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Direct Determination of Contaminants, Major and Minor Nutrients in Solid Fertilizers using Laser-Induced Breakdown Spectroscopy (LIBS) Daniel Fernandes Andrade, and Edenir Rodrigues Pereira Filho J. Agric. Food Chem., Just Accepted Manuscript • Publication Date (Web): 27 Sep 2016 Downloaded from http://pubs.acs.org on September 28, 2016
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Direct Determination of Contaminants, Major and Minor Nutrients in
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Solid Fertilizers using Laser-Induced Breakdown Spectroscopy
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(LIBS)
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Daniel F. Andrade, Edenir Rodrigues Pereira-Filho*
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Grupo de Análise Instrumental Aplicada (GAIA), Departamento de Química
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(DQ), Centro de Ciências Exatas e de Tecnologia (CCET), Universidade
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Federal de São Carlos (UFSCar), São Carlos, São Paulo State, P.O. Box 676,
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Zip code 13565-905, Brazil
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* corresponding author: Edenir Rodrigues Pereira-Filho
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phone: +55 16 3351-8092
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fax: +55 16 3351-8350
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e-mail address:
[email protected] 16 17 18 19 20 21
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Abstract: Contaminants (Cd, Cr and Pb) as well as minor (B, Cu, Mn, Na,
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and Zn) and major (Ca and Mg) elements were directly determined in solid
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fertilizer samples using laser-induced breakdown spectroscopy (LIBS). Factorial
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designs were used to define the most appropriate LIBS parameters and pellet
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pressure on solid fertilizers. Emission lines for all the analytes were collected
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and employed 12 signal normalization modes. The best results were obtained
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using a laser energy of 75 mJ, a spot size of 50 µm, a pressure of 10 t/inch and
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a delay of 2.0 µs. Good correlation was obtained between the calibration
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models prediction using the proposed LIBS method and the reference values
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obtained with ICP-OES. The limits of detection (LOD) for the proposed method
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varying from 2 mg/kg (for Cd) to 1% (for Zn).
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Keywords: laser-induced breakdown spectroscopy (LIBS), fertilizers,
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chemometrics, solid sample analysis,
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Introduction
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Population growth and the increasing demand for food in recent years
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has brought challenges for agriculture in order to improve food quality with high
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productivity. Consequently, this increased demand has contributed to the
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intensification of soil fertilization, providing essential nutrients for the growth and
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development of crops. The use of fertilizers is common in agricultural
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applications for supplying the nutritional deficiencies of plants. Several fertilizer
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classes are available in the market like, natural, mineral, organic (e.g. animal
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manure) or organic mineral and residues from mines.1 Fertilizers can be
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composed of many different material sources and matrix types, being a source
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of contaminants. They may contain harmful substances such as potentially toxic
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elements like As, Cd, Cr and Pb among others. In this case, the development of
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reliable and inexpensive analytical procedures with a high analytical throughput
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is in urgent demand in several countries.2
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Considering that the determination of the fertilizer composition is of great
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importance, several techniques have been used for this purpose, such as
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inductively coupled plasma optical emission spectrometry (ICP-OES),3,4
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inductively coupled plasma mass spectrometry (ICP-MS),5,6 flame atomic
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absorption spectrometry (FAAS),7-9. However, with these techniques the
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procedures usually require conversion of solid samples into homogenous
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solutions prior to analysis, and it is necessary that samples are suitably
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prepared presenting both low dissolved solid content and acidity. The standard
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method specified by the United States Environmental Protection Agency (EPA)
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for the determination of elements in fertilizers dictates the use of wet digestion
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for sample dissolution.10 Laser-induced breakdown spectroscopy (LIBS) has
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become an attractive and popular technique for the direct analysis of solid
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samples in different fields. Using a single laser pulse, it is possible to detect the
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spectral characteristics of atomic and molecular species for several elements in
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the sample.11
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Over the last few years, LIBS technique has been applied in several
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fields,12-17 including fertilizer analysis.18-23 One of the major advantages of this
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technique is its capability of obtaining fast measurements of a range of
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elements simultaneously with minimal or no sample preparation. Nowadays,
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quantitative analysis methods using LIBS mainly include a calibration curve or
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multivariate methods,24 both of which require a comparative or reference
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technique. Furthermore, once the calibration method is established, the LIBS
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technique can be used to obtain compositional information of the sample in a
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short period of time. On the other hand, as various instrumental setups are
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presented in the literature, the reproducibility of results are compromised
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because the data is affected by several parameters like laser energy and
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wavelength and delay time25. In addition, problems related to sample surface
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and laser interaction with the sample can also reduce the reproducibility of the
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results.26,27 The studies published in the literature that analyzed fertilizers using
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LIBS18-23 present different instrumental configurations and reproducibility is
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clearly jeopardized. This type of situation is expected when an analytical
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technique is becoming established.
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The main goal of this study was the development of a LIBS analytical
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method for multi-element analysis of solid fertilizer samples. A commercial LIBS
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system was used and emission lines for B, Ca, Cd, Cr, Cu, Mg, Mn, Na, Pb and
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Zn were collected. Chemometric strategies were employed in order to optimize
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the equipment conditions. Emission lines selection free of interference is a
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challenge in LIBS and in this study a strategy combining multivariate and
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univariate calibration was tested.
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Materials and Methods Instrumentation
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Fertilizer samples were digested with a Speedwave 4 microwave system
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(Berghof, Eningen, Germany). The digests were analyzed by iCAP 6000 ICP-
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OES (Thermo Fisher, Madison, WI) in the radial viewing mode, and Table 1
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shows the instrumental parameters as well as wavelengths chosen for each
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analyte of interest.
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Direct solid sample analysis using LIBS was carried out with a model
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J200 (Applied Spectra, Fremont, CA) Q-switched Nd:YAG laser at 1064 nm with
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a single laser pulse with a duration of 8 ns at a frequency of 10 Hz. The
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maximum laser energy was 100 mJ, and the signal acquisition time was fixed at
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1.05 ms. Operational parameters of this instrument were controlled by Axiom
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2.5 software with an automated XYZ stage and a 1280×1024 CMOS
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(complementary metal-oxide semiconductor) color camera imaging system. The
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plasma emission was collected and focused into an optical fiber bundle coupled
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to a 6-channel CCD spectrometer covering wavelengths from 186 to 1042 nm
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(12288 variables).
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Sample, reagents and solutions
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A certified reference material (NIST SRM 695–Trace Elements in Multi-
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Nutrient Fertilizer) was analyzed in order to verify the accuracy of the
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measurements. Nine mineral fertilizer samples were furnished by LANAGRO
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(National Laboratory of Agriculture, Brazil) and employed for method evaluation.
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The laboratory samples were dried to constant weight and sieved in order to
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obtain particle size smaller than 42 µm.
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Aqueous multi-element standard solutions were prepared from stock
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standard solutions of 1000 mg/L (Fluka Analytical, Buchs SG, Switzerland) by
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subsequent dilutions in 2% v/v HNO3. All solutions were prepared with
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deionized water (resistivity > 18.2 MΩ cm) produced using a Milli-Q Plus Total
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Water System (Millipore Corp., Bedford, MA). Nitric acid (Merck, Darmstadt,
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Germany) was previously purified by sub-boiling distillation using Distillacid
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BSB-939-IR (Berghof, Eningen, Germany).
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Analytes reference concentrations
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In this part of experimental setup, AOAC Official Method 2006.328
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procedure applicable for the determination of As, Cd, Co, Cr, Pb, Mo, Ni and Se
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in all classes of fertilizers was used as a reference method. In the
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recommended microwave-assisted acid digestions for further ICP-OES
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determination, 1.0 g of sample was accurately weighed in TFM closed vessels
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(Berghof, Eningen, Germany), 10 mL of 65% w/w HNO3 was added and the
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sample was kept overnight at room temperature (approximately 14 h). The
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microwave heating program was established according to the following
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procedure: ramp temperature from ambient to 200 ºC in 15 min, hold at 200 ºC
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for 20 min and cooled down to room temperature. After sample mineralization,
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the extracts were transferred to 50 mL volumetric flasks, and the volume was
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made up with high purity deionized water.
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LIBS Analysis
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The fertilizer samples were weighed (approx. 500 mg) and pressed under
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10 t/inch to form pellets (12 mm diam.). Preliminary studies were carried out
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with pellet samples S2, S5 and S9 in order to investigate the effects of LIBS
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system parameters on the emission signal intensities of Ca(II) 393.37, Cu(I)
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515.32, Mg(I) 518.36, Mn(II) 257.61, Na(I) 589.59 and Zn(I) 481.05 nm lines.
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The variables chosen for preliminary experiments were laser energy (50 and 75
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mJ), delay time (0.5 and 1.0 µs), spot size (50 and 100 µm) and pellet pressure
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(5 and 10 t/inch). These variables were studied using a fractional factorial
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design assessed (24-1), and 8 experiments were performed (experiments 1 to 8).
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The variable levels were coded between -1 (lower level) and 1 (higher level).
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The first experiment is characterize by an energy of 50 mJ, a delay time of 0.5
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µs, a spot size of 50 µm and a pressure of 5 t/inch (all variables were coded as
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-1).
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After the identification of the most important variables, a second set of
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experiments was performed in order to obtain more information about the
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system assessed and identify adequate working conditions to cover all the
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analytes simultaneously. These experiments were configured in a central
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composite design,29,30 and the variables evaluated were laser energy (61-89
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mJ) and delay time (0-2 µs). These two variables were studied at 5 levels
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(experiments 9 to 19), and the variables spot size and pellet pressure were
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fixed.
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For each pellet, approximately 800 spectra (both sides of the pelletized
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samples) were obtained at different parts of the samples. These spectra were
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obtained in 18 lines, and in each one approximately 50 laser pulses were
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obtained. Each set of 6 lines was considered a replicate (n = 3). The following
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additional laser settings were used: a scan length of 9 mm, a laser repetition
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rate of 5.0 Hz, and a speed of 1.0 mm/s.
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Data evaluation
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For data processing and evaluation, the following computer programs were
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used:
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- Aurora (Applied Spectra) and National Institute of Standards and Technology
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(NIST)31 for emission lines identification of the analytes under determination;
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- Microsoft Excel for data matrices organization and calculating univariate
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calibration models;
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- Pirouette version 4.5 (Infometrix, Bothell, WA) and Matlab 2009a (The
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Matworks, Natick, MA) to calculate the PLS multivariate calibration models. In
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Matlab two homemade routines were used for data preliminary inspection: (1)
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libs_treat. The goal of this routine is to detect outlier spectra. In this case, for
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each sample (rows in the data matrix) are calculated: standard deviation, area,
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maximum and Euclidean norm. If an outlier is detected (for example, standard
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deviation equal to 0) this sample is manually removed and later 12
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normalization modes are calculated.32 (2) libs_par. After normalization using the
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previous routine, libs_par enables the calculation of signal-to-background ratio
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(SBR), and both signal area and height for a specified emission line. In order to
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use this routine it is necessary to establish the emission line intervals that
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contains the background and the signal.
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Results and Discussion
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ICP-OES determinations
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The certified reference material NIST SRM 695 was employed for quality
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control of the analytical procedure. After comparison between the certified and
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obtained (n = 3) concentrations, the calculated recovery values ranged from 77
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(for Zn) to 124% (for Cu).. In addition, an unpaired t test was calculated, and the
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obtained t value was compared with the tabulated one. In several cases, no
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significant difference between the reference and obtained concentration at 95%
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of confidence level was observed for the majority of the analytes.
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LIBS equipment conditions
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The properties of laser-induced plasmas are mainly affected by the laser
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operating conditions (i.e., laser wavelength, pulse energy and duration), as well
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as emission measurement parameters (i.e., delay time, gate width, amplification
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detector gain and emission line selection).26,33 In addition, the interaction of the
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laser with the sample is extremely dependent on the matrix, analyte
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homogeneity and sample surface.26 In this context, LIBS equipment parameters
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need to be optimized in order to obtain both high signal-to-noise and signal-to-
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background ratios (SNR and SBR) for all the emission lines monitored.
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First, the LIBS instrumental parameters (laser energy, delay time, and
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spot size) along with the pellet pressure were preliminary evaluated using
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fractional factorial design (experiments 1 to 8). The goal of this design was to
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establish an order of variables relevance. For the experiments performed in the
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variables evaluation, the desirability function was calculated to cover the SBR,
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signal area and signal height for Ca, Cu, Mg, Mn, Na and Zn. In this case, each
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response was coded from 0 (undesired response; the lowest SBR, area and
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height) to 1 (desired response; the highest SBR, area and height). Therefore,
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the individual desirability was combined into one single response (D, the global
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desirability),34,35 and effects were calculated for samples S2, S5 and S9 . The
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effects obtained were those related to individual variables (first order effects: 1,
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2, 3 and 4) and interactions between them (second order effects: 12, 13 and
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14). Other effects (for example, 23, 24, 34, 123, 124, 134, 234 and 1234) were
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not calculated because they are mixed with those already calculated. Variables
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1 (laser energy) and 2 (delay time) showed significant effects for Ca(II) 393.37,
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Cu(I) 515.32, Mg(I) 518.36, Mn(II) 257.61, Na(I) 589.59 and Zn(I) 481.05 nm
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emission measurements (effects higher than 0.1), and the second order
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interaction between these two variables (12) was the most significant (0.17).
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The effects of spot size (variable 3) and pellet pressure (variable 4) were of
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small magnitude, and for further experiments, they were fixed at 50 µm and 10
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t/inch, respectively.
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Using this approach, the laser energy and delay time that presented
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remarkable effects in LIBS analysis were re-evaluated for samples S2, S5 and
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S9 through central composite design (experiments 9 to 19) in order to obtain
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adequate conditions for the analytes of interest. For these experiments, three
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models were calculated using the global desirability (one for each sample), and
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the following 6 coefficients were obtained: constant (b0), linear coefficients (b1
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and b2), quadratic coefficients (b11 and b22) and interaction coefficient (b12).
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The significance of these coefficients was calculated using analysis of variance
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(ANOVA) table at the 95% confidence level.29,30
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Figure 1 shows the contour plot obtained after model calculation for
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sample S9. For samples S2 and S5, it was not possible to adjust a regression
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model with low lack of fit. Black squares in Figure 1 represent the fractional
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factorial design previously performed, and the best results were those using
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both a high energy and long delay time. The central point for the central
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composite design (white triangles) was the previous conditions characterized by
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an energy of 75 mJ and a delay time of 1.0 µs. From the contour plot depicted
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in Figure 1, it is observed that high desirability is obtained with an energy
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between 60 to 90 mJ and a delay time higher than 1.7 µs. In this case,
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adequate conditions were chosen using an energy of 75 mJ (intermediate value
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between 60 and 90) and a delay time of 2.0 µs (star in Figure 1). These
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conditions were tested for sample S9, and high SBRs, signal areas and signal
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heights were shown for Ca(II) 393.37, Cu(I) 515.32, Mg(I) 518.36, Mn(II)
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257.61, Na(I) 589.59 and Zn(I) 481.05 nm. These optimized parameters were
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applied in the further LIBS analyses of all samples.
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Univariate Calibration
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Spectral information obtained using LIBS has a high complexity due to
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the abundance of emission lines presented by some elements. In addition,
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signal fluctuation and sample heterogeneity can jeopardize the precision of the
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measurements. In this case, previous data processing is sometimes mandatory
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in order to minimize these problems.
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Before calibration models, the raw data were submitted to the following
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12 normalization signal modes:32 signal average; signal average normalized by
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individual norm (vector length), area (sum of all signals) and maximum (the
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highest signal); signal sum; signal sum normalized by individual norm, area and
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maximum; and signal average and sum after normalization by C emission lines
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(C(I) 193.09 and 247.86 nm). As a poor prediction ability was observed (higher
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prediction errors) using the most intense emission lines, an alternative was tried
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using multivariate calibration. Partial least squares (PLS) method was employed
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in order to construct 12 calibration models for each analyte using the entire
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signal profile to identify the most important emission lines, i.e., those that
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present the highest regression coefficients (186 to 1042 nm, 12288 variables)
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and the lowest errors evaluated through. This chemometric tool calculates
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principal component analysis (PCA) for spectral information (matrix X) and
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dependent variables (analytes concentration, matrix Y). The scores values from
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both matrices are combined and regression coefficients calculated. The highest
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coefficients indicates whose emission lines present a high linear correlation with
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the concentration. These emission lines were then selected, the area and height
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for each analyte were calculated using libs_par function , and univariate models
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were established. Figure 2 shows a pictorial description of this procedure.
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After regression vectors inspection, the emission lines selected were as
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follows: B(I) 249.68, Ca(II) 527.02, Cd(I) 467.81, Cr(I) 425.43, Cu(I) 510.55,
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Cu(I) 515.32, Cu(I) 521.81, Mg(I) 517.27, Mg(I) 518.36, Mn(I) 475.40, Mn(I)
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478.34, Mn(I) 482.35, Na(I) 588.99, Na(I) 589.59, Pb(I) 368.35, Zn(I) 334.50,
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Zn(I) 472.21 and Zn(I) 481.05) nm.
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Figure 3 shows the selected emission lines for samples to calculate the
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univariate calibration models. With the selected emission lines, univariate
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calibration models with a normalized data set were calculated, and Table 2
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shows some figures of merit obtained for the best results.
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The first row of Table 2 shows the parameters obtained for boron. The
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first column shows the univariate linear model obtained with the emission line B
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I 249.68 nm, and as can be observed, slope is significant with a 95%
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confidence level. The samples concentration range (second column) is typically
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high and the same behavior was observed for most of samples, with a wide
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range of concentrations from mg/kg for harmful elements (Cd and Cr) to %
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concentration for the other analytes. The third column shows the linear equation
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when the reference and predicted values are compared. As can be noted, the
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intercept is not significant (2409±3099), and the slope value can be 1
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(0.85±0.28). Columns from 4 to 7 show the SEC, emission line selected, limit of
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detection and limit of quantitation, respectively. Column 8 shows the relative
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standard deviation (RSD) for the signal height (information described in column
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9) obtained for the selected line (n = 3), and it can be noted that the RSD was
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from 1 to 6% for B. The RSD values presented in Table 2 are ranging from the
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lowest to the highest for all samples with concentrations higher than SEC. The
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results obtained with the proposed procedure (LIBS) were satisfactory and
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presented low RSDs with values ranging from 1% (case of B, Ca, Cd and Na) to
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15% (case of Mn and Pb). The normalization mode selected for B was signal
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averaged after normalization by the spectrum area. The same parameter
315
analysis was performed for the other analytes, and the best results for
316
calibration models (low SEC) were obtained with the signal sum for Cr; signal
317
average for Ca; and signal average normalized by the area (Mn, Na and Zn), by
318
the norm for Cd, by C 247.86 (Mg and Pb) and by the maximum for Cu.
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Concentrations of the elements determined after sample mineralization
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and prediction concentrations using LIBS are depicted at Table 3. Arsenic, Cd
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and Cr are expressed in mg/kg and the remainder in % (w/w). Regarding As,
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determinations using LIBS were assessed and no signals were detected. It
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must be pointed out that Pb concentrations were found in alarming % level,
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ranging from 0.05% (sample S8) to 1% (sample S3). Figure 4 shows the
325
comparison between the proposed method (LIBS) and reference values for Cu
326
(A), Mg (B), Mn (C), Na (D) and Zn (E). For these elements were obtained a
327
good prediction using more than one analytical line. The SEC limit depicted at
328
Figure 4 (red dotted line) are for those emission lines with the lowest error
329
values (Cu(I) 515.32, Mg(I) 518.36, Mn(I) 475.40, Na(I) 588.99 and Zn(I)
330
334.50). Real and predicted concentrations showed strong correlation (linear
331
models) for most of the evaluated analytical lines. Good concordance between
332
reference and predicted concentrations was obtained for Cu(I) 515.32 (r =
333
0.9892), Mg(I) 518.36 (r = 0.9942), and Mn(I) 475.40 (r = 0.9916), with error
334
values (SEC) of 1, 0.7 and 0.3%, respectively.
335
Manganese is an excellent example of the success of this strategy to
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identify the most important variables using multivariate calibration (PLS).
337
Standard error of calibration (SEC) using the most intense emission line (Mn(II)
338
257.61) was 1.5%. On the other hand, using the emission line Mn(I) 475.40 the
339
error was 0.3% (around 5 times lower than when 257.61 was used). An F test
340
was performed and these SEC values are significantly different at 95% of
341
confidence level. Another important aspect observed for Mn, is the fact that 3
342
emission lines presented similar concentrations (Figure 4C). This aspect
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complements the accuracy evaluation of the proposed method. The same
344
behavior was observed for Cu, Mg, Na and Zn (more details in Figure 4). A
345
paired t test was calculated comparing the reference and the obtained values
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using different emission lines and no difference was observed at 95%
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confidence level. Dotted red line presented in this figure represents the SEC
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values for the selected emission line (Table 2). As can be observed, the
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samples with concentration values below SEC presented the worst prediction.
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In Table 4 several and different instrumental setup have been used for
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fertilizers analysis by LIBS: CCD and ICCD detector operating with Nd:YAG
352
laser at 1064 nm and a large range of spot size (from 100 to 750 µm)18,22, and
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one study employed a Nd:YAG laser at 532 nm20 and another both lasers to
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perform double pulse analyses23. A fair comparison is hard to perform and wide
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range of LOD values from 0.02 to 89 mg/kg for Ca and from 13.3 mg/kg to 0.5%
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for P were observed. Calcium was determined by two studies14,23 and
357
phosphorus by five studies14,20-23, and a single element that was analyzed by all
358
studies was not found. These are the main drawbacks of LIBS analyses: the
359
lack of reproducibility. On the other hand, the present study shows for the first
360
time the use of a commercial equipment for fertilizer analysis enabling a fair
361
evaluation of the results.
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For mineral fertilizers, the Brazilian legislation allows the following
363
concentrations for Cd and Pb: 450 and 10000 mg/kg, respectively. As can be
364
observed, the proposed method has adequate LOD values for both analytes
365
(Table 2). In the case of Cr the limit depends on the sum of concentrations for
366
micronutrients. In the specific case of the samples analyzed in this study the
367
allowed Cr concentration varies from 725 (the lowest mineral content) to 17500
368
mg/kg (the highest mineral content). Both values are higher than the LOD (32
369
mg/kg) presented in Table 2. Finally, the proposed method can be employed for
370
fertilizer inspection or quality control with minimal sample preparation and
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adequate LOD and precision. In addition, the analytical frequency obtained is
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around 30 samples per hour with no chemical residues generation.
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Supporting information
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The Supporting Information is available free of charge on the ACS Publications
375
website at DOI:
376
- Matlab functions for twelve different types of data normalization and
377
preliminary inspections (libs_treat), and SBR, area and height calculation
378
(libs_par).
379
- Fragments of LIBS spectra (190 nm to 640 nm) from pellets of samples S3,
380
S5, S8 and S9 and identification of the main elements evaluated.
381
- Fractional factorial design 24-1 and central composite design for LIBS
382
operational conditions evaluation.
383
- Concentrations determined (mean ± SD, n = 3) and recoveries (%) calculated
384
for NIST SRM 695 - Trace Elements in Multi-Nutrient Fertilizer by ICP-OES.
385 386
Funding
387
This study was supported by the São Paulo Research Foundation (FAPESP,
388
grants 2015/14488-0, 2012/01769-3 and 2012/50827-6) and the Conselho
389
Nacional de Desenvolvimento Científico e Tecnológico (CNPq, 401074/2014-5
390
and 305637/2015-0).
391 392
Notes
393
The authors declare no competing financial interest.
394
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Acknowledgments
396
The authors are also grateful to Embrapa Pecuária Sudeste and Coordenadoria
397
de Aperfeiçoamento de Pessoal de Nível Superior (Capes) for the fellowship of
398
D.A.F. The authors are grateful to Analítica, Thermo Scientific for the loan of
399
instruments (ICP-OES and microwave oven).
400 401
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available (acessed
at: July
12,
Journal of Agricultural and Food Chemistry
Figure captions
Figure 1. Contour plot obtained for the model after LIBS parameter optimization for sample S9 and comparison of LIBS instrumental parameter optimization between the experiments of fractional factorial (squares) and central composite (triangles) designs. The star represents the selected working conditions.
Figure 2. Pictorial description of the strategy used for the evaluation of LIBS spectra and calibration model development.
Figure 3. Signal profiles for the 17 emission lines selected for B (A), Pb (B), Cr (C), Cd (D), Zn (E and H), Mn (F, G and I), Cu (J, K and N), Mg (L and M), Ca (O) and Na (P) to calculate the univariate regression models.
Figure 4. Results comparison between the reference (ICP-OES) and proposed (LIBS) methods for Cu (A), Mg (B), Mn (C), Na (D) and Zn (E). The red dotted line represents the SEC value for the selected emission line (Table 2).
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Journal of Agricultural and Food Chemistry
Table 1. Instrumental Parameters for ICP-OES Determinations Instrument parameter Integration time (s) Sample introduction flow rate (mL/min) Pump stabilization time (s)
Operational conditions 15 s for low and 5 s for high wavelengths 2.1 5
Radio frequency (RF) applied power (kW)
1.15
Auxiliary gas flow rate (L/min)
0.50
Nebulizer gas flow rate (L/min)
0.70
Argon gas flow rate (L/min) Viewing mode
12 Radial As (189.04*, 193.76*), B (249.77*), Ca (317.93**), Cd (226.50**, 228.80*), Cr (283.56**,
Elements and wavelengths (nm)
357.87*), Cu (324.75*), Mg (285.21*), Mn (294.92**), Na (588.99*, 589.59*, 818.33*), Pb (216.99*) and Zn (481.05*)
* atomic lines ** ionic lines
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Table 2. Parameters for the Univariate Calibration Models Calculated R, and univariate linear model
Analytes concentration
R, and linear model (reference
range (%)
vs. predicted)
0.02–2
[B] = 0.85 x + 2409
0.9505,
± 0.28
± 3.0.10
0.9474, ±1155
0.8911,
0.9858, 0.03–11
0.3
B(I) 249.68
0.1
0.3
1–6
Height
Average normalized by area
1
Ca(I) 527.03
0.3
1.0
1–6
Area
Average
41*
Cd(I) 467.81
2*
7*
1–10
Area
Average normalized by norm
665*
Cr(I) 425.43
32*
108*
6–7
Height
Sum
1
Cu(I) 515.32
0.6
2.0
6–11
Height
0.7
Mg(I) 518.36
0.07
0.2
4–13
Area
Average normalized by C 247.86
0.3
Mn(I) 475.40
0.05
0.2
3–15
Area
Average normalized by area
0.3
Na(I) 588.99
0.02
0.1
1–12
Area
Average normalized by area
0.2
Pb(I) 368.35
0.2
0.6
2–15
Area
Average normalized by C 247.86
1.5
Zn(I) 334.50
1
3
3–11
Area
Average normalized by area
± 59
[Cr] = 0.82 x + 531 ± 434
[Cu] = 0.94 x + 0.45 ± 0.58
Average normalized by maximum (height)
0.9942, 0.4–17
[Mg] = x − 0.42 ± 0.66
± 6.4
0.9936,
0.9916,
-7
-5
[Mn] = 1.2.10−8 x − 5.0.10- 3
0.3–7
[Mn] = x − 0.10 ± 0.37
±1.0.10
0.9176,
0.9537, 0.1–2
[Na] = 1.0.10- 6-5 x + 0.01
[Na] = 0.60 x + 0.50 ± 0.17
± 0.02
0.8992,
± 0.17
0.7864,
[Pb] = 1.0.10- 4-4 x − 1.2.10 -4
0.05–1
[Pb] = x − 7.2
± 3379
± 0.26
0.9787,
0.9302,
-9
-5
[Zn] = 3.0.10-9 x + 1.0.10- 4 ±1.0.10
[Cd] = 0.78 x + 24
± 0.13
± 0.004
0.9929,
±1.0.10
Normalization mode
0.9892,
[Mg] = 1.0.10- 4-3 x − 2.0
± 2.0.10
Signal type
±1.2
± 0.32
[Cu] = 6.0.10− 7-7 x + 0.001
± 2 .2 .10
RSD (%)
0.9219, 18*–3951*
± 6.0.10
±1.0.10
[Ca] = 0.47 x + 2.8
± 0.64
± 0.015
[Cr] = 134 x + 5.0.104 4
±1.0 .10
LOQ (%)
0.7504, 5*–159*
0.8711, ± 42
LOD (%)
± 3099
± 0.24
[Cd] = 3.0.10- 4-4 x + 0.002 ± 2.0.10
(nm)
0.8732, 2–7
[Ca] = 0.1 x + 360 ± 0.02
Emission line
0.9347,
[B] = 1.0 . 10− 8−7 x + 1.0.10- 4-4 ± 3.0.10
SEC (%)
±1.0.10
1–13
[Zn] = 0.90 x + 1.2 ± 0.32
± 2.7
*Values are in mg/kg
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Journal of Agricultural and Food Chemistry
Table 3. Concentrations Determined (% w/w ± SD, n = 3) of As, B, Ca, Cd, Cr, Cu, Mg, Mn, Na, Pb and Zn in Fertilizers Samples by Reference (ICP-OES) and Proposed Method (LIBS). S1 Element
As** B Ca Cd** Cr** Cu Mg Mn Na Pb Zn
ICPOES
S2
LIBS
S3
ICPOES
LIBS
S4
ICPOES
LIBS
S5
ICPOES
LIBS
S6
ICPOES
LIBS
ICPOES
S7
LIBS
ICPOES
S8
LIBS
17 ± 4
-
29 ± 5
-
28 ± 2
-
25 ± 2
-
41 ± 7
-
25 ± 4
-
23 ± 3
-
2.0 ± 0.5
1.95 ± 0.02
1.59 ± 0.03
1.10 ± 0.01
0.085* ± 0.003
0.43 ± 0.04
0.051* ± 0.001
0.377 ± 0.002
0.082* ± 0.004
0.13 ± 0.01
1.6 ± 0.1
1.9 ± 0.1
0.16* ± 0.01
0.54 ± 0.05
2.0 ± 0.6 39* ± 2 142* ± 20
3.9 ± 0.2 37* ± 3 275* ± 36
6.1 ± 0.2 68 ± 7
5.1 ± 0.3 46 ± 2
3.87 ± 0.04 129 ± 5
6.1 ± 0.2 106 ± 7
6.1 ± 0.3 35* ± 1
1415 ± 184
3951 ± 354
3670 ± 257
335* ± 36
6.7 ± 1.0 137 ± 16 89* ± 15
6.2 ± 0.3 163 ± 9
61* ± 6
2.2 ± 0.1 22* ± 1 176* ± 7
3.5 ± 0.2 63 ± 2
1704 ± 91
6.4 ± 0.3 161 ± 6 1214 ± 139
2.84 ± 0.05 112 ± 8
1009 ± 79
7.3 ± 0.1 159 ± 18 259* ± 19
7.5 ± 0.4 0.4* ± 0.1 5.1 ± 0.4 1.6 ± 0.2 0.28 ± 0.03 9.0 ± 0.4
7.5 ± 0.5 1.0 ± 0.1 5.0 ± 0.4 1.25 ± 0.03 0.36 ± 0.04 6.0 ± 0.4
1.26 ± 0.05 1.60 ± 0.04 1.70 ± 0.02 1.5 ± 0.1 0.46 ± 0.02 7.0 ± 0.1
2.7 ± 0.1 1.8 ± 0.2 1.2 ± 0.1 1.40 ± 0.02 0.36 ± 0.02 7.2 ± 1
0.17* ± 0.01 3.95 ± 0.03 0.35 ± 0.01 0.20* ± 0.01 1.0 ± 0.03 13.5 ± 0.4
1.1 ± 0.1 3.0 ± 0.2 0.34 ± 0.03 0.55 ± 0.01 1.1 ± 0.1 13 ± 1
0.029* ± 0.004 3.30 ± 0.04 0.60 ± 0.01 0.11* ± 0.01 0.43 ± 0.01 8.2 ± 0.2
0.05 ± 0.04 2.6 ± 0.3 0.60 ± 0.04 0.56 ± 0.01 0.35 ± 0.03 9.0 ± 1
0.68* ± 0.01 1.6 ± 0.1 0.94 ± 0.03 1.0 ± 0.1 0.521 ± 0.004 3.2 ± 0.1
0.45 ± 0.01 1.3 ± 0.1 0.7 ± 0.1 1.23 ± 0.02 0.163 ± 0.004 6±1
0.98 ± 0.02 1.02 ± 0.05 2.0 ± 0.1 1.3 ± 0.1 0.20* ± 0.01 8.0 ± 0.5
1.0 ± 0.1 0.87 ± 0.04 2.3 ± 0.1 1.25 ± 0.02 0.10 ± 0.04 8.0 ± 0.3
0.17* ± 0.02 2.3 ± 0.2 0.36 ± 0.01 0.20* ± 0.01 0.6 ± 0.1 12.3 ± 0.3
1.009 ± 0.004 1.5 ± 0.1 0.29 ± 0.04 0.6 ± 0.1 0.6 ± 0.1 13.0 ± 0.3
* Values lower than SEC ** Values are expressed in mg/kg “-“ not found in LIBS determinations
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355* ± 107
ICPOES
S9
LIBS
ICPOES
LIBS
11.3 ± 0.1 1.30 ± 0.05
-
18 ± 4
-
1.6 ± 0.1
0.022* ± 0.003
0.034 ± 0.005
4.3 ± 0.2 4.7* ± 0.3 18* ± 5
4.2 ± 0.1 12* ± 1 310* ± 8
3.1 ± 0.2 33* ± 3
5.3 ± 0.3 103 ± 1
25* ± 2
190* ± 26
0.074* ± 0.003 17 ± 1
0.12 ± 0.01 17.9 ± 1.2 0.6 ± 0.1 1.4 ± 0.1 0.25 ± 0.02 1.1 ± 0.3
10.9 ± 0.3 4.5 ± 0.2 7.0 ± 0.4 0.11* ± 0.01 0.20 ± 0.01 7.0 ± 0.3
11 ± 1
0.38 ± 0.02 1.0 ± 0.1 0.048 ± 0.002 0.789* ± 0.005
4.0 ± 0.2 7.2 ± 0.3 0.55 ± 0.01 0.31 ± 0.04 7.3 ± 0.3
Journal of Agricultural and Food Chemistry
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Table 4. Comparison Among Selected References and the Present Study Regarding Fertilizer Analysis by LIBS. Matrix Soil, commercial fertilizers, mixtures of soil and fertilizers Phosphate fertilizers
Potassium fertilizers
Phosphate and potassium fertilizers
Analytes P, Fe, Mg, Ca and Na
Remarks Soil was sieved (1 mm mesh)
Cd, Cr and Pb
Samples were homogenized by cryogenic and planetary ball milling
K, Na and Mg
N, P, K, Ca and Mg
No special sample preparation
Synthetic samples were prepared by mixing powdered material from real fertilizer samples and raw materials
Diammonium phosphate (DAP) fertilizers Organic and inorganic fertilizers
P, Mn, Mg, Fe, Ti, Mo, Ni, Co, Al, Cr, Pb and U P
Organic mineral fertilizers
Al, Ca, Cr, Cu, Fe, K, Mg, Mn, Na, Zn and P
Double pulse was used
B, Ca, Cd, Cr, Cu, Mg, Mn, Na, Pb and Zn
Samples were ground and sieved (42 µm)
Mineral fertilizers
No special sample preparation
Samples were ground and sieved (100 mesh sieve)
LIBS setup Nd:YAG laser (1064 nm) operating at 53 mJ, 10 ns pulse, 0.1-5.3 µs of delay and ICCD camera Nd:YAG laser (1064 nm) operating with 30 pulses of 50 J/cm2, 750 µm of spot size, 2.0 µs of delay and ICCD (intensified charged couple device) camera
LOD (mg/kg) P (46-251), Fe (10-50), Mg (4-7), Ca (89) and Na (22)
14 Cd (1), Cr (2) and Pb (15) 18
Nd:YAG laser (1064 nm) operating with 1000 pulses of 20-45 mJ, 0.75 µs of delay and CCD spectrometer Nd:YAG laser (532 nm), 8 ns pulse operating with 100 pulses of 70 mJ, 1.7 µs of delay and CCD spectrometer
Not mentioned
Nd:YAG laser (1064 nm) operating at 50 mJ, 6 ns pulse, 3.0 µs of delay and ICCD camera Nd:YAG laser (1064 nm) operating with 100 pulses of 60 mJ, 2.5 µs of delay, 100 µm of spot size and CCD spectrometer Two Nd:YAG lasers operating at 1064 (75 mJ and width of 6s) and 532 nm (180 mJ and width of 4s), 1.0 µs of delay and ICCD camera with 1024 × 1024 pixels.
Relative abundance: P (27*), Mn (18*), Mg (14*), Fe (8*), Ti (7*), Mo (8*), Ni (5*), Co (2*), Al (0.6*), Cr (0.4*), Pb (1*) and U (0.3*) P (0.5*)
Nd:YAG laser (1064 nm), 8 ns pulse operating at 850 pulses of 75 mJ, 50 µm of spot size, 2.0 µs of delay and multi-channel CCD spectrometer
*Values are in % **SP = Single pulse ***DP = Double pulse
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Reference
19 P (13.3) and K (11.4) 20
21
22 Ca (SP**: 0.04-0.68 and DP***: 0.02-0.34), Cr (SP: 78 and DP: 28-54), K (SP: 196 and DP: 128), Fe (SP: 4900 and DP: 310-2103), Mn (SP: 46 and DP: 9.8), Mg (SP: 38-84 and DP: 5-15), Na (SP: 101 and DP: 38), P (SP: 2386-5430 and DP: 922-1430) and Zn (SP: 960 and DP: 323) B (0.1*), Ca (0.3*), Cd (2.1), Cr (32), Cu (0.6*), Mg (0.07*), Mn (0.05*), Na (0.02*), Pb (0.2*) and Zn (1.0*)
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Page 29 of 34
Journal of Agricultural and Food Chemistry
Figure 1 2.5 Fractional factorial design Central composite design Optimum conditions
2.0
0.60
D = 0.48 + 0.13v1
0.52
Delay time (µs)
0.44
1.5
0.36 0.28
1.0
0.5
0.0 45
50
55
60
65
70
75
80
85
Energy (mJ)
28 ACS Paragon Plus Environment
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95
100
Journal of Agricultural and Food Chemistry
Page 30 of 34
Figure 2 50000
12 normalization modes
Raw data
Signal Intensity
40000
30000
Mean center
12 PLS models
20000
10000
Regression vector 0 200
400
600
800
1000
Inspection and normalization selection
Wavelength (nm)
0.010
Linear calibration
0.006
0.004
Regression vector
Signal Intensity
0.008
0.002
Selected wavelength 0.000 0
1
2
3
4
5
6
7
200
8
400
600
Wavelength (nm)
Mn reference concentration (%)
29 ACS Paragon Plus Environment
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1000
Page 31 of 34
Journal of Agricultural and Food Chemistry
Figure 3 300
6000
A
2400
800
B
B(I) 249.68
C
D
Cr(I) 425.43
Cd(I) 467.81
Pb(I) 368.35 600
4500
1800
1500
100
249.4
249.6
249.8
368.0
250.0
368.2
E
200
368.4
425.2
F
600
425.4
467.6
425.6
10000
20000
G
Mn(I) 475.40
468.0
468.4
Wavelength (nm)
Wavelength (nm)
16000
Zn(I) 472.21
1200
0
368.6
Wavelength (nm)
Wavelength (nm) 5600
400
0
0
0
Singnal intensity
3000
Signal intensity
Signal intensity
Signal intensity
200
Mn(I) 478.34
H Zn(I) 481.05
15000 8000 4200
7500
1400
1600
800
0 471.8
472.2
Wavelength (nm)
472.4
474.9
3000
2000
5000
2500
1000
0
0 472.0
Signal intensity
2800
2400
Signal intensity
Signal intensity
Signal intensity
10000
475.2
475.5
477.9
475.8
0 478.2
478.5
Wavelength (nm)
Wavelength (nm)
30
ACS Paragon Plus Environment
480.8
481.0
Wavelength (nm)
481.2
Journal of Agricultural and Food Chemistry
24000
I
5500
Mn(I) 482.35
2600
J
15000
K
Cu(I) 515.32
Cu(I) 510.55
4400
12000
Page 32 of 34
L
Mg(I) 517.27
1950
3300
2200
1000
1100
0
0 482.0
482.2
482.4
482.6
1300
650
0
510.2
Wavelength (nm)
510.4
510.6
3400
N
515.1
515.4
515.7
517.0
Wavelength (nm)
4500
Mg(I) 518.36
5000
0
514.8
510.8
Wavelength (nm)
22000
M
Signal intensity
2000
Signal intensity
Signal intensity
Signal intensity
10000
3000
O
517.2
517.4
Wavelength (nm) 60000
Ca(I) 527.03
P
Cu(I) 521.81
Na(I) 588.99 2550
16500
45000
Na(I) 589.59
5500
1500
518.0
518.3
Wavelength (nm)
518.6
1700
850
521.5
521.8
522.1
0 526.7
Wavelength (nm)
30000
15000
0
0
0
Signal intensity
11000
Signal intensity
Signal intensity
Signal intensity
3000
526.9
527.1
Wavelength (nm)
31
ACS Paragon Plus Environment
588.4
588.9
589.4
Wavelength (nm)
589.9
Page 33 of 34
Journal of Agricultural and Food Chemistry
Figure 4 12
A
20
Reference (ICP OES) Cu(I) 510.55 (Height) Cu(I) 515.32 (Height) Cu(I) 521.81 (Height)
10 8
8
B
C
Reference (ICP OES) Mg(I) 517.27 (Area) Mg(I) 518.36 (Area)
16
Reference (ICP OES) Mn(I) 475.40 (Area) Mn(I) 478.34 (Area) Mn(I) 482.35 (Area)
7
Concetration (%)
Concentration (%)
2
4
3
2
5 4 3 2
SEC
1
1
1
SEC
SEC 0
0
S2
S3
S4
S5
S6
S7
S8
S9
0 S1
S2
S3
Sample
S4
S5
S6
S7
S8
S9
S1
S2
S3
S4
Sample 18
2.0
Reference (ICP OES) Na(I) 588.99 (Area) Na(I) 589.59 (Area)
D
1.2
0.8
0.4
SEC
S5
Sample
E
Reference (ICP OES) Zn(I) 334.50 (Area) Zn(I) 472.21 (Area) Zn(I) 481.05 (Area)
15
1.6
Concentration (%)
S1
Concentration (%)
Concentration (%)
6
3
12
9
6
3
SEC 0.0
0 S1
S2
S3
S4
S5
S6
S7
S8
S9
S1
S2
S3
Sample
S4
S5
Sample
32
ACS Paragon Plus Environment
S6
S7
S8
S9
S6
S7
S8
S9
Journal of Agricultural and Food Chemistry
TOC
33
ACS Paragon Plus Environment
Page 34 of 34