Assessing design changes in mechanical systems from simulation results requ
ires both accurate dynamic models and accurate values for parameters in the
models. Model parameters are often unavailable or difficult to measure. Th
is study details an identification procedure for determining optimal values
for unknown or estimated model parameters from experimental test data. The
resulting optimization problem is solved by Levenberg-Marquardt methods. P
artial derivative matrices needed for the optimization are computed through
sensitivity analysis. The sensitivity equations to be solved are generated
analytically. Unfortunately, not all parameters can be uniquely determined
using an identification procedure. An issue of parameter identifiability r
emains. Since a global identifiability test is impractical for even the sim
plest models, a local identifiability test is developed. Two examples are p
rovided. The first example highlights the test for parameter identifiabilit
y, while the second shows the usefulness of parameter identification by det
ermining vehicle suspension parameters from experimentally measured data.