New frontiers in Bayesian optimal design for applied inverse problems
Acronym
BODAIP
Description of the granted funding
While available computational resources seem ever-increasing, the data acquisition in many large-scale scientific problems will remain restricted or expensive also in future due to fundamental physical or economical limitations. This project studies Bayesian optimal experimental design, which aims at maximizing the value of experimental data. We develop methods that guide and accelerate computations needed for large-scale nonlinear inverse problems. The developed techniques are applied to magnetorelaxometry imaging, internal temperature measurements for validating models for iron loss in electric motors, and head imaging by electrical impedance tomography.
Show moreStarting year
2022
End year
2026
Granted funding
Funder
Research Council of Finland
Funding instrument
Academy projects
Other information
Funding decision number
348503
Fields of science
Mathematics
Research fields
Sovellettu matematiikka
Identified topics
computer science, information science, algorithms