44417
2020
2020
eng
17
2
20
article
MDPI
Basel
1
2020-01-11
2020-01-11
--
Soil Nutrient Detection for Precision Agriculture Using Handheld Laser-Induced Breakdown Spectroscopy (LIBS) and Multivariate Regression Methods (PLSR, Lasso and GPR)
Precision agriculture (PA) strongly relies on spatially differentiated sensor information. Handheld instruments based on laser-induced breakdown spectroscopy (LIBS) are a promising sensor technique for the in-field determination of various soil parameters. In this work, the potential of handheld LIBS for the determination of the total mass fractions of the major nutrients Ca, K, Mg, N, P and the trace nutrients Mn, Fe was evaluated. Additionally, other soil parameters, such as humus content, soil pH value and plant available P content, were determined. Since the quantification of nutrients by LIBS depends strongly on the soil matrix, various multivariate regression methods were used for calibration and prediction. These include partial least squares regression (PLSR), least absolute shrinkage and selection operator regression (Lasso), and Gaussian process regression (GPR). The best prediction results were obtained for Ca, K, Mg and Fe. The coefficients of determination obtained for other nutrients were smaller. This is due to much lower concentrations in the case of Mn, while the low number of lines and very weak intensities are the reason for the deviation of N and P. Soil parameters that are not directly related to one element, such as pH, could also be predicted. Lasso and GPR yielded slightly better results than PLSR. Additionally, several methods of data pretreatment were investigated.
Sensors
10.3390/s20020418
1424-8220
Universität Potsdam
PA 2020_006
1243.51
418
<a href="https://doi.org/10.25932/publishup-44418">Zweitveröffentlichung in der Schriftenreihe Postprints der Universität Potsdam : Mathematisch-Naturwissenschaftliche Reihe ; 815</a>
CC-BY - Namensnennung 4.0 International
Alexander Erler
Daniel Riebe
Toralf Beitz
Hans-Gerd Löhmannsröben
Robin Gebbers
eng
uncontrolled
LIBS
eng
uncontrolled
lasso
eng
uncontrolled
PLS regression
eng
uncontrolled
gaussian processes
eng
uncontrolled
soil
eng
uncontrolled
precision agriculture
eng
uncontrolled
nutrients
Ingenieurwissenschaften und zugeordnete Tätigkeiten
open_access
Institut für Chemie
Referiert
Publikationsfonds der Universität Potsdam
Open Access
58964
2020
2020
eng
17
18
20
article
MDPI
Basel
1
2020-09-09
2020-09-09
--
Classification of copper minerals by handheld laser-induced breakdown spectroscopy and nonnegative tensor factorisation
Laser-induced breakdown spectroscopy (LIBS) analysers are becoming increasingly common for material classification purposes. However, to achieve good classification accuracy, mostly noncompact units are used based on their stability and reproducibility. In addition, computational algorithms that require significant hardware resources are commonly applied. For performing measurement campaigns in hard-to-access environments, such as mining sites, there is a need for compact, portable, or even handheld devices capable of reaching high measurement accuracy. The optics and hardware of small (i.e., handheld) devices are limited by space and power consumption and require a compromise of the achievable spectral quality. As long as the size of such a device is a major constraint, the software is the primary field for improvement. In this study, we propose a novel combination of handheld LIBS with non-negative tensor factorisation to investigate its classification capabilities of copper minerals. The proposed approach is based on the extraction of source spectra for each mineral (with the use of tensor methods) and their labelling based on the percentage contribution within the dataset. These latent spectra are then used in a regression model for validation purposes. The application of such an approach leads to an increase in the classification score by approximately 5% compared to that obtained using commonly used classifiers such as support vector machines, linear discriminant analysis, and the k-nearest neighbours algorithm.
Sensors
10.3390/s20185152
32917027
1424-8220
outputup:dataSource:PubMed:2020
5152
WOS:000581205200001
Zdunek, R (corresponding author), Wroclaw Univ Sci & Technol, Fac Elect, Dept Field Theory Elect Circuits & Optoelect, Wybrzeze Wyspianskiego 27, PL-50370 Wroclaw, Poland., michal.wojcik@pwr.edu.pl; pbrinkma@uni-potsdam.de; <br /> rafal.zdunek@pwr.edu.pl; riebe@uni-potsdam.de; beitz@uni-potsdam.de; <br /> sven.merk@ltb-berlin.de; katarzyna.cieslik@ltb-berlin.de; <br /> david.mory@ltb-berlin.de; arkadiusz.antonczak@pwr.edu.pl
German federal state of Brandenburg; European Regional Development Fund; (ERDF 2014-2020); economic development agency Brandenburg (WFBB) in the; LIBSqORE project [80172489]
Zdunek, Rafal
2023-04-24T08:00:39+00:00
sword
importub
filename=package.tar
6cdc7685411ce45f15a9901695e211b5
2052857-7
false
true
CC-BY - Namensnennung 4.0 International
Michal Wojcik
Pia Brinkmann
Rafał Zdunek
Daniel Riebe
Toralf Beitz
Sven Merk
Katarzyna Cieslik
David Mory
Arkadiusz Antonczak
eng
uncontrolled
LIBS
eng
uncontrolled
NTF
eng
uncontrolled
HALS
eng
uncontrolled
classification
eng
uncontrolled
copper minerals
Physik
Chemie und zugeordnete Wissenschaften
Institut für Chemie
Referiert
Import
Gold Open-Access
DOAJ gelistet