Molecularly-Limited Fractal Surface Area of Mineral Powders

The topic of the specific surface area (SSA) of powders is not sufficiently described in the literature in spite of its nontrivial contribution to adsorption and dissolution processes. Fractal geometry provides a way to determine this parameter via relation SSA ~ x(D ́ 3)s(2 ́ D), where x (m) is the particle size and s (m) is a scale. Such a relation respects nano-, micro-, or macro-topography on the surface. Within this theory, the fractal dimension 2 ď D < 3 and scale parameter s plays a significant role. The parameter D may be determined from BET or dissolution measurements on several samples, changing the powder particle sizes or sizes of adsorbate molecules. If the fractality of the surface is high, the SSA does not depend on the particle size distribution and vice versa. In this paper, the SSA parameter is analyzed from the point of view of adsorption and dissolution processes. In the case of adsorption, a new equation for the SSA, depending on the term (2 ́D) ̈(s2  ́ sBET)/sBET, is derived, where sBET and s2 are effective cross-sectional diameters for BET and new adsorbates. Determination of the SSA for the dissolution process appears to be very complicated, since the fractality of the surface may change in the process. Nevertheless, the presented equations have good application potential.


Introduction
Specific surface area (SSA) is an important parameter influencing many physical and chemical processes, but there is no useful general equation for this quantity available in literature.This paper focuses on the surfaces of natural mineral powders (particular or granular materials, porous media), but the presented theory could be applied to all types and forms of materials.Surface energy, mechanical fragmentation processes, dissolution processes, chemical reactivity among liquid and solid powder particles, and adsorption are all strongly determined by the surface area of interacting powders [1][2][3][4].
The well-known measurement method for direct determination of the SSA is the BET (Brunauer, Emmett, Teller) method [5], which is based on gas adsorption.Alternatively, a dissolution process allows the SSA determination [6,7].The "geometric" SSA can be derived from sieve or laser measurements of particle size distribution [8,9] or from capillary elevation of liquid through powder [10,11].A correct equation for the determination of SSA must take into account the size distribution of particles and surface topography.Theoretical relations for computation of the specific surface area of powder materials are presented in [9] for smooth particles or in reviews for fractal (rough-surface, irregular-surface) particles in [12][13][14], which also dealing with principal problems of the surface topography.
The goal of this paper is to offer relationships for practical evaluation of the real surface area of powders.Such an approach offers the possibility of evaluation of large sample sets if the fractal dimension D of a surface is well known, for example from several BET measurements.The end of the paper mentions errors committed by other authors expressing SSA through fractal geometry.

Powders
In general, the powders may be prepared via two processes: (i) by a mechanical fragmentation of large pieces of material through sequential fragmentation to powder form and (ii) by a crystallization pathway, where crystals are created within a solution.In case of mechanically fragmented materials, particle shapes are relatively independent of crystallographic parameters [15].In cases of crystals that grew within the solution, their shapes are determined by the types of crystal lattices.Their SSA depends on particle size (grain or crystal sizes), particle shapes, and level of surface topography.The differences between surface topography may be very significant, as presented for several materials in Figures 1 and 2.
Minerals 2016, 6, 44 2 of 14 powder [10,11].A correct equation for the determination of SSA must take into account the size distribution of particles and surface topography.Theoretical relations for computation of the specific surface area of powder materials are presented in [9] for smooth particles or in reviews for fractal (rough-surface, irregular-surface) particles in [12][13][14], which also dealing with principal problems of the surface topography.The goal of this paper is to offer relationships for practical evaluation of the real surface area of powders.Such an approach offers the possibility of evaluation of large sample sets if the fractal dimension D of a surface is well known, for example from several BET measurements.The end of the paper mentions errors committed by other authors expressing SSA through fractal geometry.

Powders
In general, the powders may be prepared via two processes: (i) by a mechanical fragmentation of large pieces of material through sequential fragmentation to powder form and (ii) by a crystallization pathway, where crystals are created within a solution.In case of mechanically fragmented materials, particle shapes are relatively independent of crystallographic parameters [15].In cases of crystals that grew within the solution, their shapes are determined by the types of crystal lattices.Their SSA depends on particle size (grain or crystal sizes), particle shapes, and level of surface topography.The differences between surface topography may be very significant, as presented for several materials in Figures 1 and 2.    powder [10,11].A correct equation for the determination of SSA must take into account the size distribution of particles and surface topography.Theoretical relations for computation of the specific surface area of powder materials are presented in [9] for smooth particles or in reviews for fractal (rough-surface, irregular-surface) particles in [12][13][14], which also dealing with principal problems of the surface topography.The goal of this paper is to offer relationships for practical evaluation of the real surface area of powders.Such an approach offers the possibility of evaluation of large sample sets if the fractal dimension D of a surface is well known, for example from several BET measurements.The end of the paper mentions errors committed by other authors expressing SSA through fractal geometry.

Powders
In general, the powders may be prepared via two processes: (i) by a mechanical fragmentation of large pieces of material through sequential fragmentation to powder form and (ii) by a crystallization pathway, where crystals are created within a solution.In case of mechanically fragmented materials, particle shapes are relatively independent of crystallographic parameters [15].In cases of crystals that grew within the solution, their shapes are determined by the types of crystal lattices.Their SSA depends on particle size (grain or crystal sizes), particle shapes, and level of surface topography.The differences between surface topography may be very significant, as presented for several materials in Figures 1 and 2.

Particle Size Distribution
Particle sizes in poly-disperse samples typically follow two-parametric distribution, most often log-normal (or Gaussian normal), power function GGS (Gates, Gaudin, Schuhmann), or exponential function RRSB (Rosin, Rammler, Sperling, Bennet) [16].Evaluation of their surface area is not simple, in contrast to samples with very narrow size ranges, often considered and denoted as monodisperse.The most frequent type of distribution is log-normal, which was observed in both mechanically fragmented and crystallized powders [16,17].The SSA of monodispersional, smooth, spheric particles is equal to SSA = 6/(ρ¨x), where ρ is particle density (true density) and x (m) the particle size (effective diameter).The SSA of the smooth-spheric particles following the log-normal size distribution is SSA = 6ρ ´1¨exp[´(µ + 2.5w 2 )], where µ and w are the arithmetic mean and standard deviation of ln(x i ) values, respectively, and x i is the diameter of an individual particle [8,9].

Surface Fractal Topography
A very useful mathematical tool for describing surface topography seems to be Mandelbrot´s fractal geometry [18].This theory was successfully used for description of the topography of mineral powder surfaces [19][20][21].The conclusions of such an analysis are: (I) surface topography may have a fractal character, as found for more than 75% of materials [19]; (II) the surface fractal dimension D typically ranges between 2 and 3 and D = 2 denotes a smooth surface; (III) the surface topography is self-similar; (IV) the fractal dimension D can be determined from the linear dependence of log(SSA) on log(x), the slope is equal to (D -3), or can alternatively be calculated from the dependence of log(SSA) on log(s), where the slope is equal to (2 ´D), where x is the powder particle parameter (radius or diameter) and s (m) is the measurement scale (most often the size of adsorbate's molecule); (V) the SSA of particular materials can be expressed as C¨s 2 ´D¨x D ´3, where C (m 3 /kg) is a constant related to the shape and density of the particles, s (m) is the size of adsorption molecule, x (m) is the size of the particles, and D is the surface fractal dimension [21].
The s parameter may even reach a lattice dimension of crystals, i.e., 10 ´10 m.Because of an experimentally found paradox that D variables depend on the type of adsorbate (size of s), the researchers [7] introduced a new parameter, the "reaction fractal dimension" D R (see Table 1).It means that the same powder may have different fractal dimensions according to the type of adsorbate molecules interacting with the powder surface.In several works dealing with the fractal dimension of surfaces, the scale parameter was omitted in spite of the fact that it is not possible to perform fractal analysis without it (see Discussion).a determined from BET or dissolution methods using small adsorbate molecules.

Methods
This paper presents a theoretical framework to describe the SSA.Focusing on provision of applicable relations for the SSA of powder mineral materials, which are greatly spread in chemical processes, and currently play a significant role in nanotechnology, we used the basic findings of the Mandelbrot fractal theory [14].This theory was completed using parameters related to the size distribution of powder particles.To support the theory, data from previous measurements are presented in Tables 1 and 2. Theoretical simulations were performed using Matlab 7.0 and Microsoft Excel codes.
The photos of the mineral particles were obtained from SEM Philips 515 (Philips, Amsterdam, The Netherlands).The presented SSA values (for Figures 1 and 2) were acquired from BET measurements on a Sorptomatic 1990 device (Thermo Fisher Scientific, Waltham, MA, USA).
Terminology: There is a problem in deciding whether specific surface area (SSA) is an appropriate name for the quantity that is the subject of the article.We could rename it chemical specific surface area, reaction specific surface area, or reactive specific surface area.Whatever the most appropriate name may be, what is known for certain is that real SSA does not exist since it depends on the s scale parameter, i.e., on the size of adsorbate (dissolvent).In our opinion, it is better to keep the traditional name SSA, which is used in the main experimental technique (BET), to have the possibility of comparison, and simultaneously add the term reactive specific surface area (RSSA) as a more appropriate value for real surface processes.In the RSSA, which is defined in the discussion section, diffusion time of adsorbate (dissolvent) to fractal-porous media plays an important role.

Results and Discussion
In this section, the SSA is derived for pure powder materials using fractal theory.This approach provides a possibility for a recomputation of the SSA results from BET measurements to the SSA for a new adsorbate.The SSA value is then transformed to the RSSA in the discussion section below.Simple models for time-development of reaction fractal dimension D R during surface interaction processes are simulated.

Shape Factor and Particle Shape Approximation
In this paper, the simplest spheric approximation of particle shapes, a sphere with diameter x, is used.Then, the surface area of the smooth spheric particles is A = πx 2 and its volume is V = πx 3 /6, in which π and π/6 are shape factors.Real particles and crystals have various shapes and their shape factors cannot easily be derived.

Size Distribution of the Powder Particles
In laboratory work, it is experimentally very difficult to prepare a powder monodispersion, the particle size distribution of which can be described by a Dirac delta function.The powders are actually prepared as pseudo-monodispersions (narrow polydispersions) with x min and x max parameters.If the x max ´xmin size interval is narrow, the particle size distribution can simply be considered as uniform, but the size uniformity as well as the uniformity of other quantities (surface area or volume of particles) is not guaranteed.The parameters of this type of distribution are presented in Appendix A, including x A and x V , the particle sizes with average surface area and volume, respectively, which are needed for the determination of the SSA.If the powders follow a linear distribution (see Figure 3), the related parameters, presented in Appendix B, can be used.It seems to be most practical to use the parameters for experimental distribution (see Appendix C).If, as is often observed, powder particles follow log-normal distribution, the mentioned parameters are presented in Appendix D. The particle size distribution of a powder can be determined most precisely by laser analyzers.
Minerals 2016, 6, 44 5 of 14 which π and π/6 are shape factors.Real particles and crystals have various shapes and their shape factors cannot easily be derived.

Size Distribution of the Powder Particles
In laboratory work, it is experimentally very difficult to prepare a powder monodispersion, the particle size distribution of which can be described by a Dirac delta function.The powders are actually prepared as pseudo-monodispersions (narrow polydispersions) with xmin and xmax parameters.If the xmax − xmin size interval is narrow, the particle size distribution can simply be considered as uniform, but the size uniformity as well as the uniformity of other quantities (surface area or volume of particles) is not guaranteed.The parameters of this type of distribution are presented in Appendix A, including xA and xV, the particle sizes with average surface area and volume, respectively, which are needed for the determination of the SSA.If the powders follow a linear distribution (see Figure 3), the related parameters, presented in Appendix B, can be used.It seems to be most practical to use the parameters for experimental distribution (see Appendix C).If, as is often observed, powder particles follow log-normal distribution, the mentioned parameters are presented in Appendix D. The particle size distribution of a powder can be determined most precisely by laser analyzers.

Determination of the Specific Surface Area (SSA)
Considering the main results of fractal theory [18], a practical equation can be derived for computation of the SSA of powders with fractal (non-smooth) surfaces.
The maximal amount of molecules covering the spheric particle in a single layer is where xA (m) is the particle size with average surface area, s (m) is the effective cross sectional diameter of a liquid molecule, D (-) is the true fractal dimension of the surface, and DA = D/2 fractal dimension of the surface related to the area scale.For similar considerations see [22,23].Approximation of the adsorbate molecular cross-sectional area by square seems to be theoretically more valid than approximation by circle.Equation (1) corresponds with Mandelbrot´s fractal geometry, where the fractal dimension for unit area (length) is expressed by the well-known equation D = log(N)/log(1/ε), where ε ≤ 1 is a dimensionless equivalent to the scale parameter s.A total area of the single particle (granule, grain, crystal) is

Determination of the Specific Surface Area (SSA)
Considering the main results of fractal theory [18], a practical equation can be derived for computation of the SSA of powders with fractal (non-smooth) surfaces.
The maximal amount of molecules covering the spheric particle in a single layer is where x A (m) is the particle size with average surface area, s (m) is the effective cross sectional diameter of a liquid molecule, D (-) is the true fractal dimension of the surface, and D A = D/2 fractal dimension of the surface related to the area scale.For similar considerations see [22,23].Approximation of the adsorbate molecular cross-sectional area by square seems to be theoretically more valid than approximation by circle.Equation (1) corresponds with Mandelbrot´s fractal geometry, where the fractal dimension for unit area (length) is expressed by the well-known equation D = log(N)/log(1/ε), where ε ď 1 is a dimensionless equivalent to the scale parameter s.A total area of the single particle (granule, grain, crystal) is The SSA is generally defined as SSA = A/(ρV) = nA ave /(ρnV ave ), where A and V are the surface area and volume of all powder particles with density ρ, A ave and V ave are average values for a set of particles, and n is their count.Respecting the fractal character of a surface, the SSA is In case of true mono-dispersion, where x is the particle size (effective diameter).
The limits of Equation (3b) are SSA = 6/(ρ¨x) for D = 2 and SSA = 6π 0.5 /(ρ¨s) for lim DÑ3 SSA.An equation similar to Equation (3b) is presented in [21] and in a simpler form also in the book by Adamson [12], page 564.The importance of the x A and x V parameters significantly decreases if the value of D approaches 3.
The form of Equation (3b) confirms the validity of the mutual experimentally observed linear relation between log(SSA) and log(x) or the linear relation between log(SSA) and log(s), with slopes equal to (D ´3) and (2 ´D) respectively [7,19], as mentioned in the introduction.It seems that such experimentally determined dependences with a significant linear theoretical fit imply a fractal (or self-similar) character of measured surfaces.Also, several authors note the multifractality of the surface [24,25].It is contentious whether the dependences presented in [24] express "multifractality" or non-fractality of surface.Multifractality of surface seems to be hard to explain since the basis of the fractal theory is a dimensional replication of the same surface motive.
Considering alternative evaluation of the external surface area by SSA ext = λ6/(ρ¨x) relation in [26], where λ is the surface roughness, the slope of linear relation between log(SSA) and log(x) is equal to ´1.Such an equation is not applicable to fractal surfaces and may be fully recovered by Equation (3a) or (3b).

Logarithmic transformation of Equation
where b = log[6π (D/2 ´1) ρ ´1s (2 ´D) ] and m 1 = D and m 2 = (D ´3).Equation (4b) corresponds with the relation generally used for evaluation of SSA of mineral powders [26].The slope in the log(SSA) vs. log(x) dependence is presented for several minerals in Table 2 (original slopes recomputed for fractal dimensions).In several cases, the fractal dimension D does not fall into the interval 2 ď D < 3, similarly as in the case of Table 1.Such results were not explained in the original paper [7], but theoretically, using Equation (4a), the paradox can be explained.Brantley and Mellott [26] used the mentioned dependence (Equation (4b)); however, they worked with narrow polydispersions.As a particle size parameter, they introduced the "mean particle diameter" d = 10 n = (x max ¨xmin ) 0.5 , where n = (logx max + logx min )/2, considering the particle size distribution as log-normal.For example, for Amelia albite, the presented size limits amount to x max = 840 µm and x min = 500 µm and the mean particle diameter amounts to d = 648 µm.
Their approach is not correct, because considering the particle size distribution as log-normal in all powder size intervals is not correct (the log-normal distribution cannot be expected within the individual size intervals, see Figure 3).As a result, the expressions for d do not represent the effective particle dimension.

Determination of the Surface Fractal Dimension D
Equation (4a,b) offer the possibility of regression determination of the true surface fractal dimension D or reaction fractal dimension D R .In the case of real powders having dispersion of particle sizes, valid relations are logpSSA¨x V 3 q " D¨logpx A q (5a) logpSSAq " p2 ´Dq¨logpsq.
Fractal dimension of mono-dispersion can be determined using the relation logpSSAq " pD ´3q¨logpxq (5c) or through the relation presented in Equation (5b).In this sense, the values and uncertainties of the D and D R fractal dimensions, presented in Tables 1 and 2 should be revised according to Equation (5a).The parameters x A and x V can be most simply computed from experimental distribution (see Appendix C), which is determined based on the particle size measurement using a laser analyzer.Vandamme et al. deal with the theoretical limits of such an approach by simulating single-layer molecular coverage of the hypothetical nano-, micro-and millimetric irregularities on the material surface [23].

Uncertainty Computation
We usually need to express the results in the form of (SSA ˘uSSA ) m 2 /kg.The practicality of the main presented results (Equation (3a,b)) is significantly dependent on the u SSA = [Σ(u qi ¨BSSA/Bq i ) 2 ] 0.5 uncertainty, where q i is the q-th quantity.The most significant contribution to u SSA , which is the total uncertainty, probably really induces uncertainty of the u D surface fractal dimension.The u D should be determined as exactly as possible.

Incorrect Use of Fractal Theory for the SSA Evaluation
In several papers, the fractal theory is incorrectly used for the SSA evaluation.Authors usually ignore the significance of the s scale parameter, which is one of the most important parameters within the fractal theory.For example, in [26] an equation is presented for geometric SSA in the form of aρ ´1x (D ´3) , where a is the shape coefficient.The s parameter is missing and if D is not equal to 2, SSA does not have the m 2 ¨kg ´1 unit.Similar incorrect equations were previously presented, for which see [27].Working with fractal theory, the authors again ignored the s scale parameter, and presented an incorrect equation SSA = kd ave (D ´3) for spheric monodispersion, where a is the shape coefficient and d ave is the average size of particles.

Transformation of the SSA Value after the BET Measurement for a New Adsorbate
The SSA BET acquired through BET measurement can be determined using several types of adsorbate molecules (N 2 , Kr, or Ar and others).If use of powder for interaction with another adsorbate (for example water) is desirable after the BET measurement, the new SSA 2 can be estimated by the general equation SSA 2 = SSA BET + ∆SSA = SSA BET + ∆s¨dSSA BET /ds BET and ∆s = (s 2 ´sBET ), where s 2 is the size of the molecule of the new adsorbate and s BET the size of the molecule used in the BET measurement.Now, the SSA BET is considered as an experimental value, but derivation is applied to Equation (3a), SSA BET = 6π (D/2 ´1) ρ ´1x A D x V ´3s BET (2 ´D) .The derived surface area related to the new adsorbate is: SSA 2 " SSA BET ¨r1 `p2 ´Dq¨ps 2 ´sBET q{s BET s pm 2 {kgq.
The s values are constants and represent the cross-sectional diameters of adsorbate molecules and are not dependent on the type of adsorbent.The tabulated values of a b constant (m 3 ¨mol ´1) from the van der Waals equation should be used for their estimations (see Table 3).The s effective diameter equals (b/N A ) 1/3 , where N A is Avogadro´s number.The standard uncertainty of such a transformation should be estimated from u BET and uncertainties of D, s BET and s 2 .The validity of Equation 6 should be tested in BET measurements, but is probably restricted by variation of fractal dimension, as subsequently presented.
Table 3. Estimations of the effective cross-sectional diameters s = (b/N A ) 1/3 of selected adsorbate molecules according to the tabulated b values [28] contained in van der Waals's equation.The standard uncertainty of s is estimated from u b = 10 ´8 m 3 ¨mol ´1 value.

Discussion on Variability of Fractal Dimension
The existence of different fractal dimension D for various adsorbates (or dissolvents, on the same mineral powder) is an empirical finding and does not seem to have any theoretical substantiation.The fractal dimension is likely to be an invariant surface constant (according to fractal theory), independent on the size of the adsorbate molecule.On the other hand, the existence of the abovementioned phenomenon is strongly supported by experiments (see Table 1).Taking into account the two different surface processes, adsorption and dissolution, the explanation could be based on a consideration of the time-dependent creation of the molecular layer on the powder surface connected with the different intensity of molecular diffusion into the pores as well as on the change of surface topography during the dissolution [29][30][31].Other surface interaction processes like precipitation, crystal growth, and corrosion can be analyzed, while their description is probably very similar [30,32].
In the case of adsorption/sorption processes that are based on van der Waals forces on the interface, the connection between true fractal dimension D and the reaction fractal dimension D R could be most simply estimated via an asymptotic function: where D = 2 + w, w " x0, 1 q and k > 0 s ´1 are constants and t (s) is the time (for simulations see Figure 4).The k constant represents the intensity of adsorbate diffusion to pores.The boundary conditions of the presented equation are D R = 2 at the time t = 0 s and the opposite condition is lim tÑ8 D R " D.More complicated derivations for this process could be made from advanced models of penetration of liquid to fractal porous media [31].
Minerals 2016, 6, 44 9 of 14 In the case of adsorption/sorption processes that are based on van der Waals forces on the interface, the connection between true fractal dimension D and the reaction fractal dimension DR could be most simply estimated via an asymptotic function: where D = 2 + w, = 0,1) w and k > 0 s −1 are constants and t (s) is the time (for simulations see  In the case of dissolution processes that are based on surface chemical interactions reducing the amount of solid material, the variability of fractal dimension probably depends on time, too.This seems to be a more complicated issue than adsorption, which poses many specific problems [33].The reaction surface area A is one of the parameters in dissolution rate r, which is presented in the form of r = kAλ•exp[−E/(RT)] in unit mol/(m 2 •s), where k and λ are constants, E is the specific activation energy, and RT is specific heat [30].It is apparent that the SSA has to change during the dissolution and the dissolution rate changes during the process according to the change of fractal dimension.For the development of reaction fractal dimension, a simple function that could be valid for an ideal dissolution process can be estimated as follows: where k > 0 s −1 is a constant and 2 + w0•e −ct = D is the true surface fractal dimension, c > 0 s −1 represents the intensity at which smoothness is achieved, = 0 0,1) w is a constant related to initial fractal dimension.This relation is deduced from the condition that at the beginning of interaction, the process is similar to adsorption and fractal dimension DR = 2, because the adsorbate molecules start to diffuse to pores and inner irregularities at that moment.Simultaneously, the dissolution is active on the external cover of particles and the fractality (or roughness) is reduced.Adding these two processes results in time-dependence, as presented in Figure 5.In reality, however, the fractality (roughness) can increase with time in some dissolution processes, making this idealized model invalid provided that any inhomogeneities and non-reactive surface points appear on the surface [30,33,34].In the case of dissolution processes that are based on surface chemical interactions reducing the amount of solid material, the variability of fractal dimension probably depends on time, too.This seems to be a more complicated issue than adsorption, which poses many specific problems [33].The reaction surface area A is one of the parameters in dissolution rate r, which is presented in the form of r = kAλ¨exp[´E/(RT)] in unit mol/(m 2 ¨s), where k and λ are constants, E is the specific activation energy, and RT is specific heat [30].It is apparent that the SSA has to change during the dissolution and the dissolution rate changes during the process according to the change of fractal dimension.For the development of reaction fractal dimension, a simple function that could be valid for an ideal dissolution process can be estimated as follows: D R " 2 `wp1 ´e-kt q, w = w 0 ¨e-ct , where k > 0 s ´1 is a constant and 2 + w 0 ¨e´ct = D is the true surface fractal dimension, c > 0 s

´1
represents the intensity at which smoothness is achieved, w 0 " x0, 1 q is a constant related to initial fractal dimension.This relation is deduced from the condition that at the beginning of interaction, the process is similar to adsorption and fractal dimension D R = 2, because the adsorbate molecules start to diffuse to pores and inner irregularities at that moment.Simultaneously, the dissolution is active on the external cover of particles and the fractality (or roughness) is reduced.Adding these two processes results in time-dependence, as presented in Figure 5.In reality, however, the fractality (roughness) can increase with time in some dissolution processes, making this idealized model invalid provided that any inhomogeneities and non-reactive surface points appear on the surface [30,33,34].The reaction fractal dimension DR appears to be a time-dependent quantity during adsorption or dissolution.From this point of view, it is more practical to write the reaction fractal dimension in the form of DR,t, where t (s) is the measurement time.For example, DR,6h denotes the value of the reaction fractal dimension after six hours of adsorption/dissolution.A more precise designation would be DR,He,6h with the specification of a He-like adsorbate/dissolvent.A single value of SSA for a specific powder does not exist, and surface area quantity must be related to the adsorbate size and time.This approach could explain the paradox of a different cross-sectional area of the same gas on a different material, as presented in many papers e.g., [35], and perhaps also the paradox D < 2 in Tables 1 and 2.
Thus, we have two basic equations.The first one is the equation for the SSA, the idealized Equation (3a), which is valid only for long reaction times and is appropriate for adsorption or sorption.The equation can be rewritten to find a more practical relation for general time-dependent surface interaction processes.Consequently, reactive specific surface area can be expressed as follows: where X is the designation of a liquid or gas substance (H2O, N2, He, i.e., adsorbate, dissolvent), t (s) is the reaction time and s (m) is the size of adsorbate or dissolvent.Therefore, whereas the SSA does not depend on time, the RSSA does.The Equation ( 9) is appropriate for a description of dissolution processes.The SSA seems to be a constant quantity for long-standing adsorption processes, but not for dissolution processes, because there the true fractal surface dimension D changes with time.The dissolution rate expressed as mass/time is proportional to the RSSAX,t by the relation but the total amount ∆m (kg) of solute is and depends on the mean of RSSAX,t, where ∆t = t2 − t1 is the dissolution time interval.

Conclusions
It is possible to determine the SSA of the powder particles using fractal theory by means of Equation (3a), or in the case of time-dependent surface processes by Equation ( 9) via the RSSA.For the exact evaluation of the SSA or RSSA for a set of the same type of samples, first the reaction fractal dimension of surface DR should be determined using dependence log(RSSAX,t•xV  The reaction fractal dimension D R appears to be a time-dependent quantity during adsorption or dissolution.From this point of view, it is more practical to write the reaction fractal dimension in the form of D R,t , where t (s) is the measurement time.For example, D R,6h denotes the value of the reaction fractal dimension after six hours of adsorption/dissolution.A more precise designation would be D R,He,6h with the specification of a He-like adsorbate/dissolvent.A single value of SSA for a specific powder does not exist, and surface area quantity must be related to the adsorbate size and time.This approach could explain the paradox of a different cross-sectional area of the same gas on a different material, as presented in many papers e.g., [35], and perhaps also the paradox D < 2 in Tables 1 and 2.
Thus, we have two basic equations.The first one is the equation for the SSA, the idealized Equation (3a), which is valid only for long reaction times and is appropriate for adsorption or sorption.The equation can be rewritten to find a more practical relation for general time-dependent surface interaction processes.Consequently, reactive specific surface area can be expressed as follows: RSSA X, t " 6π p0.5D R,t ´1q x D A ¨sp2 ´DR, t q ρ ¨x3 V pm 2 {kgq (9 where X is the designation of a liquid or gas substance (H 2 O, N 2 , He, i.e., adsorbate, dissolvent), t (s) is the reaction time and s (m) is the size of adsorbate or dissolvent.Therefore, whereas the SSA does not depend on time, the RSSA does.The Equation ( 9) is appropriate for a description of dissolution processes.The SSA seems to be a constant quantity for long-standing adsorption processes, but not for dissolution processes, because there the true fractal surface dimension D changes with time.
The dissolution rate expressed as mass/time is proportional to the RSSA X,t by the relation dm dt " RSSA X,t (10) but the total amount ∆m (kg) of solute is m " RSSA X, t " 1 ∆t and depends on the mean of RSSA X,t , where ∆t = t 2 ´t1 is the dissolution time interval.

Conclusions
It is possible to determine the SSA of the powder particles using fractal theory by means of Equation (3a), or in the case of time-dependent surface processes by Equation ( 9) via the RSSA.For the exact evaluation of the SSA or RSSA for a set of the same type of samples, first the reaction fractal dimension of surface D R should be determined using dependence log(RSSA X,t ¨xV 3 ) ~DR,t ¨log(x A ) or log(RSSA X,t ) ~(2 ´DR,t )¨log(s), by several BET or dissolution measurements.The value of the SSA depends on the size of the interacting molecule.The size of this molecule is equal to s scale, a significant parameter within fractal geometry.The value of the reaction fractal dimension D R seems to be a function of the time and the true fractal dimension D.
A new equation SSA X = SSA BET ¨[1 + (2 ´D)¨(s X ´sBET )/s BET ], where s BET and s X are effective cross-sectional diameters for the BET and for new adsorbate molecules, was derived.After the BET measurement, this equation can be used for estimation of the SSA of the same powder potentially interacting with a new adsorbate.

Figure 1 .
Figure 1.Examples of powder particles with high SSA: fractal-like topography of montmorillonite (a) with SSA ≈ 1000 m 2 •g −1 (nanometric pores) and activate black coal (b) with surface area around 1100 m 2 •g −1 and pore size of approximately 5 μm (maximum)-its surface seems to be non-homogenous, i.e., non-fractal.Scale bars 0.1 mm.

Figure 1 .
Figure 1.Examples of powder particles with high SSA: fractal-like topography of montmorillonite (a) with SSA « 1000 m 2 ¨g´1 (nanometric pores) and activate black coal (b) with surface area around 1100 m 2 ¨g´1 and pore size of approximately 5 µm (maximum)-its surface seems to be non-homogenous, i.e., non-fractal.Scale bars 0.1 mm.

Figure 1 .
Figure 1.Examples of powder particles with high SSA: fractal-like topography of montmorillonite (a) with SSA ≈ 1000 m 2 •g −1 (nanometric pores) and activate black coal (b) with surface area around 1100 m 2 •g −1 and pore size of approximately 5 μm (maximum)-its surface seems to be non-homogenous, i.e., non-fractal.Scale bars 0.1 mm.

Figure 2 .
Figure 2. Relatively smooth surface topography of olivine, SSA « 1 m 2 ¨g´1 (a) and bio-sample of rapeseed oil having bio-topography (b)-where the surface area was not measured.Scale bars: (a) 0.1 mm, (b) 1 mm.

Figure 3 .
Figure 3. Linear approximation of particle size distribution within a narrow interval of log-normal particle size distribution.

Figure 3 .
Figure 3. Linear approximation of particle size distribution within a narrow interval of log-normal particle size distribution.

Figure 4 )
Figure 4).The k constant represents the intensity of adsorbate diffusion to pores.The boundary conditions of the presented equation are DR = 2 at the time t = 0 s and the opposite condition is→∞

Figure 4 .
Figure 4. Simulation of hypothetic time-dependence of DR on the time in the case of adsorption processes-influence of diffusion of adsorbate on fractal surface topography.

Figure 4 .
Figure 4. Simulation of hypothetic time-dependence of D R on the time in the case of adsorption processes-influence of diffusion of adsorbate on fractal surface topography.

Figure 5 .
Figure 5. Simulation of hypothetic time-dependence of DR on the time in the case of specific dissolution process-influence of diffusion and "dissolution of fractality." 3 ) ~ DR,t•log(xA) or log(RSSAX,t) ~ (2 − DR,t)•log(s), by several BET or dissolution measurements.The value of the SSA

Figure 5 .
Figure 5. Simulation of hypothetic time-dependence of D R on the time in the case of specific dissolution process-influence of diffusion and "dissolution of fractality."

Table 1 . Surface fractal dimensions and their standard deviations of natural powders in a shortened table taken from [7]. The D R is the reaction fractal dimension and D is the true fractal dimension. Powder Material Process for D R Determination Particle Size Range (µm) D R D a
a determined from BET or dissolution methods using small adsorbate molecules.

Table 2 .
[26]uation of fractal dimensions of natural mineral powders-table transferred from[26].The values of the fractal dimension D were computed on the basis of the above derived relation D = m + 3, see Equation (5c).