrent incremental credit assignment (ICRA) neural network, which computes a credit function for each member of a generation of models and 2) a genetic algorithm which uses the credit functions as selection probabilities for producing new generations of models. The neural network and genetic algorithm combination is applied to the task of finding the parameter values which minimize the total square output error: the credit function reflects the closeness of each model's output to the true system output and the genetic algorithm searches the parameter space by a divide-and-conquer technique. The algorithm is evaluated by numerical simulations of parameter estimation for a planar robotic manipulator and a waste water treatment plant.

关键词

Genetic algorithmArtificial neural networkAlgorithmComputer scienceEstimation theorySystem identificationNonlinear systemSelection (genetic algorithm)Population-based incremental learningIdentification (biology)

相关论文

查看 MANIPULATION 分类全部论文