A single-beam-splitting technique combined with a calibration-free method for field-deployable applications using laser-induced breakdown spectroscopy

Mingjun Xuab, Qingyu Linb, Guang Yangb, Tao Xub, Tianlong Zhangc, Xu Wangb, Shuai Wangb, Fang Bianb and Yixiang Duan*b
aCollege of Chemistry, Sichuan University, Chengdu, 610064, China
bResearch Center of Analytical Instrumentation, Key Laboratory of Bio-resource and Eco-environment, Ministry of Education, College of Life Science, Sichuan University, Chengdu, 610064, China. E-mail: yduan@scu.edu.cn; Fax: +86-028-85418180; Tel: +86-028-85418180
cInstitute of Analytical Science, College of Chemistry and Materials Science, Northwest University, Xi'an, 710069, China

Received 10th September 2014 , Accepted 1st December 2014

First published on 2nd December 2014


Abstract

In this work, a single-beam-splitting laser-induced breakdown spectroscopy (LIBS) technique using one single laser system is demonstrated. An individual pulse delivered by a laser (1064 nm wavelength) was split into two sub-pulses by a beam splitter. Various copper alloy standard disks were used in this investigation. Intensity enhancement of emission lines under different laser energies was investigated and the maximum enhancement of 2.1 was reached with 30 mJ laser energy. Under this optimal condition, quantitative analysis based on single-beam-splitting ablation with a calibration-free (CF) method was performed and a better analytical result than that obtained based on single-pulse CF-LIBS was acquired. With combined internal reference for the self-absorption correction (IRSAC) method and calibration-free inverse method, the analytical results agreed well with the certified values of the elements in the sample, with an accuracy error between −17% and +12%.


1. Introduction

Laser-induced breakdown spectroscopy (LIBS) is a plasma technique based on atomic emission spectroscopy. Traditional LIBS (single-pulse LIBS) uses a high-powered laser pulse focusing on a sample. The sample material is heated, ablated, atomized and ionized, and ultimately formed a luminous plasma plume. Deductible quantitative and qualitative information of the sample can be acquired by analyzing the emission spectrum from the plasma. LIBS has many advantages, including fast multi-elemental analysis ability for virtually any kind of sample (solid, liquid, gas or aerosol), few sample preparation procedures, and the possibility of in situ and remote analysis,1–5 which have rendered it particularly suitable for field applications.

Single-pulse LIBS instruments have been adopted in field applications such as AvaLIBS. But they suffer from poor signal intensity and therefore relatively high limits of detection (1–100 ppm). However, a dual-pulse technique can enhance the sensitivity of LIBS obviously.6–8 A dual-pulse LIBS system requires either a pair of laser systems or a single laser which can generate two time separated pulses.9,10 Using a dual-pulse LIBS system for stronger coupling of laser energy to the ablated target allows enhanced emission intensities, lower detection limits, stronger sustained plasma emission.11 Therefore sharper and less self-absorption spectra are acquired. Signal enhancement in the dual-pulse LIBS system is consistently observed by many research groups.6,7,12,13 But dual-pulse LIBS technique is more expensive and more complex compared to the single-pulse LIBS technique, which hinders its field application. Alternatively, Antony et al. proposed and demonstrated a novel single laser based dual-wavelength ablation technique, which enables a compact instrument for field applications while maintaining the main advantages of dual-pulse LIBS mentioned above.9 In this work, similarly, a novel single-beam-splitting method was adopted to enable a simple and low-cost instrument for field applications while maintaining the main advantages of dual-pulse LIBS.

After obtaining excellent spectra with single-beam-splitting technique, practical quantitative analysis was required for field applications. Calibration-based method frequently used in LIBS is not a good choice since matrix-matched reference materials with a composition similar to the unknown sample are not accessible in most cases, especially in field applications. An alternative method, calibration-free (CF) method developed in 1999,14 offers another choice for realizing quantitative analysis in field applications. CF method is based on a complete optical diagnostic procedure of plasma. It is capable of determining elemental composition of sample materials without using calibration curves involving matrix-matched reference materials. CF method has been widely used to analyze plasmas of various samples (precious alloys,15 bronze alloys,16 sludge,17 multi-component oxide materials18 etc.) generated by single-pulse LIBS. CF method was also used to analyze plasmas of steel generated by dual-pulse LIBS. V. Contreras et al. used dual-pulse CF-LIBS to analyze plasma of steel sample.19 Their results showed that quantitative analysis by dual-pulse CF-LIBS was slightly better than that by single-pulse CF-LIBS.

However, CF-LIBS analysis has not yet reached the diffusion that a standard-less LIBS technique could potentially obtain, especially in field applications.20 The reason is that the accuracy of analysis results is unsatisfied. In order to improve CF-LIBS algorithm to obtain more accurate results, various methods were implemented in the CF-LIBS algorithm, including one-point calibration method,20 calibration-free inverse method,21 curve of growth (COG) method,22 and internal reference for self-absorption correction (IRSAC) method.23

The aim of our current work is to use a single-beam-splitting LIBS technique to realize signal enhancement along with a CF algorithm for practical quantitative analysis, promoting LIBS techniques for field applications. In this work, an individual pulse delivered by a Q-switched Nd3+:YAG laser was split into two sub-pulses by a beam splitter, which enabled a simple and low-cost system for field applications while maintaining the main advantages of dual-pulse LIBS. CF method was adopted to determine elemental composition of sample materials without using calibration curves involving matrix-matched reference materials. Besides, calibration-free inverse method and IRSAC method were combined to improve the accuracy of CF method under this system for the first time, and a better result was obtained with such a combination.

2. Experimental

2.1 Instrumentation

The experimental setup used for our studies performed under atmospheric conditions is shown in Fig. 1. An individual pulse delivered by a Q-switched Nd3+:YAG laser (Litron Lasers, LPU 450, wavelength λ = 1064 nm, a pulse duration τL ≈ 6 ns, pulse energy EL ≤ 120 mJ, repetition rate fr ≤ 20 Hz) was split into two sub-pulses by a beam splitter (50[thin space (1/6-em)]:[thin space (1/6-em)]50). One sub-pulse was focused vertically onto a sample using a plano-convex lens (150 mm focal length). The other one was focused onto the same position of the sample using a plano-convex lens with short focal length (50 mm focal length) at about 30° with respect to the sample surface. We considered that the two sub-pulses arrived at the sample surface simultaneously since the optical path length difference can be neglected. The ablation laser spot on the surface of the sample was nearly circular and its diameter was measured to be about 300 μm. The emission from the plasma was collected through a collecting lens and it was fed to a three-channel spectrograph (Avantes, AvaSpec, Netherlands) with broadband covered a range of 200–940 nm (0.15 nm resolution). The detector was a linear CCD with 2048 pixels. A signal delay controller in the spectrograph was used to control the acquisition time settings via the AvaSoft 7.7 software. Single-pulse LIBS experiment was performed by removing the beam splitter for comparison with the single-beam-splitting LIBS experiment.
image file: c4ra10132d-f1.tif
Fig. 1 Schematic representation of the single-beam-splitting LIBS experimental setup.

2.2 Sample preparation and data acquisition

For each surface of every sample cleaned by ethanol, 55 different locations were selected for measurement. A single shot per location was chose to obtain a measured spectrum to avoid sample destruction. To minimize the influence from sample heterogeneity and other fluctuations, the 55 measured spectra at different locations were averaged into an analytical spectrum. In this experiment, the energy was monitored in real-time by an energy meter and all of the acquired spectra were dark current corrected using the AvaSoft 7.7 software.

The samples used in this study were copper alloy standard disks (BYG1916-1-3, BYG1916-1-4, BYG1916-1-5, BYG1916-1-6, BYG1916-1-7) from Southwest Aluminum of China. A description of the samples is given in Table 1 for elemental composition and quantitative information.

Table 1 Elemental percentage composition of copper alloy standards from Southwest Aluminum of China
  BYG1916-1-3 BYG1916-1-4 BYG1916-1-5 BYG1916-1-6 BYG1916-1-7
Cu 84.99 84.52 84.67 84.13 84.73
Al 9.24 9.14 7.76 8.78 9.75
Mn 1.56 1.57 2.63 2.92 2.01
Fe 3.01 3.17 4.94 4.17 3.51
Zn 0.69 1.11 0 0 0
Other elements 0.51 0.49 0 0 0


2.3 Quantitative analysis

Practical quantitative analysis was conducted with CF algorithm, which is more sensitive to the self-absorption effect with respect to the traditional calibration-based method.22 In order to improve CF-LIBS algorithm to obtain more accurate results, internal reference for self-absorption correction (IRSAC) method was used to correct self-absorption effect and calibration-free inverse method was used to correct plasma temperature.
2.3.1 CF algorithm. CF algorithm was performed to realize quantitative analysis of our samples. Four assumptions should be fulfilled before using CF method in an experiment:24 the plasma composition is representative of the unperturbed target composition, the plasma can be modeled as a spatially homogeneous source, and the plasma is optically thin and in LTE in the temporal and spatial observation window. Under these conditions, a plasma could be described by Maxwell–Boltzmann distribution and other equilibrium relations.25 Boltzmann equation could be applied to determine the elemental composition of the ablated sample, expressed as:
 
ln[Ikiλ/(Akigk)] = −Ek/(kBT) + ln[CsF/U(T)] (1)
here Ikiλ is the measured integral line intensity of a spectral line of wavelength λ, gk is the degeneracy of the upper level, the Aki is Einstein coefficient of spontaneous emission for the “ki” transition, kB is Boltzmann constant, Cs is the relative concentration of emitting species, Ek is the upper level energy, U(T) is partition function for the emitting species, and F is an experimental parameter that takes into account the optical efficiency of the collection system as well as the total plasma number density and volume.23

To evaluate plasma temperature, Boltzmann plot of ln(Ikiλ/A*kigk) vs. Ek having slope of (−1/kBT) had to be drawn for every element present in a sample. The intercept of a Boltzmann plot can be related to the concentration of an element present in the sample. The intercept value, qs, is a function of the concentration of the corresponding element present in the plasma. Since the sum of the relative concentration of all species equal unity, the experimental factor F can be determined using the following normalization relation,

 
image file: c4ra10132d-t1.tif(2)
and the concentration of all the species in the sample can be obtained by
 
image file: c4ra10132d-t2.tif(3)

In addition, because the calculation of plasma temperature affects both intercept value and partition function, Saha–Boltzmann method is used to draw a Saha–Boltzmann plot for obtaining a more reliable plasma temperature. In Saha–Boltzmann method, lines from atoms and ions of the same element are included in a linear regression equation thus improving the statistics.26 Here Saha–Boltzmann method was not used because calibration-free inverse method was used to correct plasma temperature.

Distinctly, CF method avoids the use of standard samples to get the calibration curve. Combine CF method with the single-beam-splitting technique, a practical field analysis method was expected.

2.3.2 Internal reference for self-absorption correction (IRSAC) method. Internal reference for self-absorption correction (IRSAC) method was proposed by Lanxiang Sun.23 An internal reference line for each species was chosen at first, then compared with other spectral line intensities of the same species to estimate the self-absorption degrees of other spectral lines, and finally achieved an optimal correction by a regressive algorithm. The self-absorption effect of the selected reference line can be ignored, since the reference line with high excitation energy of the upper level is slightly affected by the self-absorption. The corrected intensity of a spectral line is expressed as
 
image file: c4ra10132d-t3.tif(4)
where image file: c4ra10132d-t4.tif and fbλ are the spectral line intensity and self-absorption coefficient of the internal reference line, and the Amn, gm and Em are the spectral parameters related to the transition between energy levels of m and n.
2.3.3 Calibration-free inverse method. Calibration-free inverse method was proposed by R. Gaudiuso et al., based on the LTE equations.27 It was applied to simulate the elemental composition of a certified sample at different temperatures, assuming that the actual plasma temperature was the one providing the best agreement with certified data. In addition, it introduces a further practical assumption, i.e., that if different samples with similar matrices are ablated in the same conditions, the excitation temperatures of the produced plasmas are the same.21

3. Results and discussion

3.1 Delay time for an optically thin and local thermodynamic equilibrium (LTE) plasma

In the process of plasma cooling, the plasma in a period of time meets the local thermal equilibrium (LTE) condition. Different particles in plasma have a common temperature T in LTE. Plasma in LTE can be described by Maxwell–Boltzmann distribution and other equilibrium relations,25 which is the basis of quantitative analysis. Therefore delay time was optimized to obtain the delay time where the plasma was optically thin (less self-absorption) as well as in LTE. If a plasma is optically thin and in LTE, the intensity ratio of two emission lines of the same species should be nearly the same as the ratio of the product of transition probability (Aki), statistical weight (gk), and inverse ratio of their wavelengths,28 i.e.:
 
I/I′ = Akigkλ′/Akigkλ (5)

Here the two emission lines have the same or close upper level.

Sample BYG1916-1-4 was chose to optimize delay time. A pulse energy of 24 mJ was used which provided a calculated incident laser irradiance of 5.66 × 109 W cm−2. Stoichiometric ablation of the sample was fulfilled at this condition.29 The delay time where the plasma was optically thin and in LTE was inferred from the temporal evolution of the intensity ratio of two Cu I lines (515.32 and 521.82 nm) and two Al I lines (308.21 and 309.27 nm) when laser energy was 24 mJ (Fig. 2). Peak intensity was baseline corrected by off peak background correction method. The intensity ratios for two Cu I lines (515.32 and 521.82 nm) and two Al I lines (308.21 and 309.27 nm) using eqn (5) were equal to 1.75 and 1.80, respectively. Comparing the experimental data of the intensity ratio with the theoretical one, we found intensity ratios were in close agreement with 1–6% variation with the theoretical values obtained when the delay time was 0.64 μs.


image file: c4ra10132d-f2.tif
Fig. 2 (a) Temporal evolution of intensities of two Cu I lines (515.32 and 521.82 nm) and their intensity ratio in single-beam-splitting LIBS experiment (24 mJ). (b) Temporal evolution of intensities of two Al I lines (308.21 and 309.27 nm) and their intensity ratio in single-beam-splitting LIBS experiment (24 mJ).

3.2 Intensity enhancement of spectral lines

Entire enhancement in the LIBS signal was observed at the pulse energy of 24 mJ and the delay time of 0.64 μs. To compare with single pulse LIBS, as shown in Fig. 3, the signal enhancements of neutral and ionic species of the sample BYG1916-1-4 were obvious. Different emission lines in the plasma showed different intensity enhancement factors and a maximum of 1.8-fold enhancement was obtained for the Cu II line at 213.60 nm. Here intensity enhancement factor was defined as the ratio between the intensity with single-beam-splitting excitation and intensity with single-pulse excitation. Each used spectral line was baseline corrected.
image file: c4ra10132d-f3.tif
Fig. 3 Spectra of the sample BYG1916-1-4 during single-pulse and single-beam-splitting LIBS experiments. The spectrum corresponding to a single pulse of 1064 nm with energy 24 mJ is shown by black. The spectrum corresponding to single-beam-splitting LIBS with energy 24 mJ is shown by red. The delay time was 0.64 μs for both experiments. (a) Signal enhancement of Cu. (b) Signal enhancement of Al. (c) Signal enhancement of Fe. (d) Signal enhancement of Mn.

For laser-induced plasma on a plane surface and expanding up the laser beam, there were three important zones: the plasma front, the shock front and the absorption front. The absorption front zone come up just behind the shock front, and both were ahead of the plasma front.30 In this experiment, one pulse with 24 mJ energy was split into two same sub-pulses with different incident angles. The absorption front of the plasma expanded, providing more energy for the plasma front zone and obtaining effective pulse–plasma energetic coupling.31 The shock front would become thin because of energy dispersion, reducing shielding for spectral signal emission. Consequently, spectral line-intensity enhancement was observed.

Table 2 shows enhancement factors of different emission lines in the plasma for different ns-laser pulse energies in the single-beam-splitting experiment. Except for Mn II (257.61 nm), the enhancements of other emission lines reached maximum when the laser energy was 30 mJ. We considered that the absorption front zone further expanded and the shock front became thick gradually with the increase of the laser energy. When the thickness of the shock front of the plasma in the single-beam-splitting LIBS was similar to that in single-pulse LIBS, signal enhancement was not observed.

Table 2 Signal enhancement under different laser energy
Line Wavelength (nm) Enhancement factor
I(12+12) mJ/I24 mJ I(15+15) mJ/I30 mJ I(18+18) mJ/I36 mJ
Cu II 213.60 1.80 2.10 1.23
Cu I 217.89 1.75 2.05 1.16
Al l 308.22 1.34 1.42 0.96
Fe II 234.35 1.34 1.78 0.55
Mn II 257.61 1.68 1.39 0.96


Plasma temperature and electron density in single-beam-splitting LIBS experiment were calculated under different ns-laser pulse energies. The plasma temperature was calculated from Boltzmann plots of Cu I lines and Al I lines. Since Cu and Al were abundant in our sample, a lot of Cu and Al atomic lines could be found to make accurate Boltzmann plots. The temperature values obtained for the different sample constituents were different due to self-absorption effect. The temperature values calculated from Cu and Al atomic constituents of the target were averaged as plasma temperature of the sample BYG1916-1-4. The electron density was calculated from Stark broadening of Al I line at 309.27 nm. In order to obtain the Stark broadening, Voigt function was used to fit the Al I line at 309.27 nm, and then the instrumental broadening component was deconvoluted. In this experimental condition, the instrumental broadening approximated to 0.055 nm. Calculated results were compared to those in single-pulse LIBS (Table 3). Comparing the experimental data of the single-beam-splitting LIBS with that of single-pulse LIBS, temperatures were in close agreement. Temperature further expanded with increased ns-laser pulse energies. The electron density in the single-beam-splitting LIBS increased compared to that in single-pulse LIBS under 24 mJ and 30 mJ. It demonstrated that effective pulse–plasma energetic coupling existed in the single-beam-splitting LIBS under low energy. The increasing of electron density in the single-beam-splitting LIBS compared to single-pulse LIBS further decreased with the increasing of ns-laser pulse energies. It demonstrated that signal enhancement was partly attributed to the shock front's attenuation because of energy dispersion. Therefore, effective pulse–plasma energetic coupling and shock front's attenuation were the main reasons for signal enhancement.

Table 3 Plasma temperature and electron density in single pulse LIBS and single-beam-splitting LIBS under different ns-laser pulse energies
Experiment Plasma temperature (K) Electron density (cm−3)
Single pulse LIBS (24 mJ) 11935.36 1.90 × 1017
Single laser based dual-pulse LIBS (12 + 12 mJ) 12405.35 2.44 × 1017
Single pulse LIBS (30 mJ) 11888.61 1.87 × 1017
Single laser based dual-pulse LIBS (15 + 15 mJ) 12693.13 2.12 × 1017
Single pulse LIBS (36 mJ) 13753.46 2.46 × 1017
Single laser based dual-pulse LIBS (18 + 18 mJ) 14834.45 2.11 × 1017


3.3 Quantitative analysis based on single-beam-splitting LIBS with CF method

3.3.1 Quantitative analysis of sample BYG1916-1-6 with CF method. To evaluate quantitative analysis based on the single-beam-splitting technique with CF method, sample BYG1916-1-6 was analyzed at first. The wide wavelength range spectrum from 197 to 945 nm of the sample was recorded at a delay time of 0.64 μs and a pulse energy of 30 mJ. The pulse energy of 30 mJ provided a calculated incident laser irradiance of 7.07 × 109 W cm−2. Stoichiometric ablation of the sample was fulfilled at this condition.29 The delay time of 0.64 μs was the time when a optically thin and LTE plasma appeared in our experiment. 91 spectral lines from 4 different elements (Al, Cu, Fe and Mn) found were used to perform CF algorithm for sample BYG1916-1-6 (Table 4). CF analysis used in this section did not correct for self-absorption effects. Relevant spectral information—such as ionization energy values for each element, upper and lower level energies, or transitions probabilities for each line—was taken from the atomic spectral line database of Harvard University.
Table 4 List of spectral lines used for building the Boltzmann plots for our copper-based alloy samples
Species Wavelength (nm)
Cu I 216.5096 217.8949 261.8364 282.4365 296.1162 312.61 324.7537 327.3954
329.0539 330.7945 356.6127 364.838 382.0875 386.046 510.5537 515.323
521.8197 578.2127 809.2631 219.9754 359.9127      
Cu II 204.3802 205.4979 211.21 212.298 212.6044 213.5981 219.2268 212.8108
224.2618 203.5854 199.9698 197.9956        
Al I 221.006 257.5094 265.2475 308.2153 309.271 394.4006 305.0072 305.4679
305.7144 306.6144            
Mn I 279.4817 280.1081 403.4483 306.6028 476.5846 478.3427 602.1819  
Mn II 257.6105 259.3724 260.5684 293.3055 293.9308 294.9205 245.2487 243.7366
249.9002 253.3324 254.875 255.6573 255.8606 261.8147 262.5611 270.1698
Fe I 296.6898 297.3235 299.4427 302.0639 304.7604 396.9257 297.3132 300.0948
305.7446 306.7244 382.4306 489.1492        
Fe II 259.3728 262.549 232.6358 235.9113 237.3736 240.4982 253.8205 254.8744
263.1048 266.6637 270.399 271.4413 317.9503      
Zn I 213.8573 330.2584 334.5015 481.0528 472.2153 468.0134 330.2941 328.2328
Zn II 206.2004 209.9937 255.7948 202.5483 250.1989      


Electron density was determined using the Stark width of Al I line at 309.27 nm, too. The electron number density obtained was 2.1 × 1017 cm−3 for the sample analyzed. In order to prove the existence of LTE in the plasma at the delay time of 0.64 μs, we calculated the lower limit of the electron density according to McWhirter criterion. The result was 1.2 × 1016 cm−3, which clearly demonstrated that the plasma was in LTE at the delay time of 0.64 μs and eqn (5) was effective to find a plasma in LTE. The plasma temperature was calculated from Boltzmann plots of Cu I lines and Al I lines as mentioned before. We averaged the temperature values calculated from Cu and Al atomic constituents of the target as plasma temperature of the sample BYG1916-1-6. The plasma temperature was 12845.9 K. Plasma temperature and electron number density for single-pulse LIBS were calculated for comparison, which were equal to 11605.7 K and 2.0 × 1017 cm−3.

The results of the calibration-free analysis of sample BYG1916-1-6 was reported in Table 5. CF analysis based on single-beam-splitting technique (SBS CF-LIBS in Table 5) was compared to that based on single-pulse LIBS (Basic CF-LIBS in Table 5). For Al in the sample, obvious underestimation of its relative concentration appeared in basic CF-LIBS. This was attributed to self-absorption effect. The quantitative result of Al affected the results of other elements, because the sum of the relative concentrations of all elements was equal to one in CF algorithm.

Table 5 Quantitative results for sample BYG1916-1-6 in our work
Sample Element Relative concentration (wt%) Relative error (%)
Standard value Basic CF-LIBS SBS CF-LIBS SBS CF-LIBS
BYG1916-1-6 Cu 84.13 88.37 86.34 2.63
Al 8.78 3.53 8.04 −8.42
Mn 2.92 2.64 2.20 −24.55
Fe 4.17 5.46 3.41 −18.19


Energy dispersion in single-beam-splitting LIBS alleviated self-absorption effect, therefore, quantitative result of Al was close to the standard value. Generally speaking, quantitative results based on the single-beam-splitting technique were better than those based on single-pulse LIBS, which could be attributed to less self-absorption effect and shaper spectra in the single-beam-splitting LIBS. However, the calculated relative errors of the four elements in sample BYG1916-1-6 were not satisfied (−25–+3%). The reasons were that self-absorption effect was not deducted and the uncertainties associated with temperature determination as well as intensity fluctuations. Quantitative analysis based on single-beam-splitting LIBS with a modified CF method was performed in next section.

3.3.2 Quantitative analysis based on the single-beam-splitting LIBS along with a modified CF algorithm. Combined IRSAC method with CF inverse method in calibration free analysis was used to improve calibration free analysis of sample BYG1916-1-6 based on single-beam-splitting LIBS system. Then quantitative analysis based on the single-beam-splitting LIBS along with this modified CF algorithm was applied to analyze other samples. Selected analytical lines for all samples are listed in Table 4. The boldfaced numbers in Table 4 represent the selected reference lines.

IRSAC method was used to correct spectral line intensity of the four elements in sample BYG1916-1-6. The plasma temperature in eqn (4) was preliminarily evaluated from the Boltzmann plots of Cu I and Al I without any correction. The Boltzmann plots of the four elements in sample BYG1916-1-6, determined by the basic CF-LIBS method and IRSAC method, are shown in Fig. 4(a–h). Before correction, the points on Boltzmann plots very scattered because of self-absorption effect. The self-absorption effect causes their plasma temperature calculated higher than real values, the intercepts lower than expected, and finally large errors in the quantitative results.23 It was clear that scattered points on the Boltzmann plots were corrected effectively with IRSAC method, improving intercepts estimation.


image file: c4ra10132d-f4.tif
Fig. 4 Initial Boltzmann plot derived from the raw line intensity of the four elements in sample BYG1916-1-6 (a, c, e and g). Boltzmann plot corrected by the IRSAC for sample BYG1916-1-6 (b, d, f and h).

We used Boltzmann plots corrected by the IRSAC for sample BYG1916-1-6 to perform CF algorithm. The results were listed in forth column of Table 6, far away from standard values. Intercept, related to the concentration of corresponding element present in the sample, was corrected by IRSAC method. The deviation of calculated CF results was possibly caused by temperature. Subsequently, we reduced the plasma temperature and calculated CF results of the sample BYG1916-1-6 with four different reduced temperatures. It demonstrated that when the plasma temperature was 8905.9 K, the relative error of relative concentration of the sample BYG1916-1-6 was minimum (−15–12%). Quantitative analysis results improved significantly.

Table 6 Relative concentrations of sample BYG1916-1-6 under different temperatures
Sample Element Relative concentration (wt%) Relative error (%)
Standard value 12845.9 K 9845.9 K 9045.9 K 8905.9 K 8855.9 K 8905.9 K
BYG1916-1-6 Cu 84.13 56.28 76.78 82.66 83.65 84.00 −0.57
Al 8.78 19.07 12.75 10.27 9.82 9.66 11.85
Mn 2.92 10.47 4.10 2.70 2.48 2.41 −14.98
Fe 4.17 14.18 6.37 4.37 4.05 3.93 −2.93


CF inverse method assumed that the actual plasma temperature was the one providing the best agreement with certified data. Therefore, 8905.9 K was the actual plasma temperature of the sample BYG1916-1-6 according to CF inverse method. In addition, CF inverse method introduces a further practical assumption, i.e., that if different samples with similar matrices are ablated in the same conditions, the excitation temperature of the produced plasmas is the same. In our experiment, the five samples were similar no matter in components or in element content. So we used 8905.9 K as the plasma temperature of other samples. BYG1916-1-3, BYG1916-1-4, BYG1916-1-5, BYG1916-1-7 were analyzed by CF algorithm as well. We corrected Boltzmann plots of different species in the corresponding sample with IRSAC method using temperature of 8905.9 K. All results were listed in column 6 of Table 7. They were compared with results of basic CF method and CF method based on single-beam-splitting LIBS. It was clear that with the combined IRSAC method and calibration-free inverse method, the analytical results agreed well with the certified values of the elements in the sample. For Cu in the standard samples, the relative errors obtained were between −1.5% and +1.5%. For other elements, the relative errors obtained were between −17% and 12%. The reliability of quantitative analysis was significantly improved.

Table 7 Quantitative analysis results of sample BYG1916-1-7, BYG1916-1-5, BYG1916-1-4, BYG1916-1-3
Sample Element Relative concentration (wt%) Relative error (%)
Standard value Basic CF-LIBS Dual New New
BYG1916-1-7 Cu 84.73 93.51 85.53 85.61 1.28
Al 9.75 3.05 11.16 9.63 5.34
Mn 2.01 1.71 1.26 1.72 9.34
Fe 3.51 1.74 2.05 3.05 −3.81
BYG1916-1-5 Cu 84.67 89.91 83.46 83.63 −1.23
Al 7.76 3.36 9.41 8.42 8.46
Mn 2.63 3. 03 1.59 2.43 −7.71
Fe 4.94 3.70 5.53 5.52 11.83
BYG1916-1-3 Cu 84.99 89.69 86.43 84.41 −0.68
Al 9.24 3.35 7.67 10.21 10.46
Mn 1.56 3.02 1.43 1.39 −10.67
Fe 3.01 3.69 3.37 3.41 −13.25
Zn 0.69 0.25 1.10 0.58 −16.32
Other elements          
BYG1916-1-4 Cu 84.52 93.36 88.00 84.31 −0.25
Al 9.14 2.43 7.92 9.68 5.91
Mn 1.57 1.25 1.20 1.53 −2.50
Fe 3.17 2.95 1.97 3.53 11.41
Zn 1.11 0.36 0.90 0.95 −14.56
Other elements          


Conclusions

A novel beam-splitting method was demonstrated in this work. An individual pulse delivered by the laser was split into two sub-pulses by a beam splitter, which enabled a simple and low-cost system for field applications while maintaining the main advantages of dual-pulse LIBS. CF analysis based on this system was evaluated. IRSAC method and calibration-free inverse method were combined to improve CF analysis for the first time. The analytical results agreed well with the certified values of the elements in the sample, with an accuracy error between −17% and +12%. The reliability of quantitative analysis was improved in our method with only one matrix-matched reference material. Applied improved CF analysis with a single-beam-splitting LIBS system for practical field analysis was expected.

Acknowledgements

The authors are grateful to the financial support from the National Major Scientific Instruments and Equipments Development Special Funds (no. 2011YQ030113), the National Recruitment Program of Global Experts (NRPGE), the Hundred Talents Program of Sichuan Province (HTPSP), and the Startup Funding of Sichuan University for setting up the Research Center of Analytical Instrumentation.

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