COMPATIBILITY QUANTIFICATION OF BINARY ELASTOMER-FILLER BLENDS
20230391984 · 2023-12-07
Inventors
- Yan Jin (Cincinnati, OH, US)
- Gregory Beaucage (Cincinnati, OH, US)
- Karsten Vogtt (Cincinnati, OH, US)
- Hanqiu Jiang (Cincinnati, OH, US)
- Vikram K. Kuppa (Cincinnati, OH, US)
- Hyeonjae Kim (Copley, OH, US)
- Jan IIavsky (Argonne, IL, US)
- Mindaugas RACKAITIS (Hudson, OH, US)
Cpc classification
G01N15/08
PHYSICS
International classification
Abstract
Compatibility in polymer compounds is determined by the kinetics of mixing and chemical affinity. Compounds like reinforcing filler/elastomer blends display some similarity to colloidal solutions in that the filler particles are close to randomly dispersed through processing. Applying a pseudo-thermodynamic approach takes advantage of this analogy between the kinetics of mixing for polymer compounds and true thermally driven dispersion for colloids. The results represent a new approach to understanding and predicting compatibility in polymer compounds based on a pseudo-thermodynamic approach.
Claims
1. A method of preparing a blended mixture, the method comprising: mixing an elastomer and a filler to form a test blended mixture; measuring a second virial coefficient, A.sub.2, of the test blended mixture, wherein A.sub.2 is measured by the equation,
2. The method of claim 1, wherein the filler of the tested blended mixture is a reinforcing filler.
3. The method of claim 1, wherein the test blended mixture comprises the filler in an amount from 1 to 30 weight percent.
4. The method of claim 1, wherein the filler of the tested blended mixture is selected from the group consisting of carbon black, silica, and a combination thereof
5. The method of claim 1, wherein the filler of the tested blended mixture is an aggregated filler.
6. The method of claim 1, wherein the filler of the tested blended mixture is a nanomaterial.
7. The method of claim 1, wherein the elastomer of the tested blended mixture is a diene elastomer.
8. The method of claim 1, wherein the final blended mixture is incorporated in a tire component.
9. A method of preparing a blended mixture, the method comprising: mixing an elastomer and a filler to form a blended mixture; measuring a second virial coefficient, A.sub.2, of the blended mixture, wherein A.sub.2 is measured by the equation,
10. The method of claim 9, wherein the filler of the blended mixture is selected from the group consisting of carbon black, silica, and a combination thereof.
11. The method of claim 9, wherein the blended mixture comprises the filler in an amount from 1 to 30 weight percent.
12. The method of claim 9, wherein the filler of the blended mixture is a nanomaterial.
13. The method of claim 9, wherein the filler of the blended mixture is an aggregated filler.
14. The method of claim 9, wherein the elastomer of the blended mixture is a diene elastomer.
15. A method of preparing a blended mixture, the method comprising: selecting an elastomer and filler from a reference elastomer/filler combination having a reference second virial coefficient, A.sub.2, greater than 5 cm.sup.3/g.sup.2; mixing the elastomer and the filler to form a blended mixture; measuring a second virial coefficient, A.sub.2, of the blended mixture, wherein A.sub.2 is measured by the equation,
16. The method of claim 15, wherein the filler of the blended mixture is selected from the group consisting of carbon black, silica, and a combination thereof.
17. The method of claim 15, wherein the blended mixture comprises the filler in an amount from 1 to 30 weight percent.
18. The method of claim 15, wherein the filler of the blended mixture is a nanomaterial.
19. The method of claim 15, wherein the filler of the blended mixture is an aggregated filler.
20. The method of claim 15, wherein the elastomer of the blended mixture is a diene elastomer.
Description
DRAWINGS
[0007]
[0008]
[0009]
[0010]
[0011]
[0012]
[0013]
[0014]
[0015]
[0016]
[0017]
[0018]
DETAILED DESCRIPTION
[0019] Silica is the traditional reinforcing filler for polydimethylsiloxane elastomers due to compatibility in chemical structure. Silica was introduced as a reinforcing filler for diene elastomers for tires in the 1990's and showed a lower rolling resistance and higher fuel efficiency compared to carbon black reinforcing filler. However, silica is very different compared to CB due to its strong polar and hydrophilic surface. A certain quantity of moisture can be adsorbed on silica surface making it difficult to remove. Inter-particle interaction of silica due to hydrogen bonding needs to be considered since it reduces the compatibility of silica and rubber.
[0020] The compatibility of colloidal solutions such as mixtures of miscible polymers, solutions of low molecular weight organics and inorganics, and biomolecules is often quantified using a virial expansion to describe the concentration dependence of the osmotic pressure. This approach assumes that molecular and nanoscale motion is governed by thermally driven diffusion with a molecular energy of kT. Elastomer/reinforcing filler compounds have not been considered colloidal mixtures since the materials are highly viscous or solid networks, so thermally driven motion of reinforcing filler aggregates is not expected in an elastomer composite. However, the second virial expansion approach can be used in viscous systems such as in polymer melts where Flory-Huggins theory is applied, a form of the virial expansion for macromolecules. The virial coefficient is also used in native state protein solutions where rigid protein nanostructures are considered. The quantification of compatibility using a pseudo-virial approach may be of value in reinforced elastomer systems and potentially in a number of other similar systems where an analogy can be considered between randomly placed filler aggregates dispersed in the milling process and randomly placed molecules dispersed by thermal motion. In this analogy, it is assumed that the mixture has reached a terminal state of dispersion, or at least a relative state of dispersion when comparing different processing conditions and materials. In this pseudo-thermodynamic approach, processing time, accumulated strain, matrix viscosity all can have an equivalence to temperature in a true thermodynamic system.
[0021] In colloidal mixtures the miscibility of a binary system can be considered in terms of the second virial coefficient. For instance, protein precipitation from solution in the process of protein crystallization has been predicted using the second virial coefficient. The virial expansion is used to describe deviations from ideal osmotic pressure conditions, π=ϕ.sub.numRT, to a power series expansion,
where ϕ is the number density of particles or molecules. B.sub.2 indicates the enhancement of osmotic pressure due to binary interactions of a colloid in a matrix in terms of the thermal energy, kT. B.sub.2 is related to an integral of the interaction energy between particles. Such a binary interaction energy can be used as an input to computer simulations of polymer/filler mixing. B.sub.2 could also be used to quantify filler/polymer interactions in the prediction of mechanical and dynamical mechanical performance. If trends in B.sub.2 can be determined as a function of chemical composition of an elastomer matrix or surface-active additives, then these values could be used to predict the performance of new compositions for enhanced performance. In this study a binary compound could be considered a polymer and miscible additives such as oil/plasticizer and processing aids, making up the matrix phase, mixed with an immiscible additive such as a reinforcing filler.
[0022] A parallel definition of the second virial coefficient using the mass density concentration, ϕ.sub.mass, rather than the number density concentration, ϕ.sub.num, is possible,
where M is the molecular weight of a particle. ϕ.sub.mass=Mϕ.sub.num/Na, where N.sub.a is Avogadro's number, and A.sub.2=B.sub.2N.sub.a/M.sup.2, following Bonneté et al. B.sub.2 is related to the binary interaction potential for particles, U(r), by,
B.sub.2 has units of cm.sup.3/particle, and A.sub.2 has units of mole cm.sup.3/g.sup.2. If a hard core potential is assumed, then the hard core radius, σ.sub.HC, is given by,
σ.sub.HC should be a size scale on the order of the size of an aggregate.
[0023] The second virial coefficient can be used to predict stability and compatibility of elastomer/filler systems, especially when coupled with DPD (dissipative particle dynamics) simulations. A typical repulsive potential for a DPD system is of the form,
where σ is the diameter of the aggregates, here the end to end distance R.sub.eted is used, and A is a dimensionless binary short range repulsive amplitude that can be defined for particle interactions. Equation (5) can be used in equation (3) and numerically solved for “A” using B.sub.2. “A” could be used to simulate the behavior of a filler in an elastomer matrix to determine the segregation of filler in a polymer blend.
[0024] Scattering data from carbon black reinforced elastomer composites was fit using the unified scattering function with four structural levels. First a unified function for the mass fractal aggregates was used with three structural levels, equation 6,
where level 0 pertains to a graphitic layer, level 1 to the primary particles and level 2 the aggregate structure. Level 0 does not exist for silica. The subscript “I.sub.0” in equation (6) refers to dilute conditions or isolated fractal aggregates in the absence of screening. For each structural level the unified function uses four parameters to describe a Guinier and a power-law decay regime. For the smallest scale a graphitic layer, level 0, can be observed with a power-law decay of −2 slope for 2d graphitic layers, which can have a lateral dimension of about 15 Å. Level 1 pertains to the primary particles of the aggregates, which can have a radius of gyration of about 170 Å. The primary particles form aggregates, level 2, can have a mass fractal dimension of about 2.1, and the aggregates can have a radius of gyration of about 2,200 Å.
[0025] From the scattering fitting parameters several calculated parameters can be obtained. For the primary particles, the Sauter mean diameter, d.sub.p, and a polydispersity index, PDI, can be obtained and from these values the log-normal geometric standard deviation, σ.sub.g, and the geometric mean value of size, μ can be determined. For the fractal portion of the scattering curve the minimum dimension, d.sub.min, connectivity dimension, c, mole fraction branching, ϕ.sub.Br, degree of aggregation, DOA, aggregate polydispersity, C.sub.p, and average branch length, z.sub.Br, can be obtained. The end to end distance, used for σ in equation 5, can be calculated from,
R.sub.eted˜d.sub.pP.sup.1/d.sup.
[0026] The interaction between filler and elastomer can be modeled using the random phase approximation, RPA,
where ϕ.sub.w is the weight fraction, and ν is related to the second virial coefficient by,
[0027]
[0028] In addition to the mass fractal structure and screening (equations (6) and (8)),
where B.sub.3 is the power-law prefactor for the lowest-q agglomerate structure. The agglomerate scattering is observed to be independent of the screening effect of equation 8.
EXAMPLES
[0029] Samples were milled in a 50 g Brabender mixer at 130° C. with a rotor speed of 60 rpm for 6 min until the torque versus time curve had dropped from a peak value and reached a plateau. Table 1 shows the 15 sample types for three elastomers filled with five fillers. Each type was studied with four concentrations of 1, 5.6, 15.1 and 29.9 wt. %. PB2 was provided by Bridgestone Americas, while newPB and PI were obtained from Sigma Aldrich. CB110 and CB330 were from Continental Carbon and CRX2002 from Cabot. SiO.sub.2190 was from PPG and SiO.sub.2130 was from Evonik. Measurements were performed at the Advanced Photon Source, Argonne National Laboratory using the Ultra-Small-Angle X-ray Scattering (USAXS) facility located at the 9 ID beam line, station C.
TABLE-US-00001 TABLE 1 USAXS sample types (each with four concentrations 1, 5.6, 15.1, and 29.9 wt. %) SiO.sub.2 130 SiO.sub.2 190 CB 110 CB 330 CRX 2002 New NPB-Si130 NPB-Si190 NPB- NPB- NPB-CRX PB CB110 CB330 PI PI-Si130 PI-Si190 PI-CB110 PI-CB330 PI-CRX PB2 PB2-Si130 PB2-Si190 PB2- PB2- PB2-CRX CB110 CB330
[0030]
[0031] The scattering pattern at 1 wt. % reflects the structure of CB aggregates. The carbon black includes four levels of structure. Level 0 pertains to the graphitic structure observed above q=0.02 Å.sup.−1. The graphitic level displays a power-law −2 for the 2d structure. From about 0.008 to 0.02 Å.sup.−1 the primary particle structure is observed, level 1. This level displays smooth sharp surfaces and a power-law decay of −4 slope following Porod's law. From 0.0008 to 0.008 Å.sup.−1 the fractal aggregate, level 2, is observed with a power-law decay reflecting −d.sub.f for the aggregate. At the lowest q, steep power-law decay is observed reflects surface scattering from a large-scale structure of agglomerates of CB aggregates or from defects in the samples. The power-law decay varies between mass fractal and domain structures. Only scattering from the dispersed aggregates component of the structure is considered for the determination of A.sub.2. Screening in equation (8) only effects levels 0 to 2 since the large-scale super-structure, level 3, is under dilute conditions. At higher concentrations fits to only levels 1 to 2 are considered since the graphitic structure of CB does not change.
[0032]
TABLE-US-00002 TABLE 2 Structural fit parameters for the dilute 1% carbon black and silica samples. G.sub.1, cm.sup.−1 R.sub.g1, Å B.sub.1, cm.sup.−1 Å.sup.−P1 P.sub.1 G.sub.2, cm.sup.−1 R.sub.g2, Å B.sub.2, cm.sup.−1Å.sup.−P2 P.sub.2 NPB-Si130_1 210000 256 0.0015 4 13000000 1180 0.258 2.6 PI-Si130_1 260000 280 0.00117 4 22200000 1180 0.628 2.6 PB2-Si130_1 253000 257 0.0019 4 17000000 1180 0.521 2.58 NPB-Si190_1 18400 86.1 0.00114 4 13200000 1300 0.251 2.52 PI-Si190_1 14400 86.7 0.000732 4 13200000 1200 0.14 2.68 PB2-Si190_1 17800 86 0.00202 4 8270000 1060 0.17 2.61 NPB-CB110_1 302000 313 0.00046 4 6650000 1513 1.31 2.27 PI-CB110_1 235000 293 0.000425 4 4500000 1420 0.631 2.35 PB2-CB110_1 275000 298 0.000456 4 4050000 1380 0.784 2.32 NPB-CB330_1 17193 163 0.000282 4 12500000 1750 3.56 2.15 PI-CB330_1 25600 190 0.000128 4 15800000 2160 13.7 1.9 PB2-CB330_1 17193 163 0.000282 4 12500000 1750 3.56 2.15 NPB-CRX 1 18200 179 0.00048 4 10200000 1650 2.06 2.2 PI-CRX_1 17000 179 0.0005 4 20500000 2880 8.04 2 PB2-CRX 1 20900 179 0.0001 4 21000000 2880 7.2 2
TABLE-US-00003 TABLE 3 Calculated structural parameters for the dilute filler samples from the first and second structural levels (primary particles and aggregates). R.sub.eted, d.sub.p, z d.sub.min c d.sub.f C.sub.p p nm nm PDI σ.sub.g μ, nm NPB-Si130_1 61.9 1.40 1.86 2.60 1.53 9.2 92.9 19.0 19.4 1.64 133 PI-Si130_1 85.4 1.85 1.41 2.60 1.65 23.7 118 21.3 17.1 1.63 155 PB2-Si130_1 67.2 1.80 1.43 2.58 1.60 18.8 96.6 18.9 20.0 1.65 131 NPB-Si190_1 717 1.28 1.96 2.52 1.15 28.2 221 16.3 2.11 1.28 149 PI-Si190_1 917 1.41 1.90 2.68 1.50 36.2 236 18.5 1.77 1.24 164 PB2-Si190_1 465 1.35 1.93 2.61 1.30 24.0 119 11.3 3.84 1.40 107 NPB-CB110_1 22.0 1.96 1.16 2.27 1.80 14.4 110 28.3 9.00 1.53 245 PI-CB110_1 19.2 1.98 1.19 2.35 1.98 12.1 96.0 27.3 8.27 1.52 241 PB2-CB110_1 14.7 1.99 1.16 2.32 1.98 10.0 89.2 28.0 8.07 1.52 248 NPB-CB330_1 324 1.83 1.21 2.20 1.60 123 253 18.3 8.37 1.52 162 PI-CB330_1 617 1.18 1.61 1.90 1.50 54.1 715 24.3 4.02 1.41 231 PB2-CB330_1 727 1.69 1.27 2.15 1.60 178 343 16.0 7.16 1.50 145 NPB-CRX 1 560 1.53 1.43 2.20 1.60 81.5 243 13.7 16.6 1.62 101 PI-CRX 1 1210 1.86 1.08 2.00 1.75 736 466 13.4 18.6 1.64 94.8 PB2-CRX 1 1010 1.77 1.13 2.00 1.60 456 852 26.8 3.03 1.35 253
[0033]
[0034] To obtain values for ν
[0035] The pseudo-second order virial coefficient, A.sub.2, in binary milled compounds is obtained from the rate of dampening of the mid-q data in
TABLE-US-00004 TABLE 4 Values of v and A.sub.2 from equations 8 and 9. B.sub.2 calculated from A.sub.2, σ.sub.HC from equation 4, and “A” from equation 3 and 5 using σ = < R.sub.eted> from Table 3. (SC = Structural Changes) A.sub.2, B.sub.2, v, 10.sup.−9 mole 10.sup.−14 cm.sup.3/ σ.sub.HC, A 10.sup.−6 cm cm.sup.3/g.sup.2 Aggregate nm (Eqn. 5) NPB-Si130 1.7 ± 0.3 6 ± 1 0.09 75.5 38.9 PI-Si130 SC PB2-Si130 2.4 ± 0.7 8 ± 3 0.14 87.8 164 NPB-Si190 SC PI-Si190 1.9 ± 0.2 9.6 ± 0.9 25.8 503 — PB2-Si190 SC NPB-CB110 3 ± 1 8 ± 3 0.13 85.2 26.2 PI-CB110 3 ± 1 15 ± 7 0.13 86.8 118 PB2-CB110 3.4 ± 0.4 11 ± 1 0.07 70.4 26.9 NPB-CB330 1 ± 1 4 ± 3 1.03 172 10.7 PI-CB330 0.9 ± 0.4 4 ± 2 20.2 464 8.46 PB2-CB330 2.2 ± 0.5 7 ± 2 3.79 265 23.7 NPB-CRX 1.09 ± 0.08 3.5 ± 0.3 0.44 129 3.71 PI-CRX 1.5 ± 0.6 8 ± 3 3.82 266 4.86 PB2-CRX 2 ± 1 6 ± 4 135 873 —
[0036] Samples are marked as “SC” in Table 4 and 5 indicating an aggregate structural change at higher concentrations.
[0037] The second virial coefficient is an indication of miscibility with larger values indicating greater affinity in a binary mixture. It is observed that mixing of finer particulate fillers is more difficult than coarser fillers.
[0038] Of the three types of polymers PI, triangles in
[0039]
[0040] The concentration series shown in
[0041] The percolation concentration of carbon black filled samples is usually measured by bulk conductivity, for example, it can be observed at concentrations in the range of 25 to 30 weight percent. Conductivity measurement quantifies the first point where a conductive pathway exists across millimeters of sample. The scattering overlap concentration reflects local percolation of the structure. Micrographs of the filled samples in Figures show such local percolation.
[0042] The percolation concentration follows the fractal scaling law so that c*˜M/V=R.sub.g2.sup.df/(R.sub.g2.sup.3)˜R.sub.g2.sup.df−3.
TABLE-US-00005 TABLE 5 Percolation concentrations of CB and silica in different polymers. α value is power law parameter between mesh size and filler concentration. (SC = Structural Changes) vol. % at wt. % at percolation percolation α (log(mesh using G2 using G2 size)~α*log(c)) NPB-Si130 4.4 10.14 −0.67 PI-Si130 SC SC SC PB2-Si130 2.4 5.73 −0.71 NPB-Si190 SC SC SC PI-Si190 4.0 9.25 −0.49 PB2-Si190 SC SC SC NPB-CB110 5.8 11.43 −0.73 PI-CB110 7.6 14.77 −0.49 PB2-CB110 7.3 14.30 −0.69 NPB-CB330 4.5 9.13 −0.62 PI-CB330 7.4 14.41 −0.48 PB2-CB330 3.6 7.31 0.69 NPB-CRX 9.0 17.26 −0.54 PI-CRX 3.3 6.67 −0.67 PB2-CRX 2.6 5.26 −0.71
[0043] For filled elastomers with filler loading above the overlap concentration (percolation threshold) the filler particles form a network with a mesh size that decreases with increasing concentration, as shown in the drawings in
[0044] Immiscible mixtures of nano to colloidal particles in polymers show some resemblance to colloidal solutions. While colloidal solutions have a random dispersion of particles driven by dynamic thermal equilibrium and are influenced by enthalpic interactions between particles, polymer mixtures display a random dispersion of particles driven by the mixing process and influenced by surface interactions between particles. The effectiveness of mixing will depend on particle size, accumulated strain, viscosity of the matrix polymer and the hydrodynamic properties of the nanoparticles being dispersed. A pseudo-thermodynamic approach to these systems can be used to quantify the compatibility of a given nanoparticle and polymer binary pair. This approach can be used to rate different polymer/nanoparticle pairs as to relative compatibility. Reinforced elastomer composites were examined using this new application of the second virial coefficient to describe compatibility of carbon black and silica with three different elastomers. It was found that this approach distinguishes compatibility for different elastomer/filler compounds. Ultra small-angle x-ray scattering was used to measure the scattering pattern at several concentrations of filler. Changes in scattering with concentration were described with a single second virial coefficient for each elastomer using a scattering function related to the random phase approximation. The approach can be applicable to a wide range of nano composite materials.
[0045] The pseudo-second virial coefficient, A.sub.2, was well behaved in the PB/PI and CB/SiO.sub.2 compounds that were studied. A close to linear dependence of A.sub.2 with primary particle size agrees well with the observation that it is more difficult to mix smaller particles. The interfacial contribution to this compatibility could be ascertained by the sign and value of the d.sub.p=0 intercept.
[0046] Values for the repulsive interaction potential amplitude, “A” were estimated for the samples from the A.sub.2 values and calculations of R.sub.eted. These values could be used in coarse grain computer simulations of filler segregation in these elastomers. The percolation threshold concentration and the mesh size for concentrations above overlap were determined. Both of these features are well behaved in the samples studied.
[0047] The present disclosure is a novel description of compatibility in polymer compounds that is useful in predicting compatibility in complex mixed systems, for example, systems based on processing history and tabulated values for A.sub.2. The approach is versatile and can be applied to pigment dispersions and many other polymer/nanoparticle compounds.