Robustness of Physics-Informed Neural Networks to Noise in Sensor Data

11/22/2022
by   Jian Cheng Wong, et al.
0

Physics-Informed Neural Networks (PINNs) have been shown to be an effective way of incorporating physics-based domain knowledge into neural network models for many important real-world systems. They have been particularly effective as a means of inferring system information based on data, even in cases where data is scarce. Most of the current work however assumes the availability of high-quality data. In this work, we further conduct a preliminary investigation of the robustness of physics-informed neural networks to the magnitude of noise in the data. Interestingly, our experiments reveal that the inclusion of physics in the neural network is sufficient to negate the impact of noise in data originating from hypothetical low quality sensors with high signal-to-noise ratios of up to 1. The resultant predictions for this test case are seen to still match the predictive value obtained for equivalent data obtained from high-quality sensors with potentially 10x less noise. This further implies the utility of physics-informed neural network modeling for making sense of data from sensor networks in the future, especially with the advent of Industry 4.0 and the increasing trend towards ubiquitous deployment of low-cost sensors which are typically noisier.

READ FULL TEXT

page 4

page 5

page 6

research
05/05/2021

Improved Surrogate Modeling of Fluid Dynamics with Physics-Informed Neural Networks

Physics-Informed Neural Networks (PINNs) have recently shown great promi...
research
10/18/2020

An energy-based error bound of physics-informed neural network solutions in elasticity

An energy-based a posteriori error bound is proposed for the physics-inf...
research
01/18/2023

Reconstructing Rayleigh-Benard flows out of temperature-only measurements using Physics-Informed Neural Networks

We investigate the capabilities of Physics-Informed Neural Networks (PIN...
research
05/19/2021

Physical Constraint Embedded Neural Networks for inference and noise regulation

Neural networks often require large amounts of data to generalize and ca...
research
08/24/2023

Hydrogen jet diffusion modeling by using physics-informed graph neural network and sparsely-distributed sensor data

Efficient modeling of jet diffusion during accidental release is critica...
research
02/17/2023

h-analysis and data-parallel physics-informed neural networks

We explore the data-parallel acceleration of physics-informed machine le...
research
03/15/2023

On the uncertainty analysis of the data-enabled physics-informed neural network for solving neutron diffusion eigenvalue problem

In practical engineering experiments, the data obtained through detector...

Please sign up or login with your details

Forgot password? Click here to reset