Soil spectral library of Piauí State using machine learning for laboratory analysis in Northeastern Brazil

dc.contributor.authorMendes, Wanderson de Sousa
dc.contributor.authorBoechat, Cácio Luiz
dc.contributor.authorGualberto, Adriano Venicius Santana
dc.contributor.authorBarbosa, Ronny Sobreira
dc.contributor.authorSilva, Yuri Jacques Agra Bezerra da
dc.contributor.authorSaraiva, Paloma Cunha
dc.contributor.authorSena, Antonny Francisco Sampaio de
dc.contributor.authorDuarte, Lizandra de Sousa Luz
dc.date.accessioned2022-09-05T12:48:29Z
dc.date.available2022-09-05T12:48:29Z
dc.date.issued2020-12-14
dc.description.abstractSoil chemical and physical analyses are the major sources of data for agriculture. However, traditional soil analyses are time-consuming, not cost-efficient, and not environmentally friendly. An alternative to traditional soil analyses is soil spectroscopy. This technique is a low-cost and quick analytical method, which can be implemented in a laboratory and/or in-situ. Nevertheless, some spectrometers are expensive and do not contemplate the entire spectrum. Despite this limitation, the main objective of the study was to create a soil spectral library of the Piauí State using only the 1000–2500 nm range. In this sense, it was evaluated and standardized the soil spectral library by accessing the combination of smoothing, standard normal variate, continuum removal, and Savitzky-Golay derivative spectral preprocessing procedures with partial least squares, random forest, and cubist machine learning algorithms. It was collected 262 geo-referenced soil samples at the layer of 0.00–0.20 m across the entire Piauí State, representing most of its soil variability. The soil properties evaluated were pH(H 2 O), sand, clay, and soil organic carbon (SOC) contents. This study demonstrated that the Standard Normal Variate was one of the most promising preprocessing procedures to improve model predictions for pH(H 2 O), sand, and clay. For SOC and pH, the best overall results were without preprocessing the soil spectra. Moreover, the cubist model was the most accurate in predicting soil properties. Finally, our study showed evidence of the potential and feasibility of using this soil spectral library to estimate soil properties such as pH(H 2 O), sand, clay, and SOC.en
dc.identifier.citationMendes WS, Boechat CL, Gualberto AVS, Barbosa RS, Silva YJAB, Saraiva PC, Sena AFS, Duarte LSL. Soil spectral library of Piauí State using machine learning for laboratory analysis in Northeastern Brazil. Rev Bras Cienc Solo. 2021;45:e0200115.pt-BR
dc.identifier.issn1806-9657
dc.identifier.urihttps://locus.ufv.br//handle/123456789/29841
dc.language.isoengpt-BR
dc.publisherRevista Brasileira de Ciência do Solopt-BR
dc.relation.ispartofseriesVol. 45, 2021.pt-BR
dc.rightsCreative Commons Attribution Licensept-BR
dc.subjectsoil spectroscopyen
dc.subjectsoil predictionsen
dc.subjectshortwave infrareden
dc.subjectNIRen
dc.titleSoil spectral library of Piauí State using machine learning for laboratory analysis in Northeastern Brazilen
dc.typeArtigopt-BR

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