Feature-based design analysis for automatic classification of simulated non-linear responses using Machine Learning
Paper i proceeding, 2016
A practical concept design analysis approach for automatic processing and classification of simulated responses
is presented. Deterministic and nonlinear dynamics are studied under ideal loading and low noise
conditions to determine fundamental system properties, how they vary and possibly interact. Responses
should be classified into characteristic types, such as periodic or nonperiodic, resonant or nonresonant, linear
or nonlinear, and further into subcategories such as single or dual frequency responses, hardening or
softening. For this, time-signals are evaluated using methods and metrics commonly used within structural
dynamics and then possibly associated with qualitative features according to measures based on a set of rulesof-
thumb criteria. A support vector machine is trained to determine whether a single feature, or combinations
of features, applies or not. This paper describes elements of the analysis, report practical considerations and
discuss the effectiveness of evaluated features using known few-degree-of-freedom examples.