Optimization of chemical mixers design via tensor trains and quantum computing
Chemical component design is a computationally challenging procedure that often entails iterative numerical modeling and authentic experimental testing. We demonstrate a novel optimization method, Tensor train Optimization (TetraOpt), for the shape optimization of components focusing on a Y-shaped m...
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Zusammenfassung: | Chemical component design is a computationally challenging procedure that
often entails iterative numerical modeling and authentic experimental testing.
We demonstrate a novel optimization method, Tensor train Optimization
(TetraOpt), for the shape optimization of components focusing on a Y-shaped
mixer of fluids. Due to its high parallelization and more extensive global
search, TetraOpt outperforms commonly used Bayesian optimization techniques in
accuracy and runtime. Besides, our approach can be used to solve general
physical design problems and has linear complexity in the number of optimized
parameters, which is highly relevant for complex chemical components.
Furthermore, we discuss the extension of this approach to quantum computing,
which potentially yields a more efficient approach. |
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DOI: | 10.48550/arxiv.2304.12307 |