Data-driven forced response analysis with min-max representations of nonlinear restoring forces
Akira Saito, Hiromu Fujita

TL;DR
This paper introduces a data-driven method using neural network-inspired piecewise linear springs to identify nonlinear restoring forces in mechanical systems, enabling accurate response analysis from free response data.
Contribution
The paper presents a novel approach employing min-max representations of nonlinear forces via neural network concepts, applicable to various nonlinearities including polynomial and piecewise-linear.
Findings
Successfully identified nonlinearities in Duffing and linear oscillators
Accurately modeled magnetic restoring forces from experimental data
Predicted steady-state responses matching original systems
Abstract
This paper discusses a novel data-driven nonlinearity identification method for mechanical systems with nonlinear restoring forces such as polynomial, piecewise-linear, and general displacement-dependent nonlinearities. The proposed method is built upon the universal approximation theorem that states that a nonlinear function can be approximated by a linear combination of activation functions in artificial neural network framework. The proposed approach utilizes piecewise linear springs with initial gaps to act as the activation functions of the neurons of artificial neural networks. A library of piecewise linear springs with initial gaps are constructed, and the contributions of the springs on the nonlinear restoring force are determined by solving the linear regression problems. The piecewise linear springs are realized by combinations of min and max functions with biases. The…
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Taxonomy
TopicsBladed Disk Vibration Dynamics · Vibration Control and Rheological Fluids · Structural Health Monitoring Techniques
