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Project

Data Efficient Machine Learning for Engineering Applications

The goal of this research is the development of novel techniques in surrogate modelling. Surrogate models are fast approximative models for otherwise complex and time-consuming high-fidelity computer simulations. They can be used in diverse engineering applications (electronics, mechanical engineering, etc.) for optimisation, exploration of the design space, sensitivity analysis, etc., where the computation of additional computer simulations would be too costly.

The construction of surrogate models requires the use of machine learning techniques on the outcome of computer simulations. Data efficiency is essential to extract the maximal amount of useful information from the smallest possible set of data points, as each new data point requires an additional costly high-fidelity simulation.

Date:1 Oct 2020 →  Today
Keywords:Simulations, Engineering Applications, Surrogate Models, Data Efficiency, Machine Learning
Disciplines:High performance computing, Numerical computation, Modelling and simulation