2021
DOI: 10.48550/arxiv.2111.07960
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Retrieval of aerosol properties from in situ, multi-angle light scattering measurements using invertible neural networks

Abstract: Atmospheric aerosols have a major influence on the earth's climate and public health. Hence, studying their properties and recovering them from light scattering measurements is of great importance. State of the art retrieval methods such as pre-computed look-up tables and iterative, physics-based algorithms can suffer from either accuracy or speed limitations. These limitations are becoming increasingly restrictive as instrumentation technology advances and measurement complexity increases. Machine learning al… Show more

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