Christian Uhl: Extracting Dynamical Systems-Based Signals from Noisy and Incomplete Datasets
Автор: Machine Learning and Dynamical Systems Seminar
Загружено: 2026-02-25
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Title: Extracting Dynamical Systems-Based Signals from Noisy and Incomplete Datasets
Speaker: Christian Uhl (Ansbach University of Applied Sciences)
Abstract:
We present the theory and applications of a new signal decomposition algorithm called Dynamical Component Analysis (DyCA). DyCA optimizes the least-squares cost function of the linear portion of an assumed set of differential equations, representing a Koopman-based approach. This yields a generalized eigenvalue problem involving the correlation matrices of the original and time-shifted signals. Thus, deterministic signals can be extracted from data corrupted by component noise. Additionally, we present a robust version of DyCA that couples it with L2-based regularization. This enables the simultaneous reconstruction of data and extraction of dynamical components in the presence of additive noise or incomplete data.
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