2024
DOI: 10.3389/fpls.2024.1323296
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Application of electronic nose and machine learning used to detect soybean gases under water stress and variability throughout the daytime

Paulo Sergio De Paula Herrmann,
Matheus dos Santos Luccas,
Ednaldo José Ferreira
et al.

Abstract: The development of non-invasive methods and accessible tools for application to plant phenotyping is considered a breakthrough. This work presents the preliminary results using an electronic nose (E-Nose) and machine learning (ML) as affordable tools. An E-Nose is an electronic system used for smell global analysis, which emulates the human nose structure. The soybean (Glycine Max) was used to conduct this experiment under water stress. Commercial E-Nose was used, and a chamber was designed and built to conduc… Show more

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