SYSYApr 19

System representations in subspaces of finite-sample signals and their application to data-driven fault detection

arXiv:2604.1744469.8h-index: 1
Predicted impact top 1% in SY · last 90 daysOriginality Incremental advance
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For control and fault detection researchers, it provides a theoretical foundation and practical method for data-driven fault detection in finite-sample settings.

This paper establishes equivalence between the fundamental lemma and finite-sample image subspaces, extending system representations to finite-sample signals. It develops a data-driven projection-based fault detection method using SVD for low-rank approximation, achieving improved detection performance over existing methods.

This paper deals with system representations in finite-sample signal subspaces and their application to data-driven fault detection. The first part addresses concepts of finite-sample image and kernel system representations and, associated with them, image and residual subspaces of finite-sample signals. On this basis, the equivalence between the fundamental lemma and finite-sample image subspace is demonstrated. While the image representation models the nominal system dynamics, the residual representation describes uncertainties in the input-output data and is essential for fault detection. This result extends the fundamental lemma and builds the basis for exploring data-driven fault detection. In the second part, a data-driven projection-based fault detection approach is developed. By means of a singular value decomposition, orthogonal projections onto the image and residual subspaces are realized in the context of a low-rank matrix approximation, leading to projection-based residual generation and evaluation. Finally, analysis of detection performance in the framework of matrix perturbation theory and comparison with existing data-driven fault detection methods are explored.

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