Key points are not available for this paper at this time.
Industry 4.0 technologies demand robust fault detection and diagnosis systems distinguishing genuine causal relationships from spurious correlations in complex industrial processes. Traditional correlation-based approaches exhibit significant limitations with nonlinear dynamics, temporal dependencies, and uncertain operational conditions. This paper presents a physics-guided variational attention framework for causal discovery, integrating log-normal variational attention mechanisms with probabilistic interventions and domain expertise. The dual-attention architecture utilizes multivariate log-normal distributions to model asymmetric, positive-valued causal strengths, addressing limitations of symmetric Gaussian parameterizations. Physics-informed priors from operator knowledge are incorporated through Gaussian Mixture Models and transformed via moment-matching. Uncertainty quantification employs Monte Carlo sampling and conformal filtering for statistically rigorous causal validation. Evaluation across synthetic time-series data, Australian Refinery Process oscillation diagnosis, and Tennessee Eastman Process demonstrates superior performance versus baseline approaches. Log-normal variational attention consistently outperforms Gaussian alternatives, with physics-informed priors providing improvements under high-uncertainty conditions, establishing a robust foundation for industrial causal discovery applications.
Building similarity graph...
Analyzing shared references across papers
Loading...
Mohammadhossein Modirrousta
University of Alberta
Alireza Memarian
University of Alberta
Biao Huang
Imperial College London
Computers & Chemical Engineering
University of Alberta
Building similarity graph...
Analyzing shared references across papers
Loading...
Modirrousta et al. (Tue,) studied this question.
synapsesocial.com/papers/6a1c33a9d54006be995fb428 — DOI: https://doi.org/10.1016/j.compchemeng.2025.109420