The present invention relates to a method and apparatus for material analysis by a focused electron beam using characteristic X-rays and back-scattered electrons.
The proposed solution facilitates the identification and analysis of non-homogeneous materials. The term “particles” refers to the continuous spatially delimited areas on a sample surface, which in terms of the detecting abilities of the equipment seem homogeneous. “Morphological analysis of particles” refers to the determination of their morphological properties, such as shape or area. “Qualitative and quantitative spectroscopic analysis” are analytical chemistry methods which enable one to establish the presence of chemical elements contained in the assayed substance and their percentages therein, based on examining characteristic X-rays. The presented method is especially suitable in the analysis of the relationships between the individual types of materials contained in the examined sample.
The spectroscopic analysis using characteristic X-rays generated during an interaction of a focused beam of accelerated electrons which impact on the surface of an assayed sample with mass situated close to the surface of the assayed sample is an important tool for the study of the chemical and physical properties of materials. The analysis is performed in a scanning electron microscope 13, see
The back-scattered electrons are the electrons of the impinging beam which, after elastic collisions with the atoms of the material, leave the sample with a relatively small loss of energy compared to the energy with which they impacted on the sample. The probability of an elastic collision occurring depends strongly on the atomic number Z of the material. The back-scattered electrons may continue on to various types of interaction with other atoms in their surroundings, until finally some of them leave the material. The interactions happen within a given volume underneath the surface of the sample in the so-called interaction volume. The ratio of the number of electrons impinging on the surface of the sample to the number of electrons leaving the sample again with a roughly similar energy is called the back-scatter coefficient, marked as η in the literature. This variable is also dependent on the atomic number Z. In materials composed of multiple chemical elements the following equation published by Kurt F. J. Heinrich in the Proceedings of the 4th International Conference on X-ray Optics and Microanalysis in 1966 applies.
where η is the back-scatter coefficient in the composite material, Ci is the mass concentration of the element i and ηi is the back-scatter coefficient of a material composed of only the element i. The intensity of the back-scattered electrons is measured using a detector 8 of the back-scattered electrons: the analog signal from the detector 8 of the back-scattered electrons is converted into a digital format using an analog-to-digital converter 9, and based on information from its output, an image representing the distribution of the intensity of the back-scattered electrons at the points on the sample is created in the computer memory.
Energy-dispersive X-ray spectroscopy, abbreviated as EDS, is one of the methods for studying the chemical properties of materials using characteristic X-rays, which is another by-product of the interaction between the accelerated electrons and the sample material. Electrons in the atom occur in the electron cloud. The state of the electrons in the atoms cannot be random as an electron must be in a discrete state. The state of an electron is described using four quantum numbers. The kinetic energy of an electron is determined by which atomic orbital of which atom the electron occurs in. In the ground state, following the Aufbau principle, the electrons in the cloud are arranged so that they hold a position in orbitals with the lowest energy, whereby only two electrons may occupy a single orbital. An accelerated electron of the beam impinging on the sample has sufficient kinetic energy in order to transfer, with a certain probability, part of its kinetic energy to one of the electrons situated in one of the orbitals. The excited electron will leave the orbital, leaving an empty space behind. In a very short time, of the order of picoseconds, the atom will return to the ground state, as one of the electrons from an orbital with higher energy will fill the emptied space, and simultaneously release part of its binding energy in the form of a photon of electromagnetic X-ray radiation. The orbitals being discrete, the energy of the generated photon cannot be random, but corresponds to the difference between the energy of the orbital where the electron originally occurred and the energy of the orbital where an empty space was created during the interaction. The energy of the atomic orbital is unique for each chemical element and, as a result, each element exposed to a beam of accelerated electrons emits photons with energies which are characteristic of that particular element. This radiation is therefore called characteristic X-rays. The photons of the X-ray radiation undergo further interactions with the material; some of them leave the material and can be intercepted by an X-ray radiation detector. EDS uses an energy-dispersive detector 10 of X-ray radiation where the voltage at its output changes after an X-ray photon has impacted on its active surface and the magnitude of the change in voltage is proportionate to the photon energy. A pulse processor 11 is an electronic device that converts an analog signal from the output of the energy-dispersive detector 10 of X-ray radiation to digital format. Based on these reports, a histogram, referred to as a spectrum, is created in a computer memory, expressing the number of detected photons, the energy of which falls within predefined narrow intervals. As has been mentioned, the X-ray radiation photons arising in the material are characteristic for the element or elements contained within, and the frequency of the detection of photons with characteristic energies is therefore higher than that of the other photons. As a result, the energy-dispersive spectrum contains emission lines corresponding with the chemical elements contained in the sample. When the material is not homogeneous, it should be taken into account that radiation is again generated within a particular interaction volume underneath the surface of the sample, which is generally larger than the interaction volume, in which the back-scattered electrons originate. This effect is especially significant when the electron beam impacts on an interface of multiple areas with different chemical composition. In this case, the observed X-ray radiation corresponds to the combination of the spectra from those areas.
Quantitative spectroscopic analysis is a method of analytical chemistry for determining the percentages of chemical elements contained in the assayed substance based on examining characteristic X-rays. The analysis using the energy-dispersive spectrum is based on the relation between the intensity of X-ray radiation having energy characteristic for an element, further referred to as peak intensity, to the mass fraction of this element in an assayed substance. It was shown by Raimond Castaing in 1951 that the generated primary intensities are roughly proportional to the respective mass fractions of the emitting element. In the quantitative spectroscopic analysis, the ratio between peak intensities generated in an assayed substance and peak intensities generated in a substance of known composition is utilized. The ratio between peak intensities generated in an unknown substance and in a substance of known composition is in the literature referred to as the k-ratio. To get percentages of chemical elements contained in the assayed substance, the calculated k-ratios are subjected to corrections describing the level of absorption and repeated emission (fluorescence) of X-ray radiation, collectively referred to in literature as ZAF corrections. In order to simplify the calculation, it is usually assumed in the analysis that examined materials are homogeneous.
In analyzing non-homogeneous materials, the technique employed is usually referred to in the literature as X-ray mapping. The mapping is usually performed by consecutively deflecting the electron beam to various points on the sample. A control unit 12 ensures the synchronization of the circuits for the beam deflection and the pulse processor 11. The synchronization facilitates locating the spot on the sample from which the detected X-ray radiation originates. In this way, it is possible to obtain spectroscopic X-ray data with spatial differentiation. The simplest X-ray mapping technique is a method known as dot mapping. In this method, the interval of X-ray radiation energies is set in advance. The mapping result is displayed in the form of a two-dimensional bi-level image, in which the black and the white points indicate the spots on the sample where the number of detected events per unit of time falling within the predefined energy interval is higher and lower than a predefined threshold respectively. More elaborate information on the chemical composition of heterogeneous samples is provided by the technique known as gray-scale mapping. The mapping result is displayed in the form of a two-dimensional gray-scale image, in which the gray level of each point is proportional to the number of detected events per unit of time falling within the predefined energy interval. A precondition of using gray-scale mapping is sufficient spectroscopic data. This precondition is not easy to meet as the signal from the EDS detector is relatively weak relative to the resolution of the maps used in the particle analysis.
A key component of an automated particle spectroscopic analyzer based on gray-scale mapping is image segmentation. In computer graphics, image segmentation refers to a set of techniques for image division into separate areas. In the past, a number of techniques for image segmentation were published. Some of the published methods are based on transformation which in the literature is described with the term “watershed.” The original idea was presented by Serge Beucher and Christian Lantuéjoul in the article “Use of watersheds in contour detection” published in September 1979 in the proceedings of the International Workshop on Image Processing in Rennes. The transformation is based on the idea that a single-channel (gray-scale) image can be thought of as a topographic relief, where the value of a point in the image correlates with the point elevation above the zero plane. The relief is gradually flooded with water. In the low-lying places, corresponding with the local minimum values, pools of water are formed. Where the pools would flow together, a dike is built between them. The result of the procedure is an image divided up into continuous areas which form in places where, in the input image, the values are lower than in the surroundings. From the previous text, it is obvious that the watershed transformation input is a single-channel differential image where the pixel values correspond to the magnitude of the gradient in the original image as in those places the watershed transformation creates boundaries between the areas. An extension of this method to the application of conversion to a multi-channel image can be found, for example, in the contribution “A Multichannel Watershed-Based Segmentation Method for Multispectral Chromosome Classification” published by Petros S. Karvelis in the IEEE Transactions on Medical Imaging, Volume 27, No. 5, where this technology is used for the classification of chromosomes in an image obtained using a multi-channel fluorescence imaging method.
Prior to the image segmentation using the watershed transformation, another transformation, called edge detection, is employed. The purpose is to transform the input image so that, at the spot with a transition between two areas with different intensity, the values in the output image are higher than in the surrounding points. Most of the edge detection algorithms are based on the gradient operator ∇ from the vector calculus. The gradient of a scalar field is a vector field which points in the direction of the greatest rate of increase of the scalar field and its magnitude is that rate of increase. The single-channel image can be thought of as a scalar function I=I(x, y): R2→R. The gradient operator ∇ applied to the scalar function I is defined as follows:
The magnitude of the rate of change H(x, y) of the function I at a point with coordinates x and y can be derived as the Euclidean norm of the vector ∇I(x, y). Therefore, the resulting scalar function H=H(x, y): R2→R can be derived as follows:
H=∥∇I∥=√{square root over (Ix2+Iy2)}
One of the frequently used implementation of this paradigm is referred to in the literature as the Sobel operator. It can be proven that the edge detection in a single-channel (gray-scale) image can be carried out using two convolutions of the original image I with matrix Fx and Fy.
The result of the convolution of an image I and matrix Fx and Fy is a vector field G, which consists of two components Gx and Gy. The output image H, which contains the magnitude of a vector field G, is computed as follows:
G
x
=I*F
x
G
y
=I*F
y
H=√{square root over (Gx2+Gy2)}
In material analysis based on X-ray mapping, it is beneficial to use information obtained from both types of detector. The interaction volume of the back-scattered electrons is generally smaller than the interaction volume of the X-ray radiation; the boundaries between particles are therefore better defined in the back-scatter electron image than in an image created exclusively from X-ray data. On the contrary, if the image segmentation is only based on an image from the BSE detector, the equipment is not able to detect a boundary between two materials which have a very close value of back-scatter coefficient n, as these materials cannot be distinguished only based on comparing the intensity level of the back-scattered electrons. As was stated before, the Sobel operator can be applied to a single-channel image only. An extension of this concept to multi-channel images was published in 1994 by Christian Drewniok in his paper “Multi-Spectral Edge Detection—some experiments on data from Landsat™”. He showed that although the gradient operator per se only applies to scalar functions, the idea can be easily extended to multi-dimensional functions. He has demonstrated a gradient-based approach for detecting edges in multi-channel images and its application in multi-spectral satellite imagery.
A multi-channel image can be thought of as a vector function C=C(x, y): R2→Rn, where n is a number of channels. The gradient of the function C in a direction {right arrow over (n)} is defined as follows:
The matrix J is the Jacobian matrix of the vector function C. The magnitude of change of C can be derived as Euclidean norm of the vector J·{right arrow over (n)} in direction of maximum value of change.
l
2({right arrow over (n)})=∥J·{right arrow over (n)}∥={right arrow over (n)}T·(J·JT)·{right arrow over (n)}
It can be proven, that the problem of maximizing the norm l2({right arrow over (n)}) as a function of {right arrow over (n)} can be solved as computing the maximum eigenvalue of the matrix J·JT. The magnitude of change of C is equal to the maximum eigenvalue λmax.
The values a11, a12 and a22 are defined by means of the first-order partial derivatives of the function C as follows:
The analysis of non-homogeneous materials in a screening electron microscope is dealt with, for example, in U.S. Pat. No. 7,490,009. The described equipment collects spectroscopic data using an energy-dispersive spectrometer. By comparing the acquired data with a predefined set of spectral categories, the equipment first assigns the individual measuring points to the pre-defined spectral categories. Based on these categories continuous groups of points are subsequently created and, from them, particles. The disadvantage of this solution is the necessity to define a great number of spectral categories as owing to the size of the interaction volume for X-ray radiation which is comparable with the distance of the adjacent measuring points, there is emission of X-ray radiation in both particles in the vicinity of the interface of two particles. As a result, spectroscopic data is distorted in this case while the detected characteristic X-rays originate at this point from two chemically different materials, and correct classification is difficult in this case. In addition, proper classification requires that sufficient data is collected in each measuring point which is demanding in terms of time. Another disadvantage of the equipment is the fact that the detection of particles is based on a classification made using spectral data and ignores information from the detector of the back-scattered electrons.
The disadvantages described above are eliminated by the method of material analysis using a focused electron beam in a scanning electron microscope and the equipment to perform it. In a preferred embodiment, the method starts by establishing, using an expert estimate, an adequately large set P of chemical elements, further as set P, which might occur in the assayed sample. For each element pi from set P the interval Ii of energies of X-ray photons is determined corresponding to one of the emission lines of the element. Next, the focused electron beam is consecutively deflected to points on the assayed sample and at the points the intensity of the back-scattered electrons is established for the purpose of creating an electron map B and a histogram of the energies of the X-ray radiation emitted in this point is established with the purpose of creating a spectral map S. A significant feature of a preferred embodiment of the new method consists in the fact that a X-ray map Mi is created for each element pi from set P where the values Mi(x, y) stored in the map Mi are related to the points on the sample with coordinates (x, y) and correlate with the intensity of X-ray radiation with energy within the interval Ii emitted in these points. Afterwards, the multi-channel gradient algorithm is applied to the X-ray maps Mi and the electron map B to create a differential map D, where the values D(x, y) stored in the map D are related to the points on the sample with coordinates (x, y) and correlate with the magnitude of the intensity gradient of the back-scattered electrons and the magnitude of the intensity gradient of X-ray radiation with energy within intervals Ii for all elements pi from set P. This is followed by the image segmentation, using watershed transformation applied to the differential map D, in order to search for particles. The result of this operation is a set Q of particles, further as set Q, where each particle is assigned a sequence number j, and a map R of particle distribution, where the values R(x, y) stored in map R are related to the points on the sample with coordinates (x, y) and correlate with the sequence number of the particle. Using an expert estimate, the value of coefficient a is set, which value influences the weight of the border points in a weighted mean, and by using the weighted mean, for each particle qj from set Q, spectrum Xj of X-ray radiation is determined from spectral map S using the coefficient a, where the values Xj(E) stored in Xj are accumulated intensities of X-ray radiation with energy E. In the end, peak intensities Ni,j are computed as a total number of X-ray events recorded in spectrum Xj with energy within intervals Ii for all elements pi from set P and for all particles qj from set Q.
The gradient-based edge detection in multi-channel imagery can be realized using an algorithm that comprises the following steps. The input of the algorithm is a multi-channel image M that consists of n channels. The output is a single-channel gradient image H, where values H(x, y) at a point with coordinates x and y correspond to a magnitude of change of image M at that point. Initially, the values of matrices Fx and Fy are computed as the first-order partial derivatives of the discrete two-dimensional Gaussian function G(x, y, x0, y0, σ). The Gaussian function is centered to the central element of matrices and its width, the parameter σ, is set by an expert estimate based on the ratio of size of interaction volume in material of an assayed sample and known distance between two adjacent measurement spots.
Then, two partial derivatives Gix and Giy for the channel i and directions x and y are derived by two convolutions of channel Mi of the image M with matrices Fx and Fy respectively.
G
i
x
=M
i
*F
x
G
i
y
=M
i
*F
y
In a subsequent step, the values Gix and Giy are summed together for all channels i from 1 to n, to get the values a11, a12 and a22.
The value H(x, y) of resulting gradient image D is computed as the value of maximum eigenvalue λmax:
Another alternative preferred embodiment comprises using an expert estimate to set the values of coefficients bmin and bmax, which values represent the minimum and maximum expected level of intensity of the back-scattered electrons in materials which are the subject of the performed analysis. In the next step, the mean level of intensity of the back-scattered electrons bj is determined for each particle qj from the set Q based on the map R of particle distribution and the electron map B using the median. If value bj is situated within the closed interval between values bmin and bmax, particle qj is inserted in a new set Q′. Then, the spectrum Xj of X-ray radiation is established for each particle qj from the new set Q′ using a weighted mean from spectral map S using the coefficient a. Peak intensities Ni,j are subsequently computed as a total number of X-ray events recorded in spectrum Xj with energy within intervals Ii for all elements pi from set P and for all particles qj from set Q.
Yet another alternative preferred embodiment comprises using an expert estimate to specify a set Z of rules for classification, further as set Z, being a totally ordered set of pairs (ck, vk) and each class ck is assigned a logical expression vk consisting of identifiers of variables, arithmetic operators, logical operators, comparison operators and numerical constants. Next, a set of variables occurring in expressions stored in set Z is determined. For each particle qj from the set Q the peak intensities Ni,j are assigned to these variables which is followed by evaluating the logical value of expressions in order of their appearance in the set Z. The evaluation is stopped on one of the following two conditions: a) an expression that evaluates to “true” is found or b) all expressions are evaluated to “false”. In case the evaluation has been finished on the first condition, the first class from the top of the list Z whose expression is true is assigned to a set Cj, being a result of classification of particle qj. In case of stopping on the second condition, where all expressions are false, the result of the classification of particle qj is an empty set Cj. This method can also be applied to the case described in the previous paragraph; in this case the mean level of intensity of back-scattered electrons bj is also assigned to a variable occurring in the expressions.
The equipment for performing the method following the basic procedure is based on equipment comprising a scanning electron microscope equipped with a detector of back-scattered electrons connected to the input of an analog-to-digital converter and an energy-dispersion detector of X-ray radiation connected to the input of a pulse processor. The output of the analog-to-digital converter and the output of the pulse processor are connected to a processing unit. The whole processing unit is preceded by a data storage unit that contains processing instructions (program) and a memory unit for storing data during analysis and results of the analysis. The processing unit is also preceded by an input device for entering the input values, a pointing device for marking the selected particles and a display device for displaying results of the analysis.
Advantages of the preferred embodiments of the method and equipment include the following: Particle search uses back-scattered electrons. Due to the small interaction volume for back-scattered electrons, the boundaries between particles are better defined. It is therefore possible to analyze smaller particles with a lower error than in searching for particles only based on X-ray data. The particle search also uses X-ray radiation which enables reliable detection of the boundary between two materials, which may have different chemical composition, but a similar value of the emissivity of the back-scattered electrons. Another advantage is the fact that it is the particles that are classified instead of the individual points. This approach facilitates better handling of marginal phenomena occurring close to the transition between two particles with different chemical composition thanks to the non-negligible size of the interactive volume for X-ray radiation, which significantly reduces the number of necessary classification classes. Also the time demands of the whole analysis are considerably reduced due to the lower number of classifications. The demands on time of the analysis can be reduced even further when the assayed sample contains a considerable number of particles which from the point of view of the analysis performed are uninteresting and can be excluded before the quantitative spectroscopic analysis based on the intensity of the back-scattered electrons. A typical example is carbon powder, which is added to mineralogical samples in order to simplify the particle analysis as it reduces the probability of contact between particles. Carbon has a significantly lower BSE emissivity than other materials, which are usually subject to analysis. Using the comparative block it is possible to exclude particles containing only pure carbon from further processing.
a, 3b and 3c show data-flow diagrams of preferred alternatives where some sections which are shared with the basic variant are left out for clarity.
A preferred embodiment of the work-flow of a method of material analysis by a focused electron beam in a scanning electron microscope is depicted in
In a further enhancement, the work-flow diagram of which is shown in
In another preferred embodiment, the work-flow diagram of which is depicted in
A preferred embodiment of equipment for material analysis by a focused electron beam using characteristic X-rays and back-scattered electrons is schematically depicted in
When an expert estimate is used to set the values of coefficients bmin and bmax, the output of the first memory 21 is simultaneously connected to one input of the third integration block 50, the second input of which is connected to the output of the ninth memory 34. The third input of the integration block 50 is connected to the output of the tenth memory 35. The output of the third integration block 50 is then connected to one input of the comparative circuit 51, the second input of which is connected to the output of the thirteenth memory 52. The output of the comparative block 51 is connected via the fourteenth memory 53 to the second input of the second integration block 36.
When specifying a set Z, the output of the twelfth memory 39 is connected to one input of the classifier 60, the second input of which is connected to the output of the fifteenth memory 61. The output of the classifier 60 is connected to the sixteenth memory 62. When both modifications are incorporated, the classifier 60 is fitted with a fourth input connected to the eighteenth memory 54.
In the preferred embodiment, the equipment works in the following way: The control unit 12 generates, following a command from the processing unit 20, scanning instructions which define the sequence of points on the sample 4. The scanning circuits 5 control the current through the deflecting coils 3 so that electron beam 2 gradually impacts on the sample 4 at points according to the scanning instructions. The control unit 12 then communicates with the analog-to-digital converter 9 and the pulse processor 11. The signal from the analog-to-digital converter 9 and the pulse convertor 11 is sent to the processing unit 20, where it is further processed.
The processing unit 20 creates, based on the signal from the detector 8 of back-scattered electrons, an electron map B, which is stored in the first memory 21, containing the intensity of the back-scattered electrons at the points on the sample 4 according to the scanning instructions. The electron map B in this case refers to a two-dimensional field of scalar values, where the two dimensions correspond with the rectangular system of coordinates x and y on the sample 4. Scalar values B(x, y) stored in the electron map B correlate with the intensity of the detected back-scattered electrons at the spot on sample 4 with coordinates (x, y) over time, during which the electron beam remained at this point.
Simultaneously, based on information from the energy-dispersive detector 10 of X-ray radiation, a spectral map S is created in the second memory 22. The spectral map S refers to a three-dimensional field, where the first two dimensions correspond with the coordinates x and y on the sample 4 and the additional third dimension is the ordinal number of the channel corresponding to the narrow interval of the energy of photons E. Scalar values S(x, y, E) stored in the spectral map S correlate with the number of the detected X-ray photons with given energy E at the spot on sample 4 with coordinates (x, y) over time, during which the electron beam remained in this point.
Based on the knowledge of the expected mineralogical or chemical composition of the samples an experienced user will enter, using the input device 44 preceding the processing unit 20, e.g. a keyboard, prior to starting the analysis, a set P of chemical elements where P={pi; i=1, 2, . . . n}, and a set I of the intervals of energies of X-ray radiation, further as set I, where I={Ii; i=1, 2, . . . n}, where n is the number of the elements entered and the interval Ii corresponds to the narrow interval of energies in the surroundings of one of the characteristic emission lines of element pi. The set P is stored in the third memory 23 and the set I is stored in the fourth memory 24 before starting the analysis.
The second memory 22, containing the spectral map S, is linked to the input of the first integration block 25, which will create, for each interval Ii from the set I, one X-ray map Mi according to the following equation.
The X-ray maps Mi are represented by a two-dimensional field, where the two dimensions correspond to the rectangular system of coordinates x and y on the sample. Scalar values Mi(x, y) stored in X-ray maps Mi are proportionate to the intensity of the X-ray radiation characteristic for the element pi in a spot on the sample with coordinates (x, y). Before further processing, the output of the first integration block 25 is stored in the fifth memory 26.
The fifth memory 26, containing the X-ray maps Mi, and the first memory 21, containing the electron map B, are linked to the input of the derivation block 46, which for each X-ray map Mi and the electron B will create a differential map D so that the values D(x, y) are calculated for each spot on the sample with coordinates (x, y) using the multi-channel edge-detection algorithm. The output of the derivation block 46, the differential map D, is stored in the eighth memory 32.
The eighth memory 32, containing the resulting differential map D, is linked to the input of transformation block 33, which performs the image segmentation using the watershed transformation. The result of the segmentation is a set Q of particles found, where Q={qj; j=1, 2, . . . m}, where m is the number of particles found, and a map R of particle distribution, which defines, for each particle qj from the set Q, a set of points (x, y) on the sample 4, which belong to the particle qj. The set Q is stored in the ninth memory 34 and the map R is stored in the tenth memory 35.
The second integration block 36 will read the set Q stored in the ninth memory 34 and the map of particle distribution R stored in the tenth memory 35 and the spectral map S, stored in the second memory 22. In a sequential manner, the accumulated values Xj(E) of the spectrum Xj of X-ray radiation are calculated for each particle qj from the set Q based on the equation below, from all points (x, y), which according to the map R are spatially situated inside the particle qj. The spectra Xj are stored in the seventeenth memory 47.
The weight of contribution wj(x, y) at the point with coordinates (x, y) is calculated from minimum distance dmin(x, y) of point (x, y) from points at the edge of particle qj and coefficient a based on the equations below. Coefficient a is determined by an experienced user prior to starting the analysis based on a knowledge of the nature of the assayed samples and the value is stored in the eleventh memory 37. This step has essential influence on the accuracy of the analysis result and reliability of the following classification. The spectroscopic analysis assumes that the material in the interaction volume, from which the analyzed spectrum originates, is homogeneous. In non-homogeneous materials this precondition is not generally met as owing to the non-negligible size of the interaction volume there is emission of X-ray radiation close to the interface between two particles on both sides of the interface. Using a weighted mean, where the points at the particle boundary have a lower weight than points inside it, can significantly reduce this unwanted phenomenon.
for dmin(x, y)<a a wj(x, y)=1 f or other values dmin(x, y)
Spectrum Xj, stored in the seventeenth memory 47, enters into the spectral analyzer 38, in which the intensities of the selected characteristic X-ray radiation are established, by computing a total number of X-ray events Ni,j that is stored in spectrum Xj for each element pi from a set P. The result of the spectral analysis, intensities are stored in the twelfth memory 39 and is presented to the user on a display device 41 connected to the processing unit 20. The spatial distribution of the particles, the map R of particle distribution, stored in the tenth memory 35, is presented in the form of a two-dimensional image. The user is allowed to use a pointing device 42 preceding the processing unit 20, such as a mouse, to mark in the image one of the particles, and another part of the display device 41 will consequently show the user the peak intensities of the chemical elements stored for the selected particle in the twelfth memory 39.
In the second preferred embodiment, the block diagram of which is shown in
In the third preferred embodiment, the block diagram of which is shown in
A fourth preferred embodiment incorporates both modifications described above in the second and third preferred embodiments. The block diagram of the fourth preferred embodiment is shown in
The presented new procedure and equipment are especially suitable for application in mineralogy in the quantitative analysis of ore. In this analysis the assayed sample of an ore is usually crushed to fine particles with a size of the order of units to dozens of micrometers, and is divided using sieves by particle size into several fractions. From each fraction several samples are taken. The samples are then usually mixed with filler and epoxy resin and are left to harden into cylindrical blocks, which are further polished and subsequently covered with a thin conductive layer, typically carbon, to avoid the surface charging. The sample blocks are placed in a scanning electron microscope that collects the data and analyzes the material on their surface. The presented equipment facilitates fully automated analysis of those samples, the results of which are the morphological and chemical properties of the minerals of which the assayed sample is composed and most importantly information on the spatial association of the minerals which in many situations is essential information in terms of determining the physical and chemical properties of ore. The principles, preferred embodiments and mode of operation of the present invention have been described in the foregoing specification. However, the invention which is intended to be protected is not to be construed as limited to the particular embodiments disclosed. The embodiments are therefore to be regarded as illustrative rather than as restrictive. Variations and changes may be made without departing from the spirit of the present invention. Accordingly, it is expressly intended that all such equivalents, variations and changes which fall within the spirit and scope of the present invention as defined in the claims be embraced thereby.
Number | Date | Country | Kind |
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2011-154 | Mar 2011 | CZ | national |