Hybrid Adaptive Modeling in Process Monitoring: Leveraging Sequence Encoders and Physics-Informed Neural Networks
Mouad Elaarabi, Domenico Borzacchiello, Philippe Le Bot, Nathan Lauzeral, Sebastien Comas-Cardona

TL;DR
This paper presents a hybrid modeling approach combining sequence encoders and physics-informed neural networks to enable real-time, adaptable process monitoring across various systems with changing parameters and conditions.
Contribution
It introduces an architecture that encodes dynamic parameters and conditions for PINNs, allowing adaptation without retraining, demonstrated on multiple physical systems.
Findings
Model generalizes well with noise.
Successfully encodes pressure data for flow prediction.
Effectively monitors heat with real data.
Abstract
In this work, we explore the integration of Sequence Encoding for Online Parameter Identification with Physics-Informed Neural Networks to create a model that, once trained, can be utilized for real time applications with variable parameters, boundary conditions, and initial conditions. Recently, the combination of PINNs with Sparse Regression has emerged as a method for performing dynamical system identification through supervised learning and sparse regression optimization, while also solving the dynamics using PINNs. However, this approach can be limited by variations in parameters or boundary and initial conditions, requiring retraining of the model whenever changes occur. In this work, we introduce an architecture that employs Deep Sets or Sequence Encoders to encode dynamic parameters, boundary conditions, and initial conditions, using these encoded features as inputs for the…
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Taxonomy
TopicsFault Detection and Control Systems · Advanced Data Processing Techniques · Reservoir Engineering and Simulation Methods
MethodsDeep Sets
