School of Engineering - Dept. of Mechanical Engineering/Blekinge Institute of Technology
Abstract
Trial and error and the use of highly time-consuming methods are often
necessary for modeling, simulating and characterizing nonlinear dynamical
systems. However, for the rather common special case when a nonlinear system
has linear relations between many of its degrees of freedom there are
particularly interesting opportunities for more efficient approaches. The aim
of this thesis is to develop and validate new efficient methods for the
theoretical and experimental study of mechanical systems that include
significant zero-memory or hysteretic nonlinearities related to only small
parts of the whole system.
The basic idea is to take advantage of the fact that most of the system is
linear and to use much of the linear theories behind forced response
simulations. This is made possible by modeling the nonlinearities as external
forces acting on the underlying linear system. The result is very fast
simulation routines where the model is based on the residues and poles of the
underlying linear system. These residues and poles can be obtained
analytically, from finite element models or from experimental measurements,
making these forced response routines very versatile. Using this approach, a
complete nonlinear model contains both linear and nonlinear parts. Thus, it is
also important to have robust and accurate methods for estimating both the
linear and nonlinear system parameters from experimental data.
The results of this work include robust and user-friendly routines based on
sinusoidal and random noise excitation signals for characterization and
description of nonlinearities from experimental measurements. These routines
are used to create models of the studied systems. When combined with efficient
simulation routines, complete tools are created which are both versatile and
computationally inexpensive.
The developed methods have been tested both by simulations and with
experimental test rigs with promising results. This indicates that they are
useful in practice and can provide a basis for future research and development
of methods capable of handling more complex nonlinear systems