The explicit constraint force method for optimal experimental design
Conor Rowan

TL;DR
This paper explores the application of the explicit constraint force method (ECFM) to optimal experimental design, comparing it to traditional methods and analyzing its practical limitations in noisy measurement scenarios.
Contribution
The study introduces a constraint force-based formulation for optimal experimental design and evaluates its effectiveness against standard approaches.
Findings
ECFM tends to position measurements in stiff regions of the system.
Optimal experiments based on constraint forces are impractical with noisy measurements.
ECFM is not suitable for OED due to measurement noise sensitivity.
Abstract
The explicit constraint force method (ECFM) was recently introduced as a novel formulation of the physics-informed solution reconstruction problem, and was subsequently extended to inverse problems. In both solution reconstruction and inverse problems, model parameters are estimated with the help of measurement data. In practice, experimentalists seek to design experiments such that the acquired data leads to the most robust recovery of the missing parameters in a subsequent inverse problem. While there are well-established techniques for designing experiments with standard approaches to the inverse problem, optimal experimental design (OED) has yet to be explored with the ECFM formulation. In this work, we investigate OED with a constraint force objective. First, we review traditional approaches to OED based on the Fisher information matrix, and propose an analogous formulation based…
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Taxonomy
TopicsModel Reduction and Neural Networks · Numerical methods in inverse problems · Probabilistic and Robust Engineering Design
