Chemometric models for high-throughput biomass grading of the kelp Ecklonia radiata, using mid-infrared (MIR) and near-infrared (NIR) spectroscopy

The kelp Ecklonia radiata is a target species for aquaculture in the southern hemisphere, but the biomass quality varies both spatially and temporally, making high-throughput chemometric methods essential for biomass grading. We built partial least squares regression models and partial least squares...

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Veröffentlicht in:Algal research (Amsterdam) 2024-01, Vol.77, p.103352, Article 103352
Hauptverfasser: Nepper-Davidsen, Jacob, Magnusson, Marie, Lawton, Rebecca J., Fletcher, Dale, Holmes, Geoffrey, Glasson, Christopher R.K.
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Sprache:eng
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Zusammenfassung:The kelp Ecklonia radiata is a target species for aquaculture in the southern hemisphere, but the biomass quality varies both spatially and temporally, making high-throughput chemometric methods essential for biomass grading. We built partial least squares regression models and partial least squares discriminant analysis models using mid-infrared and near-infrared spectroscopy, based on 162 calibration samples and 24 validation samples. The near-infrared models generally outperformed the mid-infrared models based on both predictions and sensitivity to outliers. Near-infrared partial least squares regression models were highly accurate for predicting glucose, alginate, phlorotannins, and carbon content (relative prediction error 
ISSN:2211-9264
2211-9264
DOI:10.1016/j.algal.2023.103352