Resumen :
Sewage sludge application to agricultural soils is a common practice in several countries in the
European Union. Nevertheless, the application dose constitutes an essential aspect that must be taken
into account in order to minimize environmental impacts. In this study, near infrared reflectance
spectroscopy (NIRS) was used to estimate in sewage sludge samples several parameters related to
agronomic and environmental issues, such as the contents in organic matter, nitrogen and other
nutrients, metals and carbon fractions, among others. In our study (using 380 biosolid samples), two
regression models were fitted: the common partial least square regression (PLSR) and the penalized
signal regression (PSR). Using PLSR, NIRS became a feasible tool to estimate several parameters with
good goodness of fit, such as total organic matter, total organic carbon, total nitrogen, water-soluble
carbon, extractable organic carbon, fulvic acid-like carbon, electrical conductivity, Mg, Fe and Cr, among
other parameters, in sewage sludge samples. For parameters such as C/N ratio, humic acid-like carbon,
humification index, the percentage of humic acid-like carbon, the polymerization ratio, P, K, Cu, Pb, Zn,
Ni and Hg, the performance of NIRS calibrations developed with PLSR was not sufficiently good.
Nevertheless, the use of PSR provided successful calibrations for all parameters.
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