Spectroscopy-based chemometrics combined machine learning modeling predicts cashew foliar macro- and micronutrients
[Display omitted] •Adequate variability in nutrient and spectral data is requisite for spectroscopy studies.•Vegetation indices and solo multivariate models poorly predicts cashew leaf nutrients.•The PLSR combined machine learning model predicts cashew leaf nutrients significantly. Precision nutrien...
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Veröffentlicht in: | Spectrochimica acta. Part A, Molecular and biomolecular spectroscopy Molecular and biomolecular spectroscopy, 2024-11, Vol.320, p.124639, Article 124639 |
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Sprache: | eng |
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•Adequate variability in nutrient and spectral data is requisite for spectroscopy studies.•Vegetation indices and solo multivariate models poorly predicts cashew leaf nutrients.•The PLSR combined machine learning model predicts cashew leaf nutrients significantly.
Precision nutrient management in orchard crops needs precise, accurate, and real-time information on the plant’s nutritional status. This is limited by the fact that it requires extensive leaf sampling and chemical analysis when it is to be done over more extensive areas like field- or landscape scale. Thus, rapid, reliable, and repeatable means of nutrient estimations are needed. In this context, lab-based remote sensing or spectroscopy has been explored in the current study to predict the foliar nutritional status of the cashew crop. Novel spectral indices (normalized difference and simple ratio), chemometric modeling, and partial least square regression (PLSR) combined machine learning modeling of the visible near-infrared hyperspectral data were employed to predict macro- and micronutrients content of the cashew leaves. The full dataset was divided into calibration (70 % of the full dataset) and validation (30 % of the full dataset) datasets. An independent validation dataset was used for the validation of the algorithms tested. The approach of spectral indices yielded very poor and unreliable predictions for all eleven nutrients. Among the chemometric models tested, the performance of the PLSR was the best, but still, the predictions were not acceptable. The PLSR combined machine learning modeling approach yielded acceptable to excellent predictions for all the nutrients except sulphur and copper. The best predictions were observed when PLSR was combined with Cubist for nitrogen, phosphorus, potassium, manganese, and zinc; support vector machine regression for calcium, magnesium, iron, copper, and boron; elastic net for sulphur. The current study showed hyperspectral remote sensing-based models could be employed for non-destructive and rapid estimation of cashew leaf macro- and micro-nutrients. The developed approach is suggested to employ within the operational workflows for site-specific and precision nutrient management of the cashew orchards. |
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ISSN: | 1386-1425 1873-3557 |
DOI: | 10.1016/j.saa.2024.124639 |