Beyond Prediction: Interval Neural Networks for Uncertainty-Aware System Identification
Mehmet Ali Ferah, Tufan Kumbasar

TL;DR
This paper introduces interval neural networks for system identification that propagate uncertainty without probabilistic assumptions, improving prediction accuracy and calibration.
Contribution
It develops a systematic framework for uncertainty-aware neural network models, including Interval LSTM and NODE, with two training strategies and novel uncertainty representation analysis.
Findings
C-INN achieves superior point prediction accuracy.
J-INN provides more accurate and well-calibrated prediction intervals.
The framework effectively integrates deep learning with uncertainty modeling.
Abstract
System identification (SysID) is critical for modeling dynamical systems from experimental data, yet traditional approaches often fail to capture nonlinear behaviors. While deep learning offers powerful tools for modeling such dynamics, incorporating uncertainty quantification is essential to ensure reliable predictions. This paper presents a systematic framework for constructing and training interval Neural Networks (INNs) for uncertainty-aware SysID. By extending crisp neural networks into interval counterparts, we develop Interval LSTM and NODE models that propagate uncertainty through interval arithmetic without probabilistic assumptions. This design allows them to represent uncertainty and produce prediction intervals. For training, we propose two strategies: Cascade INN (C-INN), a two-stage approach converting a trained crisp NN into an INN, and Joint INN (J-INN), a one-stage…
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