About this Research Topic
Specific contributions related both to fundamental research and to engineering applications of advanced signal processing techniques and health monitoring algorithms for condition assessment, damage detection and reliability prognosis are welcome. A non-exhaustive list includes data-driven models for dynamics and vibrations of linear & nonlinear structural systems; robust outlier detection methods; probabilistic (e.g., Bayesian) and non-probabilistic methods with related computational tools for UQ and inverse analysis; surrogate models for reducing the substantial computational effort; uncertainty propagation methods for data-informed predictions of performance; theoretical and experimental modal identification; linear and nonlinear system identification; statistical system identification methods (maximum-likelihood, Bayesian inference) for parameter and state estimation; reliability and safety of dynamical systems. Papers dealing with experimental investigation and verification of theories are especially welcome.
Keywords: Structural Health Monitoring, Robust Diagnostic Tools, Uncertainty Quantification, System Identification, Model Updating
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