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arxiv 2502.15942 v1 pith:3AOJDXQL submitted 2025-02-21 physics.optics

Faster calculations of optical trapping using neural networks trained by T-matrix data: an application to micro and nanoplastics

classification physics.optics
keywords calculationsapplicationdatamicronanoplasticsnetworksneuraloptical
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We employ neural networks to improve and speed up optical force calculations for dielectric particles. The network is first trained on a limited set of data obtained through accurate light scattering calculations, based on the Transition matrix method, and then used to explore a wider range of particle dimensions, refractive indices, and excitation wavelengths. This computational approach is very general and flexible. Here, we focus on its application in the context of micro and nanoplastics, a topic of growing interest in the last decade due to their widespread presence in the environment and potential impact on human health and the ecosystem.

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