Structural Engineering and Mechanics

Volume 6, Number 8, 1998, pages 955-969

DOI: 10.12989/sem.1998.6.8.955

Soft computing with neural networks for engineering applications: Fundamental issues and adaptive approaches

Jamshid Ghaboussi and Xiping Wu

Abstract

Engineering problems are inherently imprecision tolerant. Biologically inspired soft computing methods are emerging as ideal tools for constructing intelligent engineering systems which employ approximate reasoning and exhibit imprecision tolerance. They also offer built-in mechanisms for dealing with uncertainty. The fundamental issues associated with engineering applications of the emerging soft computing methods are discussed, with emphasis on neural networks. A formalism for neural network representation is presented and recent developments on adaptive modeling of neural networks, specifically nested adaptive neural networks for constitutive modeling are discussed.

Key Words

neural networks, soft computing, computational mechanics, constitutive models.

Address

Ghaboussi J, Univ Illinois, Dept Civil Engn, Urbana, IL 61801 USA<br />Univ Illinois, Dept Civil Engn, Urbana, IL 61801 USA<br />Exxon Prod Res Co, Offshore Div, Houston, TX 77252 USA