計測自動制御学会論文集
Online ISSN : 1883-8189
Print ISSN : 0453-4654
ISSN-L : 0453-4654
System Identification Using Neural Networks with Parametric Sigmoid Functions
Mahmoud HASHEMINEJADJunichi MURATAKotaro HIRASAWASetsuo SAGARA
著者情報
ジャーナル フリー

1995 年 31 巻 3 号 p. 277-283

詳細
抄録
Nonlinear systems can be modeled by neural networks. However, choice of suitable network architecture is the most important problem. And “how to find the best activation function” is a persistent aspect of the architecture design. Here we have proposed a sigmoid function with one parameter which provides us not only the reduction of error bound but also the opportunity of obtaining better insight into the systems. The proposed function has the ability of recognizing linear and/or nonlinear parts of the system under study. After automatic training of this parameter along the weights, more information about the system will be available. Using this additional knowledge about structure of the system, one will be well equipped to attack control problems such as controller design using neural network model.
著者関連情報
© The Society of Instrument and Control Engineers (SICE)
次の記事
feedback
Top