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Erschienen in: The International Journal of Advanced Manufacturing Technology 7-8/2021

07.04.2021 | ORIGINAL ARTICLE

Flame stability analysis of flame spray pyrolysis by artificial intelligence

verfasst von: Jessica Pan, Joseph A. Libera, Noah H. Paulson, Marius Stan

Erschienen in: The International Journal of Advanced Manufacturing Technology | Ausgabe 7-8/2021

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Abstract

Flame spray pyrolysis (FSP) is a process used to synthesize nanoparticles through the combustion of an atomized precursor solution; this process has applications in catalysts, battery materials, and pigments. Current limitations revolve around understanding how to consistently achieve a stable flame and the reliable production of nanoparticles. Machine learning and artificial intelligence algorithms that detect unstable flame conditions in real time may be a means of streamlining the synthesis process and improving FSP efficiency. In this study, the FSP flame stability is first quantified by analyzing the brightness of the flame’s anchor point. This analysis is then used to label data for both unsupervised and supervised machine learning approaches. The unsupervised learning approach allows for autonomous labeling and classification of new data by representing data in a reduced dimensional space and identifying combinations of features that most effectively cluster it. The supervised learning approach, on the other hand, requires human labeling of training and test data but is able to classify multiple objects of interest (such as the burner and pilot flames) within the video feed. The accuracy of each of these techniques is compared against the evaluations of human experts. Both the unsupervised and supervised approaches can track and classify FSP flame conditions in real time to alert users of unstable flame conditions. This research has the potential to autonomously track and manage flame spray pyrolysis as well as other flame technologies by monitoring and classifying the flame stability.

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Literatur
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Zurück zum Zitat Dasgupta D et al (2020) Computational fluid dynamics modeling of flame spray pyrolysis for nanoparticle synthesis Dasgupta D et al (2020) Computational fluid dynamics modeling of flame spray pyrolysis for nanoparticle synthesis
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Zurück zum Zitat Reference Code. Juras, Evan. (https://github.com/ EdjeElectronics/TensorFlow- Object-Detection-API-Tutorial-Train-Multiple-Objects-Windows-10) [Internet]. Github; [cited 2019 Aug 15]. Available from: https://github.com/EdjeElectronics. Reference Code. Juras, Evan. (https://​github.​com/​ EdjeElectronics/TensorFlow- Object-Detection-API-Tutorial-Train-Multiple-Objects-Windows-10) [Internet]. Github; [cited 2019 Aug 15]. Available from: https://​github.​com/​EdjeElectronics.
Metadaten
Titel
Flame stability analysis of flame spray pyrolysis by artificial intelligence
verfasst von
Jessica Pan
Joseph A. Libera
Noah H. Paulson
Marius Stan
Publikationsdatum
07.04.2021
Verlag
Springer London
Erschienen in
The International Journal of Advanced Manufacturing Technology / Ausgabe 7-8/2021
Print ISSN: 0268-3768
Elektronische ISSN: 1433-3015
DOI
https://doi.org/10.1007/s00170-021-06884-z

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