A Physics Informed Machine Learning Framework for Optimal Sensor Placement and Parameter Estimation
Georgios Venianakis, Constantinos Theodoropoulos, Michail Kavousanakis

TL;DR
This paper presents a novel physics-informed machine learning framework that optimizes sensor placement for improved parameter estimation in distributed systems, leveraging PINNs and sensitivity analysis.
Contribution
It introduces a comprehensive PINN-based framework that integrates sensor placement optimization with parameter estimation using sensitivity functions and D-optimality.
Findings
Higher accuracy in parameter estimation with optimized sensor placement
Framework effective on complex reaction-diffusion-advection problems
Outperforms random or intuitive sensor configurations
Abstract
Parameter estimation remains a challenging task across many areas of engineering. Because data acquisition can often be costly, limited, or prone to inaccuracies (noise, uncertainty) it is crucial to identify sensor configurations that provide the maximum amount of information about the unknown parameters, in particular for the case of distributed-parameter systems, where spatial variations are important. Physics-Informed Neural Networks (PINNs) have recently emerged as a powerful machine-learning (ML) tool for parameter estimation, particularly in cases with sparse or noisy measurements, overcoming some of the limitations of traditional optimization-based and Bayesian approaches. Despite the widespread use of PINNs for solving inverse problems, relatively little attention has been given to how their performance depends on sensor placement. This study addresses this gap by introducing a…
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Taxonomy
TopicsModel Reduction and Neural Networks · Machine Learning in Materials Science · Gaussian Processes and Bayesian Inference
