Title of article :
Probabilistic robust design for covariance minimization of nonlinear system
Author/Authors :
XinJiang Lu، نويسنده , , Han-Xiong Li، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
A linear or second-order model is usually used to approximate a practical nonlinear system in probabilistic robust designs. This approximation often makes these designs less effective when the system has strong nonlinearity as well as large uncontrollable variation. In this paper, a novel probabilistic design approach is proposed to design a nonlinear system to be robust under circumstance of large random variation. First, a variable sensitivity approach is employed to place the nonlinear influence under the sensitivity matrix of the covariance model. On this basis, a robust design approach is proposed to minimize the influence of random variation in relation to the performance covariance. Since this proposed approach considers both nonlinear influence and probabilistic distribution in a large uncertain region, it can effectively ensure robustness of nonlinear systems even if large random variation exists.
Keywords :
Nonlinear system , Large random variation , Robust design , Variable sensitivity , Covariance
Journal title :
Mechanism and Machine Theory
Journal title :
Mechanism and Machine Theory