Noisy Measurement
Noisy measurement is a pervasive challenge across diverse scientific fields, hindering accurate data analysis and model building. Current research focuses on developing robust algorithms and models, including physics-informed neural networks, Kalman filters (both classical and deep learning variants), and various gradient descent methods, to effectively reconstruct signals and parameters from incomplete or corrupted data. These advancements are crucial for improving the reliability and accuracy of scientific inferences in areas ranging from fluid dynamics and quantum computing to sensor networks and medical imaging, ultimately leading to more precise and trustworthy results.
Papers
October 15, 2024
August 30, 2024
August 9, 2024
July 5, 2024
June 6, 2024
March 15, 2024
November 12, 2023
October 30, 2023
September 9, 2023
September 5, 2023
June 8, 2023
May 26, 2023
May 22, 2023
April 2, 2023
February 8, 2023
December 20, 2022
November 28, 2022
September 21, 2022