Open Access Article
Alexander Malaja,
Cathryn Leiesa,
Zachary Caprowa,
Venkata Rohit Punyapu
b,
Ehimen A. Odionc,
Rachel Getman
b,
Karen L. Liveseyd,
Suvra S. Laha*a and
O. Thompson Mefford
*ac
aDepartment of Materials Science and Engineering, Clemson University, Clemson, SC 29634, USA. E-mail: slaha@clemson.edu; mefford@clemson.edu
bWilliam G. Lowrie Department of Chemical and Biomolecular Engineering, The Ohio State University, Columbus, OH 43210, USA
cDepartment of Chemistry, Clemson University, Clemson, SC 29634, USA
dSchool of Information and Physical Sciences, University of Newcastle, University Drive, Callaghan, 2308, NSW, Australia
First published on 7th May 2026
It has been shown through density functional theory (DFT) calculations that the magnetocrystalline anisotropy (MAE) for iron-based spinel nanoparticles can be altered through the addition of varying amounts of transition metals into their spinel structures. In this work, seven monodisperse spherical nanoparticle series were synthesized with varying amounts of Fe, Mn, and Co to target specific effective anisotropy (Keff) values that were calculated using DFT, giving the formula: Fe3−x−yMnxCoyO4. The Keff values determined from DC magnetometry ranged from 46–128 kJ m−3, increasing upon the addition of Mn, and increasing upon the addition of Co, verifying the trend that the DFT simulations predicted. The Keff value determined from DC magnetometry was lower than that predicted by DFT for the spinel nanoparticles with high cobalt substitution, and comparable for the other samples. From the AC susceptibility data, the trend in the anisotropy strength amongst the series of seven particles matched that extracted from the DC magnetometry data. Through these findings, it is shown that Keff is tunable by altering cationic ratios in spinel nanoparticles.
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A sufficiently small nanoparticle (i.e., diameter less than 100 nm) will exhibit a single magnetic domain, which is usually considered to contain two stable orientations which are antiparallel to each other, along the so-called easy axis.3 The energy required to flip the nanoparticle's moment between the two orientations is proportional to the particle's magnetic volume (VC) and the effective magnetic anisotropy energy density (Keff), which includes anisotropy factors such as: magnetocrystalline anisotropy, shape anisotropy, and particle interaction anisotropy.4 It is important to note that this effective uniaxial anisotropy assumption is used as a simplification for modeling.5 Realistically, the intrinsic magnetocrystalline anisotropy of most spinel nanoparticles is cubic.6–8 Upon reaching a high enough thermal energy (kBT), where kB is the Boltzmann constant, the particles will continuously flip their magnetic moments between the two directions along the easy axis, yielding an average magnetic moment very close to zero.4 This phenomenon is known as superparamagnetism. The mean time between two flips along the easy axis is known as the Néel relaxation time, which stems from the Néel–Arrhenius formula and is given by
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Efforts have been made to tune the Néel relaxation time of nanoparticles by manipulating their core sizes, shapes, and elemental compositions.11 Manipulating the elemental composition includes doping spinel nanoparticles with one metallic species such as: zinc, cobalt, manganese, silver, and gold.11 Catalytic activity, and the performance of these magnetic nanoparticles is highly dependent on their composition, morphology, and dimensions.11 Specifically, tuning the Keff and Ms of superparamagnetic nanoparticles is highly sought after, as the optimal values for these properties will change depending on their application.
Recently, computational density functional theory (DFT) models were used by some of us to explore what effect cationic substitutions have on the Ms and anisotropy energy for various spinel compositions.12 Briefly, a ferrite model was used based on the calculated bulk unit cell of magnetite (Fe3O4). Eight repeats of the magnetite formula unit (Fe24O32) were used to allow for many different ion substitutions. Among these bi-cationic and tri-cationic substitutions, Ms, magnetocrystalline anisotropy energy, and crystal structure were simulated. The model is based on the spinel structure with the space group Fd
m, which has a cubic crystal symmetry. Keff was calculated as the energy density required to reorient the magnetic moment within a crystal from the “easy” axis to the “hard” axis. The [0,0,1], [1,0,0], and [0,1,0] crystallographic directions were evaluated this way, as the calculations for the [0,1,1], [1,0,1], [1,1,0] and [1,1,1] directions resulted in electronic energies that were significantly more positive, suggesting they were less reliable for large-scale DFT calculations. Of the [0,0,1], [1,0,0], and [0,1,0] directions, the direction that was calculated to have the lowest electronic energy was the easy axis, and the direction that was calculated to have the highest electronic energy was the hard axis. These hard and easy axes were subtracted from each other to give the magnetocrystalline anisotropy energy density (MAE). To calculate the Ms of the spinel nanoparticles, the total number of unpaired electronic in the unit cell is multiplied by the Bohr magneton (μB) and divided by the unit cell's volume. While these calculations are useful as a qualitative guidance, some of the limitations of DFT should be stated, such as the energy differences between cation configurations not being representative of the experimental distribution of Fe, Mn, and Co across the spinel structure.13 DFT also assumes idealized crystals that lack the structural heterogeneities that are found in real crystals and is also conducted at absolute zero, causing the theoretical calculations to deviate from experiment.14 Following this guidance, the optimal saturation magnetization and magnetocrystalline anisotropy energy density combination of values calculated in that work is plotted in Fig. 1 (solid line) based on the work of Carrey et al.,15 for a magnetic field strength of 20 kA m−1 and a frequency of 205 kHz. The black dots represent different stoichiometric compositions of Fe, Mn, and Co, and their corresponding Ms and MAE values, adapted from ref. 12.
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| Fig. 1 Optimal MAE and saturation magnetization combination of values (solid line) predicted at a magnetic field strength of 20 kA m−1 and a frequency of 205 kHz.15 The dots correspond to the Ms and MAE values of spinels with different stoichiometric compositions of Fe, Mn, and Co, calculated in ref. 12. | ||
Mono or bi-cationic nanoparticles have been shown to have limited tunability of Keff through influencing oxidation state, site occupancy, exchange pathways, and spin–orbit coupling.16 For example, Co substitution has been shown to enhance magnetocrystalline anisotropy through spin–orbit coupling but often reduces the overall Ms of the nanoparticle.17 Mn substitution often reduces magnetocrystalline anisotropy.18 Therefore, in bi-cationic nanoparticles, these changes in Keff, Ms, and relaxation dynamics are strongly dependent on one another, constraining the tunability of the nanoparticles.19 In contrast, multi-cationic species have been shown to provide broader control over Keff, coercivity, and Ms as the introduction of a third cation adds a new degree of freedom that mono or bi-cationic nanoparticles cannot access, allowing nanoparticles with highly precise magnetic states to be synthesized.20
Recently, MnxZn1−xFe2O4 (x = 0–1) spherical superparamagnetic particles were synthesized using a triethylene glycol mediated solvothermal method.21 At room temperature, these substitutions showed varying lower Ms values compared to magnetite, but reversed trends at 10 K.21 Zn0.5−xCaxMg0.5Fe2O4 (x = 0.1 and 0.2) nanoparticles have also been synthesized for the purposes of controlled heating in magnetic hyperthermia, as the magnetic moment and heating efficiency of the nanoparticles can be adjusted by altering the calcium-to-zinc ratios.22 The nanoparticles were experimentally determined to be biocompatible through analyzing cytotoxic effects on mouse muscle fibroblast and human breast cancer cell lines, showing a cell viability above 85% when hyperthermia treatment was not applied. Despite the potential for multi-cationic nanoparticles, experimental studies that correlate composition with Keff, relaxation dynamics, and SAR remain scarce.
This work introduces seven nanoparticle series with varying cationic compositions giving the formula Fe3−x−yMnxCoyO4, which were synthesized with targeted compositions based on the tertiary diagrams created from density functional theory (DFT) calculations.12 The five nanoparticle points at the bottom of the tertiary diagram were chosen due to their predicted MAE and Ms values aligning with the point closest to the optimal curve in Fig. 1, which would theoretically cause them to dissipate the highest amount of energy per AC field cycle at a magnetic field strength of 20 kA m−1 and a frequency of 205 kHz. As the points read from left to right, incremental increases in Fe substitutions and incremental decreases in Mn substitutions occur, which are intended to span a controlled range of cationic substitutions. The points in the middle and top right of the tertiary diagram were targeted due to their higher MAE (Keff) values upon a higher Co substitution, as shown in Fig. 2. The nanoparticles were synthesized using metal acetylacetonate precursors with a Mn oleate drip through a thermal decomposition route, based off of the extended Lamer drip synthesis method,23,24 in an attempt to create monodisperse, spherical nanoparticles with similar diameters throughout the various cationic compositions to minimize the contributions of particle volume and shape to the anisotropy energy density Keff. The nanoparticles’ diameters were determined using high-resolution transmission electron microscopy (HR-TEM) and ImageJ software, and were found to be monodisperse, and ranged from 8.4–10.6 nm in diameter throughout each series. DC and AC magnetometry revealed an increase in Keff upon increasing Mn content, and a high increase in Keff upon increasing Co content. AC and calorimetric SAR experiments at a magnetic field strength of 20 kA m−1 and a magnetic field frequency of approximately 200 kHz revealed poor heating of each multi-cationic series, except for the high anisotropy, high cobalt substituted spinel nanoparticles (MM-2), which displayed an AC SAR value of 83 W g−1 and a calorimetric SAR value of 26.9 W g−1. Section 2 outlines the synthesis methods guided by DFT, and the characterization methods. Results are presented in Section 3 including detailed analysis of the magnetometry data. Conclusions and outlook are presented in Section 4. This work guides future engineering of magnetic nanoparticles with tailored properties for applications like hyperthermia treatment.
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| Fig. 2 Tertiary diagrams depicting DFT12 targeted cationic compositions, the reagent weights in grams used in the synthesis and their corresponding magnetocrystalline anisotropy energies, and magnetic saturations. | ||
000 rpm for 3 minutes. Upon collecting some of the particles at the bottom of the tube, an oily layer remained at the top of the liquids. The dirty methanol was pipetted out, discarded, and fresh methanol was added again. The centrifuge tubes were shaken, sonicated, and centrifuged again. This process was repeated until the volume of the oily layer became minimal. The particles were then stored in hexane, parafilm wrapped, and placed in a refrigerator for storage.
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| Fig. 3 Tertiary diagrams depicting synthesized cationic compositions, their corresponding magnetocrystalline anisotropy energies and their magnetic saturations predicted by DFT.12 The compositions were verified through ICP-OES. | ||
000 Hz. The experiments were conducted at a 10 Oe AC excitation field under zero DC bias conditions.
by calculating the area of the resulting hysteresis loop, where A is the AC magnetic area, c is the nanoparticle elemental (cationic) weight concentration, and f is the AC magnetic field frequency.10 Magnetization units were normalized by total cationic masses obtained by ICP-OES.![]() | ||
| Fig. 4 HR-TEM images of each mixed-cationic series, with the mean diameters and standard deviations given in the table in nm. | ||
X-ray diffraction (XRD) data for the mixed-cationic nanoparticles have been included in the SI as shown in Fig. S1. Because the nanoparticle samples retained an oily layer after synthesis, the magnetic cores could not be separated completely, resulting in increased noise in the XRD spectra. Despite this, the spectra display evidence of peaks corresponding to the (311), (400), (511), and (440) planes, which are characteristic of the magnetite spinel ferrite structure (JCPDS card no. 85-1436). The oily layer also made energy-dispersive X-ray spectroscopy (EDS) impossible, as it was immediately carbonized upon contact with the electron beam, obscuring signals from the cations.
We also note that multiple oxidation states of manganese are possible and introduce complexity in determining the precise phase composition and cation distribution in the mixed-cationic nanoparticles. It is possible that a fraction of the reaction products formed magnetically dead, or weakly contributing phases that would not contribute to the magnetization response in the nanoparticles. Additional techniques, such as X-ray photoelectron spectroscopy (XPS) and Mössbauer spectroscopy are required to fully resolve the oxidation states of the cations in the nanoparticles and are a crucial direction for future work.
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Analysis of the DC blocking temperatures for the mixed-cationic nanoparticle series show a compositional dependence and are compared in Fig. 5C, since the blocking temperature scales with the DC anisotropy energy density according to eqn (3). The high cobalt samples, (MM-1 and MM-2), are shown to have the highest mean blocking temperatures, (134 and 204 K). Their experimentally determined DC Keff values (77 and 130 kJ m−3, green bars in Fig. 5C) are significantly lower than the DFT predicted values (247 and 340 kJ m−3, orange bars in Fig. 5C). MM-1 and MM-2 have the highest DC Keff values out of all the samples, with MM-2 being the highest, corroborating the trend that is predicted by the DFT modeling.
The DC Keff values for MM-3 to MM-7 are generally close to the predicted DFT values (Fig. 5C). MM-3, MM-4, and MM-7 are within 2–10% of their targeted values, showing high agreement. MM-5 is 42% lower than what was targeted. The results indicate that the low cobalt substituted spinel nanoparticles (MM-3 to MM-7), can be synthesized with predictable DC Keff values, apart from MM-6, due to its larger size distribution. The results also show that generally, as the iron content increases and the manganese content decreases (MM-3 to MM-7), the Keff values inferred from DC magnetometry generally decrease. In spinel ferrites, Keff is comprised of magnetocrystalline anisotropy, surface anisotropy, and dipolar interactions which are heavily influenced by the type and distribution of cations in the tetrahedral and octahedral sites.19 Increasing iron content while reducing manganese content shifts the multi-cationic nanoparticles to a more magnetite-like cation distribution, which is characterized by reduced lattice distortions and a lower single-ion anisotropy. It can also be seen that the predicted values for MM-3 to MM-5 increase slightly as manganese content decreases and then drop for MM-7, highlighting the sensitivity of the multi-cationic system to slight changes in composition and cation occupancy. As Co substitution is known to cause strong spin–orbit coupling, this increase in DC Keff for the nanoparticles with higher cobalt content is expected, but was not as high as predicted.28 It should be noted that in this mixed-cationic system, variations in cation occupancy between tetrahedral and octahedral sites, in addition to the multiple oxidation states of manganese, can lead to the formation of distinct magnetic sublattices with magnetically dead regions in the nanoparticles. These effects complicate the interpretation of the composition dependent shifts that were observed in the DC Keff values. Additionally, small uncertainties in nanoparticle diameter or size dispersion can lead to large variations in the calculated DC Keff values. DFT calculations also assume idealized, perfectly crystalline spinel lattices with fixed oxidation states and cation distributions, which will cause a discrepancy in Keff when compared to synthesized nanoparticles. These difficulties underscore the importance of refining nanoparticle synthesis, structural characterization, and mathematical modeling.
As shown in Fig. 6C, the Ms values tend to experimentally increase (1.8–3.7 × 105 A m−1, green bars) as manganese content decreases and as the iron content increases (MM-3 to MM-7). It has been shown that increasing iron content in single or bi-cationic spinel nanoparticles will increase Ms, which is in accordance with the experimental trend.30,31 The DFT predicted Ms values do not follow this trend. MM-2 was experimentally determined to have the highest Ms (4.4 × 105 A m−1) and MM-1 had a moderate Ms (2.6 × 105 A m−1). The DFT predicted Ms values for MM-1 and MM-2 (5.9 × 105 and 5.6 × 105 A m−1) also do not align with the experimentally determined data. The predicted values are all higher in magnitude for each mixed-cationic series ranging from 4.4–5.9 × 105 A m−1. This disagreement between the experimental and computational values may arise from the non-ideal placement of the various cations in the nanoparticle's crystalline lattice during synthesis, as Ms depends on the net magnetic moment per formula unit determined by the difference between the moments of the tetrahedral and octahedral sites. The experimental increase in Ms with decreasing Mn content and increasing Fe content (MM-3 to MM-7) is likely due to more Fe3+ ions occupying octahedral sites, enhancing the magnetic moment per formula unit. The cation distribution in cobalt ferrite nanoparticles has been shown to alter Ms, with values decreasing with increasing cation inversion (Co2+ ions occupying tetrahedral sites and Fe3+ ions occupying octahedral sites).32 For example, as MM-2 has less Mn content and higher Co and Fe content, fewer low-moment (Mn2+) ions occupy the octahedral site but are present in the tetrahedral site, while higher moment ions (Fe3+ and Co2+) occupy the octahedral site, maximizing the octahedral–tetrahedral moment difference in the lattice, leading to high Ms. Additionally, surface disorder effects are likely responsible for the consistently lower than predicted Ms values of the spinel nanoparticles, stemming from their smaller diameters of approximately 8.4–10.6 nm, an effect which has been reported for magnetite nanoparticles.33 It is interesting to note that the inferred DC Keff and the Ms values are decoupled, as increasing iron content (MM-3 to MM-7) generally decreases DC Keff, but increases Ms. The possible presence of magnetically dead or weak regions would also contribute to decreasing overall Ms.
| ωτ = 1, | (4) |
The AC magnetization data is shown in Fig. 7A for the MM-7 sample. The imaginary (out-of-phase) component of the AC susceptibility (χ″) was normalized to the real (in-phase) component of the AC susceptibility (χ′) at 10 K and then plotted versus temperature. Higher field frequencies move the peak temperature higher since a lower relaxation time (faster) is needed to maintain the equality in eqn (4).
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Fig. 7 (A) Representative AC susceptibility χ″/χ′ versus temperature curves for MM-7, taken at frequencies ranging from 100 Hz to 10 000 Hz. The imaginary part of the magnetic susceptibility is normalized to the real part at 10 K. (B) The logarithm of the peak relaxation time ln(τ) versus inverse temperature 1/T with a NA fit through the data (eqn (2)). (C) The same data with a Vogel–Fulcher fit (eqn (5)) and with the anisotropy constrained to its DC value calculated from the mean diameter of the sample (Keff = 40 kJ m−3). | ||
From these curves in Fig. 7A, the logarithm of the relaxation time
was plotted as a function of peak temperature. This allows the Néel–Arrhenius (NA) – or Néel–Brown – eqn (2) to be fit to the data, which is shown in Fig. 7B. The best fit is obtained using a y-intercept corresponding to attempt time τ0 = 1.3 × 10−13 s and a slope proportional to the anisotropy energy density Keff = 63 kJ m−3. (Note that we use a mean magnetic volume for MM-7 VC = 3.3 × 10−25 m3, which is slightly larger than
, with 〈r〉 the mean radius, because the distribution of volumes is skewed to higher values in a log–normal distribution.) The attempt time is quicker than what is usually assumed in DC measurements (0.001–1 ns) and the extracted anisotropy is roughly 50% larger than the value extracted from DC measurements calculated from the overall mean (40 kJ m−3).36 R2 values were computed using the inbuilt functions within Mathematica's NonlinearFindFit routine.37 However, we note that the goodness of the fit (R2 > 0.999) remains high no matter how we constrain the fit parameters. For example, constraining the anisotropy to be equal to the DC value calculated from the overall mean (Keff = 40 kJ m−3) results in a one-parameter fit with τ0 = 0.25 ns and R2 = 0.996, which also seems reasonable.
Table 1 shows the results of the unconstrained NA fit to the data, for all seven samples. One sees that the attempt times τ0 (fourth column) are unphysically small, as noted by others.38 The extracted anisotropy energy density Keff values from the fit (third column) are also larger than the DC values in Fig. 5. However, the trend in the anisotropy is roughly the same with MM-2 having the largest value, followed by MM-1, and MM-7 having the lowest. This is encouraging.
| Sample | Mean Vc (10−25 m3) | Keff (kJ m−3) from NA fit | τ0 (s) from NA fit | R2 of NA fit |
|---|---|---|---|---|
| MM-1 | 6.1 | 140 | 7.7 × 10−10 | 0.9997 |
| MM-2 | 6.7 | 415 | 3.6 × 10−26 | 0.9993 |
| MM-3 | 6.3 | 116 | 5.3 × 10−9 | 0.9999 |
| MM-4 | 5.1 | 94 | 1.4 × 10−6 | 0.9995 |
| MM-5 | 5.7 | 116 | 2.4 × 10−14 | 0.9998 |
| MM-6 | 4.9 | 94 | 4.7 × 10−6 | 0.9997 |
| MM-7 | 3.3 | 63 | 1.3 × 10−4 | 0.9998 |
Table 2 instead shows the same NA fit with the anisotropy constrained to the DC values (third column). Now the only fit parameter is the attempt time τ0 in ns (fourth column). The attempt time is reasonable for all samples apart from MM2 where it is a little small. The goodness of the fit is not as high as when the anisotropy is unconstrained (Table 1) but is still greater than 0.99 in all cases. Therefore, the different fits may only give qualitative information on the anisotropy barrier heights and attempt times.
| Sample | Mean Vc (10−25 m3) | DC Keff (kJ m−3) | τ0 (ns) from NA fit | R2 of NA fit |
|---|---|---|---|---|
| MM-1 | 6.1 | 77 | 0.35 | 0.995 |
| MM-2 | 6.7 | 130 | 0.000015 | 0.996 |
| MM-3 | 6.3 | 61 | 0.01 | 0.997 |
| MM-4 | 5.1 | 57 | 0.03 | 0.995 |
| MM-5 | 5.7 | 44 | 0.09 | 0.990 |
| MM-6 | 4.9 | 55 | 0.10 | 0.995 |
| MM-7 | 3.3 | 40 | 0.25 | 0.996 |
Another option is to fit the AC data using the Vogel–Fulcher law,39 namely
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Most of the mixed-cationic series heated poorly at a field strength of 20 kA m−1 and frequencies near 205 kHz, as shown in Fig. 8. It has been shown that iron oxide nanoparticles that are 10 nm in diameter are poor heaters, which match the results for many of the mixed-cationic series.40 While the poor SAR values can arise from nanoparticle agglomeration, the toluene suspension likely limits significant clustering, suggesting that the low heating efficiency is primarily intrinsic to the nanoparticle size and composition. Notably, MM-2 displayed a much higher magnetometric and calorimetric SAR than the other nanoparticle series at these fields and frequencies. It has been shown that maximum heating for magnetic nanoparticles occurs at ωτ ≈ 1, with (ω = 2πf).1,15 The Néel relaxation time corresponding to maximum heating at a given frequency f is given (similar to eqn (4)) by
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For an AC field frequency of 200 kHz, the Néel relaxation for maximum heating is calculated to be 8 × 10−7 seconds, or 0.8 µs. The corresponding Keff value for a magnetic nanoparticle of 10 nm in diameter to achieve this Néel relaxation time is 53 kJ m−3, using eqn (2) and assuming τ0 = 1 ns and T = 300 K. We note that this value is on the same order of magnitude as Keff found from DC measurements (Fig. 5B) and AC measurements (Table 1) but there are too many approximations to claim that the nanoparticle composition with Keff closest to this will heat the best. However, MM-2 exhibits by far the highest Keff inferred from DC and AC measurements, and the highest heating, due to its higher Keff from higher spin–orbit coupling from its increased Co content. In contrast, MM-3 to MM-7 have lower Keff values due to their weaker spin–orbit coupling from their higher Mn and Fe content, producing Néel relaxation times that are too quick compared to the AC field timescales, causing their magnetic moments to closely follow the field, limiting their heat generation.
To understand this effect, the nanoparticles were subjected to higher magnetic field frequencies with results shown in Fig. 9. Due to instrumentational constraints, the highest possible frequency for the magnetometric SAR was chosen at 350 kHz. For the calorimetric SAR, the induction coil with the closest nominal frequency to this value (376 kHz), and highest field strength among these induction coils (12.7 kA m−1) was used. The closest corresponding field strength setting (12 kA m−1) was chosen for the magnetometric SAR. The magnetometric SAR values for MM-1 and MM-3 increased to 120 and 110 W g−1, respectively, showing a large increase from the >10 W g−1 values at 200 kHz. The calorimetric SAR values also increased to 63 and 88 W g−1 from values below 1 W g−1, as seen in Fig. 9. MM-2 also was determined to have an increase in AC SAR from 83 to 102 W g−1, and an increase in calorimetric SAR from 26.9 to 85 W g−1. MM-4 began to produce heat upon this frequency increase, measuring a calorimetric SAR value of 45 W g−1, compared to its SAR of 2 W g−1 at 205 kHz. The rest of the mixed-cationic series did not produce heat at either magnetic field frequency, except for MM-7 measuring a calorimetric SAR of 25 W g−1 at the increased frequency.
At 376 kHz, the optimal Néel relaxation time is 4.2 × 10−7 seconds (0.42 µs), which is lower than that calculated earlier for 200 kHz The Keff value that this would occur at is 47.6 kJ m−3 (again using eqn (2) and assuming τ0 = 1 ns and T = 300 K). Increasing the AC field frequency would optimize heating for nanoparticles with a faster Néel relaxation time and a smaller Keff than considered for 200 kHz. Therefore, while only MM-2 produced heat at 200 kHz, now other particle series produce heat as a smaller threshold Keff value is required. This is seen as MM-1 through MM-4 produce heat, but the slightly smaller particles and those with lower Keff values still do not. An increase in magnetocrystalline anisotropy with increasing cobalt content has been previously reported for 11 nm cobalt ferrite nanoparticles, which is attributed to higher spin–orbit coupling.41 It was hypothesized that this increase in magnetocrystalline anisotropy tuned the Néel relaxation time around the driving frequency, which caused the enhancement of SAR with the increasing cobalt content of the nanoparticles. Néel relaxation time is highly sensitive to nanoparticle volume, which in turn will affect the optimal field and frequency for required for energy dissipation in addition to the influence of Keff. While the nanoparticles in this study are relatively monodisperse and spherical, it should be noted that small variations in nanoparticle volume and additional contributions to Keff such as dipolar interactions can influence the measured SAR. Despite these factors, it can be seen that altering cation composition can be used to tune Keff, allowing for maximization of heating efficiency at specific alternating magnetic field frequencies.
The ZFC-FC curves illustrated differences in blocking temperatures with relative trends as predicted by DFT calculations, as their blocking peaks shifted to lower values as the iron concentration increased and the manganese concentration decreased for the nanoparticles, (MM-3 to MM-7), indicating a decrease in Keff attributed to weaker spin–orbit coupling. It should be noted that the calculated DC Keff values for the nanoparticles are highly sensitive to small changes in nanoparticle volume. The two spinel nanoparticles that were targeted towards higher Keff values, (MM-1 and MM-2), displayed the highest blocking temperatures, indicating that they have a higher Keff, verifying the DFT predictions. Their calculated Keff values also followed this trend and were the highest of the series, with MM-1 having anisotropy energy density equal to 77 kJ m−3, and MM-2 having 130 kJ m−3, attributed to higher spin–orbit coupling.
The Ms of the nanoparticles also increased with increasing iron content, and decreasing manganese content, (MM-3 to MM-7), verifying the DFT calculations and coinciding with previously published results, illustrating that Ms can be targeted through altering Keff. MM-1 had a lower Ms than predicted, and MM-2 had a higher Ms than predicted.
AC susceptibility data was generated for each sample, which were fitted to Néel–Arrhenius models. The fits gave rise to a wide range of inferred attempt time and anisotropy energy density values. However, the trend in the anisotropy strength amongst the series of seven particles matched that extracted from the DC magnetometry data.
AC and calorimetric SAR experiments at a field strength of 20 kA m−1 and 200–205 kHz revealed that each mixed-cationic nanoparticle series heated poorly, except for MM-2. Increasing the calorimetric and AC field frequencies to approximately 376 and 350 kHz, respectively, revealed that the mixed-cationic nanoparticles with higher Keff values, (MM-1 to MM-4), were able to generate heat, indicating that their higher Keff values were able to slow down their Néel relaxation times into the optimal range for this AC magnetic field frequency. Therefore, altering Keff through cationic composition can optimize the nanoparticles for specific AC magnetic field frequencies. These findings provide a predictive framework for designing optimized mixed-cationic nanoparticles for applications such as hyperthermia, catalysis, data storage, and nanoparticle imaging, where control over Keff is paramount.
Supplementary information (SI) is available. See DOI: https://doi.org/10.1039/d5nr04648c.
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