Abstract
In this study, a hybrid uncertainties-based analysis and optimization method is presented for the designs of the powertrain mounting system (PMS) involving mixed uncertainties. In the presented method, the PMS parameters with sufficient data are treated as random variables, while those with limited information are defined as interval variables. Then, an uncertainty-based analysis method called as hybrid interval-random perturbation-central difference method (HIRP-CDM), is proposed to compute the hybrid interval-random outputs of the inherent characteristics of the PMS in concerned directions. In addition, the hybrid interval-random-Monte Carlo method (HIR-MCM) is developed to verify the computational accuracy of HIRP-CDM. Next, an optimization model mixed uncertainties is built up for the PMS design based on HIRP-CDM, in which the hybrid intervalrandom outputs of the concerned inherent characteristics are adopted to construct the design objective and constrains. The complex optimization problem can be effectively settled by means of HIRP-CDM. The effectiveness of the presented method is verified by a numerical example.
Published Version
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have