Abstract
Spray characterization has been an issue for process and product characterization for decades. Because of this, a convolutional neuronal network was developed to determine the droplet size from spray images. The images were taken using a digital camera, a light source, and a dark room. These were subsequently employed to design and train a convolutional neuronal network using open-source software packages and a desktop computer. The accuracy of the network droplet size determinations was checked with additional, independent images. The median drop size was assessed with a high accuracy of more than 99.8 % as the mean spray performance indicator. Additionally, the droplet size distribution measurements from the neural network method deviated from those from the reference method (laser diffraction) by less than 1.5 %. Convolutional neuronal networks can be applied to determine the spray performance using spray cone images. This approach could be useful for multiple applications.
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CITATION STYLE
Pieloth, D., Rodeck, M., Schaldach, G., & Thommes, M. (2023). Categorization of Sprays by Image Analysis with Convolutional Neuronal Networks. Chemical Engineering and Technology, 46(2), 264–269. https://doi.org/10.1002/ceat.202200356
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