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Article

Chemical Manipulation of the Collective Superspin Dynamics in Heat-Generating Superparamagnetic Fluids: An AC-Susceptibility Study

1
Department of Physics and Astronomy, University of Texas at San Antonio, 1 UTSA Circle, San Antonio, TX 78249, USA
2
Department of Physics, University of Texas at El Paso, 500 W, University Avenue, El Paso, TX 79968, USA
*
Author to whom correspondence should be addressed.
Crystals 2025, 15(7), 631; https://doi.org/10.3390/cryst15070631
Submission received: 22 June 2025 / Revised: 7 July 2025 / Accepted: 7 July 2025 / Published: 9 July 2025
(This article belongs to the Special Issue Innovations in Magnetic Composites: Synthesis to Application)

Abstract

We use Co doping to alter the magnetic relaxation dynamics in superparamagnetic nanofluids made of 18 nm average diameter Fe3O4 nanoparticles immersed in Isopar M. Ac-susceptibility data recorded at different frequencies and temperatures, χ″vs. T|f, reveals a major (~100 K) increase in the superspin blocking temperature of the Co0.2Fe2.8O4-based fluid (CFO) compared to its Fe3O4 counterpart (FO). We ascribe this behavior to the strengthening of the interparticle magnetic dipole interactions upon Co doping, as demonstrated by the relative χ″-peak temperature variation per frequency decade Φ = T T · l o g ( f ) , which decreases from Φ~0.15 in FO to Φ~0.025 in CFO. In addition, χ″vs. T|f datasets from the CFO fluid reveal two magnetic events at temperatures Tp1 = 240 K and Tp2 = 275 K, both above the fluid’s freezing point (TF = 197 K). We demonstrate that the physical rotation of the nanoparticles within the fluid, the Brown mechanism, is entirely responsible for the collective superspin relaxation observed at Tp1, whereas the Néel mechanism, the superspin flip across an energy barrier within the particle, is dominant at Tp2. We confirm this finding through fits of models that describe the temperature dependence of the relaxation time via the two mechanisms: τ B ( T ) = 3 η 0 V H k B T exp E k B T T 0 and τ N T = τ 0 exp E B k B T T 0 . The best fits yield γ 0 = 3 η 0 V H k B   = 1.5 × 10−8 s·K, E′/kB = 7 03 K, and T0′ = 201 K for the Brown relaxation, and EB/kB = 2818 K and T0 = 143 K for the Néel relaxation.

1. Introduction

Magnetic nanoparticle (MNP) ensembles are known to have a particularly broad range of applications in several important fields ranging from magnetic recording [1,2,3] to energy storage [4] and environmental remediation [5,6,7]. In addition, their role in biomedicine has grown exponentially during the past two decades [8,9,10,11,12]. This was mostly driven by rapid progress in identifying new ways to make use of MNPs’ ability to respond to relatively weak magnetic fields and have their surface functionalized [13]. In particular, magnetic nanoparticle hyperthermia—a method by which tissue heating can be achieved by subjecting MNP ensembles to an alternating magnetic field—has received considerable attention due to its potential to be used in cancer therapy [14,15,16,17,18]. The idea is not new [19], and there are several technical issues such as the ability to drive the nanoparticles to the tumor site and achieve uniform heating. This is important, as malignant cells are known to die at temperatures just a few degrees below the threshold above which normal tissue dies as well, so heating the tumor to temperatures within this window is necessary to selectively kill cancer. Yet, the main barrier to progress towards the use of magnetic hyperthermia cancer therapy as a stand-alone procedure stems from the inability of commonly used materials (e.g., Fe3O4) to generate enough heat within the limits on the amplitude of the driving magnetic field (Hm) and its frequency (f), whose product Hm·f needs to be less than 106 Oe·Hz in order for the procedure to be usable in humans.
At the temperatures where MNPs are used in magnetic hyperthermia cancer therapy applications, the nanoparticle ensembles are almost always in their superparamagnetic state as these temperatures are above the blocking temperature of the ensemble, TB [20]. This is important because heat generation in superparamagnetic MNPs is not hysteretic as in their ferro- or ferrimagnetic counterparts. Instead, the ability of these systems to generate heat, measured by the specific absorption rate (SAR), depends on the collective dynamics of the giant magnetic moments (the superspins) of the nanoparticles [21].
The superspin dynamics in an ensemble of MNPs can occur via two mechanisms. First, the superspin flips over an energy barrier to magnetization reversal, EB, via thermal activation. This Néel relaxation mechanism is driven by thermal activation and, for a single nanoparticle, its relaxation time (i.e., the time it takes its magnetic moment to complete one full flip), τN, is given by
τ N ( T ) = τ 0 exp E B k B T
where τ0 is the characteristic time (typically of the order of 10−10 to 10−12 s), EB is the energy barrier to magnetization reversal, and kB is the Boltzmann constant. EB depends on the MNP’s material through the anisotropy constant, K, and the nanoparticle’s volume, V, according to EB = KV. For an ensemble of MNPs that have an average volume of <V> and interact with one another via magnetic dipole forces, an empirical model based on the Vogel–Fulcher law was proposed to describe the Néel relaxation [22]:
τ N T = τ 0 exp E B k B T T 0
Here EB = K <V>, and T0 is a parameter that accounts for the strength of the interparticle interactions in the ensembles. When the MNP ensemble is immersed in a carrier fluid to form a ferrofluid, a second type of superspin dynamics characterized by the rotation of the whole nanoparticle within the fluid is activated. The relaxation time of this Brown relaxation mechanism is given by
τ B T = 3 η ( T ) V H k B T = 3 η 0 V H k B T exp E k B T T 0
Here, VH is the average hydrodynamic volume of the nanoparticles, and η(T) = η0exp[E′/[kB(T − T0′)] is the temperature-dependent fluid viscosity [23], where η0 is a constant that depends on the material, E′ is the activation energy, and T0′ is the divergence temperature of the viscosity.
In any ferrofluid, both Néel and Brown relaxation are simultaneously active at any temperature, and their temperature-dependent interplay yields a so-called effective relaxation time, τeff, that includes contributions from both mechanisms. Understanding these collective superspin dynamics at the microscopic level is important, as a ferrofluid’s magnetic loss power density (its ability to generate heat under the action of an alternating magnetic field) directly depends on the above-described effective relaxation. A model developed by Rosensweig, where the effective superspin relaxation time is given by τ e f f T = τ N T · τ B T τ N T + τ B T [24], has been extensively used to analyze the complex magnetization dynamics of MNP ensembles immersed in carrier fluids.
The ability to alter in a controlled way the interplay between Néel and Brown relaxation is critical for the design of ferrofluids with enhanced heat generation properties, and much research effort has recently been invested towards this end [25,26]. Besides measuring and analyzing the magnetic response of ferrofluids throughout a broad range of temperatures and frequencies of the driving field, many of these studies focused on varying the meso-structural characteristics of the MNP ensemble (e.g., its average nanoparticle volume and size distribution) and the interparticle magnetic interaction strength by progressively diluting the ferrofluid to increase the interparticle distances [27]. Most of these studies used biocompatible Fe3O4 nanoparticles immersed in hydrocarbon-based fluids. Significant progress has been made, including observations of multiple magnetic events (as ac-susceptibility peaks) upon heating, which were attributed to a possible decoupling between the Brown and Néel mechanisms in dense systems [25,26].
Here we used chemical modification in an attempt at altering the magnetization dynamics in ferrofluids. Specifically, we doped cobalt into Fe3O4/Isopar M (FO) to obtain Co0.2Fe2.8O4/Isopar M (CFO) ferrofluids, and we used temperature-resolved ac-susceptibility data to analyze the superspin relaxation in the two samples, both qualitatively and quantitatively. This approach has at least two advantages over the ones described in the paragraph above. First, it is known that chemical manipulation via doping offers more flexibility, sensitivity, and a substantially broader range of options on how to affect the magnetic behavior of MNPs in general [28]. In our case, for example, replacing just 6.67% of the Fe2+ ions with Co2+ leads to dramatic changes in the MNP ensemble’s dynamic behavior under the action of an oscillating magnetic field. Second, Co doping increases the blocking temperature of the ensemble by more than 100 K (for the same average volume), thus allowing the Néel relaxation component to be analyzed from powders (obtained by evaporating the carrier fluid) at temperatures close to the ones where the contribution of this mechanism to the effective relaxation is evaluated.
Our out-of-phase magnetic susceptibility data was collected at different temperatures and frequencies on FO and CFO (both fluids and powders). These χ″vs. T|f datasets exhibit a peak at temperatures where the MNP ensemble’s relaxation time is the same as the observation time, which for this type of measurement is fully determined by the frequency as τobs = 1/2πf. This allowed us to calculate, for all samples, the relative χ″-peak temperature variation per frequency decade Φ = T T · l o g ( f ) , a known measure of the interparticle dipole interaction strength in an MNP ensemble [29]. Our first finding is that Φ decreases by nearly one order of magnitude, from Φ~0.15 in FO to Φ~0.025 in CFO, revealing a significant strengthening of the interactions among nanoparticles upon Co doping. In turn, the blocking temperature of the ensemble increases in CFO above the melting point of the carrier fluid, TF = 197 K, so all the magnetic events in CFO fluids and powders occur above TF. Our main result comes from the analysis of the two peaks observed in the χ″vs. T|f datasets from the CFO fluid around Tp1 = 240 K and Tp2 = 275 K. Using Rosensweig’s formula and the temperature dependence of Néel relaxation τN(T) obtained from the CFO powder, we managed to unambiguously identify the microscopic relaxation mechanisms responsible for the superspin dynamics observed in the ferrofluid. We found that the Brown mechanism is entirely responsible for the collective superspin relaxation observed at Tp1, whereas the Néel mechanism is dominant at Tp2. Finally, using fits of Equations (2) and (3), we determined the values of the parameters that characterize the Brown relaxation at Tp1, i.e., 3 η 0 V H k B     = 1.5 × 10−8 s·K, E′/kB = 703 K, and T0′ = 201 K, and the ones that characterize the Neel relaxation at Tp2 , i.e., EB/kB = 2818 K and T0 = 143 K. Our results are important because the ability to control the superspin dynamics in ferrofluids via chemical manipulation has the potential to enhance biomedical applications such as magnetic nanoparticle hyperthermia therapy.

2. Materials and Methods

Both the Fe3O4 and Co0.2Fe2.8O4 magnetic nanoparticle ensembles used in this study were made by the common co-precipitation method [30]. Briefly, to synthesize Fe3O4 nanoparticles, FeCl3·6H2O and FeCl2·4H2O (2:1 molar ratio) were dissolved in deionized water, and NaOH was subsequently added to promote precipitation. To synthesize Co0.2Fe2.8O4 nanoparticles, the process was the same, with the only exception that a 0.2:2.8 molar ratio mixture of CoCl2 and FeCl2 was used (instead of FeCl2) to achieve the desired Co doping level. To make the Fe3O4/Isopar M and the Co0.2Fe2.8O4/Isopar M ferrofluids, the nanoparticles were coated with oleic acid to avoid agglomeration and then redispersed in the carrier fluid. In both cases, the as-prepared ferrofluids had a solid mass/fluid volume concentration of 1 mg/mL.
Transmission Electron Microscopy (TEM) images were collected to assess the quality (monodispersity) of the MNP ensembles and to determine their average size. equipped with a goniometer-tilt stage (Hitachi, Schaumburg, IL, USA) and a CCD camera was used. The operating voltage was 300 kV.
Powder X-ray diffraction (XRD) measurements were performed using a Bruker D8 Quest diffractometer equipped with a Mo source (λ = 0.71 Å) and area detector (Bruker Scientific LLC, Billerica, MA, USA). The transmission geometry was used, and the I vs. 2θ powder diffraction patterns were obtained by integrating over the circular projections of the Debye–Scherrer cones on the plane of the detector.
Ac-magnetic-susceptibility data was collected using a Quantum Design® Physical Property Measurement System (PPMS) (Quantum Design, San Diego, CA, USA) generating an alternating magnetic field of amplitude Hm = 3Oe and frequencies ranging from 10 Hz to 10,000 Hz. For all measurements, about 1 mL of ferrofluid was sealed in a polycarbonate capsule that was subsequently immobilized within a plastic straw and attached to the end of the instrument’s sample holder rod. For both the CF and the CFO ferrofluid, the out-of-phase (imaginary) susceptibility, χ″, was recorded at different temperatures upon heating from 5 K to 310 K in 5 K steps. At each temperature, χ″ was measured at six frequencies of the driving magnetic field: 10 Hz, 100 Hz, 500 Hz, 1000 Hz, 5000 Hz, and 10,000 Hz. The resulting χ″vs. T|f datasets were analyzed using fits of the Vogel–Fulcher law (Equation (2)) and a hydrodynamic model (Equation (3)) to describe Néel and Brown superspin relaxation, respectively.

3. Results and Discussion

Figure 1a shows a TEM image of the FO nanopowder obtained from the corresponding ferrofluid. The image demonstrates the quality of the nanoparticle ensemble in terms of its particle shape and size distribution. Moreover, it is important to mention that the same MNP ensemble was present in the ferrofluid and in the powder for both FO and CFO (as the powders were obtained by the evaporation of the Isopar M fluid). Figure 1b presents a higher-magnification image of the same MNP ensemble showing the spherical shape of the nanoparticles and an average diameter of <D> ≅ 18 nm. The crystallinity and purity of the nanoparticles in the ensemble were also checked by X-ray diffraction (XRD). This is important, as studies have shown that even for basic iron oxide nanoparticle ensembles synthesized via well-established techniques, impurities like FeO or α-Fe can be present [31]. This might be due to inherent surface effects that have been observed to induce deviations from the ideal 2:1 Fe3+/Fe2+ ratio even when stoichiometric amounts of reactants are used [32]. Figure 1c shows the powder XRD pattern from the FO nanoparticle ensemble. All observed peaks correspond to the Bragg reflections from the cubic crystal structure of Fe3O4 (space group Fd3m, lattice constant a = 8.36 Å), the angular 2θ positions of which are marked by the vertical bars. The quality of the ensemble is demonstrated by the lack of measurable impurity peaks. For example, the strongest reflection from FeO would be at 2θ = 18.95 deg., but the number of counts detected at this angular position is within the background level (i.e., 0.6 % of the intensity of the strongest Fe3O4 peak observed). Finally, Figure 1d presents the size distribution of the nanoparticles in the ensemble and the resulting average diameter. The data reveals a sharp size distribution, which further confirms the morphological quality of the sample.
The temperature-resolved ac-susceptibility data from the undoped FO ferrofluid is shown in Figure 2a. The six χ″vs. T|f datasets were collected at different frequencies of the driving magnetic field: 10 Hz (purple), 100 Hz (orange), 500 Hz (green), 1000 Hz (red), 5000 Hz (blue), and 10,000 Hz (black).
The most notable feature of these datasets is that they each exhibit a well-defined peak, and the peak temperature Tp increases with an increase in the frequency, f, or equivalently, the observation time τobs = 1/2πf. As the MNP ensemble’s superspin relaxation time, τ, is equal to the observation time at Tp, this type of measurement allows us to determine the temperature dependence of the superspin relaxation time, τ(T). In this particular case, all Tp values are below the freezing point of Isopar M, so the only active mechanism is Néel relaxation as the nanoparticles are immobilized in the frozen carrier fluid. Another result is the value of the relative χ″-peak temperature variation per frequency decade, Φ = T T · l o g ( f ) . For the undoped FO ferrofluid, we found Φ = 0.15, which indicates the presence of medium-strength interactions. Figure 2b shows the results of similar ac-susceptibility measurements, this time carried out on FO powders obtained by evaporating the Isopar M from the FO ferrofluid. This led to a weaker χ″ signal (by nearly one order of magnitude), so only the highest four frequencies were used to collect χ″vs. T|f datasets: 500 Hz (green), 1000 Hz (red), 5000 Hz (blue), and 10,000 Hz (black). The peak temperature shift with the measurement frequency yields the temperature variation of the Néel relaxation time, τN(T), and the peak temperature variation per frequency decade is Φ = 0.12, less than its FO ferrofluid counterpart. The analysis of the ac-susceptibility data from the FO ferrofluid and corresponding FO powder is shown in Figure 2c. The open symbols represent the measured dependence of ln (τN) on the inverse temperature 1/T for the FO powder, and the filled symbols show the corresponding ln (τN) vs. 1/T data from the FO ferrofluid. In both cases, the dashed lines are best fits of Equation (2) to the data, where two parameters—the reduced energy barrier to magnetization reversal, EB/kB, and the interparticle interaction strength parameter, T0—were allowed to vary independently. The best-fit results indicate an increase in both T0 and EB/kB in the powder sample compared to the ferrofluid, from 28 K to 39 K and from 1645 K to 1904 K, respectively. Clearly, this is a result of the increase in the interparticle distances in the ferrofluid, which weakens the dipolar interactions, a fact also confirmed by the observed values of Φ. Moreover, this analysis allows us to quantify the overall change in the Néel relaxation time from the powder to the 1 mg/mL ferrofluid. Within the 155–185 K temperature range, our data shows that τN decreases by 3.5 times on average in the ferrofluid compared to the powder. This observation is important for the analysis of the doped Co0.2Fe2.8O/Isopar M fluid (CFO) presented below. It is also important to mention that Co-doped Fe3O4 magnetic nanoparticles are biocompatible [33].
Figure 3a shows the temperature-dependent ac-susceptibility data collected on the Co0.2Fe2.8O4/Isopar M (CFO) ferrofluid. The effects of Co doping are evident. First, at all measurement frequencies, there are two magnetic events in the form of χ″ peaks at temperatures Tp1 and Tp2, as clearly illustrated in Figure 3b. Second, both peaks exhibit a temperature shift with frequency similar to the one observed in the FO samples, demonstrating the dynamic nature of the microscopic phenomena that underlie the χ″ behavior observed at Tp1 and Tp2. In addition, both peaks are above the freezing point of the carrier fluid, where the Néel and Brown superspin relaxation mechanisms are active. Previous studies did reveal a double peak in χ″vs. T data from nanofluids, but in those cases the lowest temperature peak was below the carrier fluid’s freezing point, which completely inhibited the physical rotation of the MNPs [25].
To uncover the microscopic origin of the observed magnetic behavior of the CFO ferrofluid, the first step was to analyze the characteristics of the χ″-peak temperature variation with the frequency of the applied magnetic field. As shown in Figure 4, we carried out this analysis for both Tp1 and Tp2. The left inset in Figure 4 presents the Tp1 values observed at the six measurement frequencies used. This data leads to two findings. First, it yields a value of the peak temperature variation per frequency decade of Φ = 0.025. This is one order of magnitude less than the value of Φ in the FO nanofluid, confirming the significant strengthening of interparticle interactions induced by Co doping in the CFO sample.
We also used the observed frequency dependence of Tp1 to determine how the superspin relaxation time changes upon heating within the temperature interval corresponding to the lower temperature peak. This was enabled by the fact that, at each peak temperature, τ = τobs = 1/2πf (as explained in more detail in the Section 1). The open symbols in Figure 4 (line a) show the resulting ln (τ) vs. 1/T dependence. It is important to mention that τ is, in principle, an effective relaxation time with contributions from both the Néel and Brown mechanisms. Finally, we found that ln (τ) depends linearly on the inverse temperature, as demonstrated by the fit shown by the red dashed line. Figure 4 (line b) presents a similar analysis of the data corresponding to the high-temperature χ″-peak, Tp2. The right inset presents the Tp2 values observed at the six measurement frequencies used. The same type of ln (τ) vs. 1/T is observed (solid symbols) but this time in the context of somewhat weaker interparticle interactions, as indicated by Φ = 0.05.
Our strategy to identify the individual contributions of the Néel and Brown mechanisms to the overall, effective superspin dynamics observed at Tp1 and Tp2 in the CFO fluid was to isolate the Néel relaxation by blocking the physical rotation of the MNPs. We accomplished that by evaporating the Isopar M from the CFO ferrofluid, which resulted in a CFO powder that contained an identical nanoparticle ensemble to the one in the nanofluid. Figure 5a presents the χ″vs. T|f datasets recorded on the CFO powders at five frequencies, 100 Hz (orange), 500 Hz (green), 1000 Hz (red), 5000 Hz (blue), and 10,000 Hz (black). The data exhibits just one peak at temperatures that shift with the frequency within the 265–295 K temperature range, as shown in the inset. The resulting ln (τN) vs. 1/T dependence in the CFO powder is represented by the open symbols in Figure 5b. In addition, the filled symbols here show the variation with the inverse temperature of ln (τeff) obtained from the Tp2 peaks observed in the CFO fluid. In both cases, the dashed lines are a guide for the eye. These results are remarkably similar to the ones from the FO fluid and powder shown in Figure 2c. The main difference is that, for FO, Néel relaxation was the only active mechanism (as the fluid was frozen), which allowed us to determine the factor by which Φ increased in the FO 1 mg/mL ferrofluid compared to the corresponding powder. As the concentration of the Co-doped ferrofluid, CFO, was also 1 mg/mL, we used the same analysis to calculate the τN contribution to the effective relaxation time at all temperatures corresponding to the Tp2 peaks.
Figure 6 shows the contributions of the Néel and Brown mechanisms to the overall effective superspin relaxation time of the MNP ensemble in the CFP ferrofluid at the six temperatures where the Tp2 peaks occur. Each temperature corresponds to one of the six measurement frequencies used: 10 Hz, 100 Hz, 500 Hz, 1000 Hz, 5000 Hz, and 10000 Hz. At each temperature, the superspin relaxation times τeff, τN, and τB were determined as follows. The overall time was calculated from the measurement frequency according to τeff = τobs = 1/2πf, and the Néel time was determined from the CFO powder data according to the procedure described above. Once the effective and Néel times were known, τB was calculated based on the Rosensweig formula according to 1/τB = 1/τeff − 1/τN. The results clearly indicate that the Néel mechanism is dominant at all Tp2 temperatures. Consequently, we used Equation (2) to quantitatively characterize the magnetization dynamics within this temperature range.
The open symbols in Figure 7 represent the temperature dependence of ln(τN) based on the analysis presented in Figure 6. The horizontal error bars are related to the precision of the Tp2 peak temperature measurements. The dashed line is the best fit of the Vogel–Fulcher activation law in Equation (2) to the ln(τN) vs. T data. Allowed to vary in the fit were two independent parameters: the reduced energy barrier to superspin reversal, EB/kB, and the interparticle interaction strength parameter, T0. The refinement converged to low residuals (reduced χ2 = 0.019), and the best fit yielded EB/kB = 2818 K and T0 = 143 K.
Finally, we further analyzed the Néel and Brown contributions to the relaxation time corresponding to the low-temperature χ″-peak, Tp1. As in the case of its Tp2 counterpart, τeff can be directly determined at each of the Tp1 peak temperatures from the corresponding frequencies of the applied magnetic field as τeff = τobs = 1/2πf. To determine τN at these temperatures, however, we cannot directly use the data from the CFO powder (as that falls within a higher temperature range, around Tp2). We therefore extrapolated the CFO powder’s linear ln(τN) vs. 1/T dependence to the 235–255 K temperature range, where the Tp1 peaks occur. At T = 250 K, for example, τeff = 1.59 × 10−4 s and τN = 2.5 × 10−2 s, i.e., 1/τeff>>1/τN. Using Rosensweig’s equation we found τB = 1.61 × 10−4 s, which indicates that the Brown mechanism is almost entirely (99%) responsible for the collective superspin relaxation in the CFO fluid at this temperature. We found similar results at all the other Tp1 temperatures.
Based on these results, we used a hydrodynamic model of Brown relaxation (Equation (3)) to quantitatively characterize the magnetization dynamics within the 235–255 K temperature range. Figure 8 shows the temperature dependence of the observed overall relaxation time, and the horizontal error bars are related to the precision with which the χ″-peak temperatures were determined at the six measurement frequencies used. The dashed line is the best fit of a hydrodynamic model based on the temperature dependence of the nanofluid’s viscosity. The model only accounts for Brown relaxation and has three independent parameters: the prefactor, γ0 = 3η0VH/kB; the reduced activation energy for the viscosity variation with the temperature, E′/kB; and the divergence temperature of the viscosity, T0′. The best fit converged upon the simultaneous variation of these parameters, confirming the Brown relaxation origin of the superspin dynamics event observed at Tp1. In addition, the best fit yielded γ 0 = 3 η 0 V H k B   =1.5 × 10−8 s·K, E′/kB = 703 K, and T0′ = 2 01 K.
Overall, our study shows that Co doping of Fe3O4 magnetic nanoparticles immersed in a carrier fluid strongly affects the microscopic dynamics that underlie superspin relaxation via the Néel and Brown mechanisms. Our results show that the interparticle interactions strengthen upon Co doping, and the blocking temperature increases by more than 50%. Most importantly, the interplay between Néel and Brown relaxation exhibits a new and very distinct behavior in which the two mechanisms remain coupled, but each is overwhelmingly enhanced within a given temperature range: Brown between 240 K and 250 K and Néel between 270 and 290 K. This behavior is likely due to several factors. First, the increase in the nanoparticles’ magnetic anisotropy known to occur upon Co doping [34] leads to an increase in the energy barrier to magnetization reversal, which directly affects the Néel relaxation time and blocking temperature. Second, the strengthening of the interparticle interactions in the doped ferrite (shown by an increase in the peak shift per frequency decade, ϕ, and the interaction strength parameter, T0) has an effect not only on the Néel mechanism but also on its Brown counterpart. Indeed, stronger interparticle interactions slow down the reorientation of the superspins via the physical rotation of the nanoparticles within the fluid, thus increasing the Brown relaxation time. In addition, recent studies have suggested that a similar effect can result from an increase in the nanoparticles’ hydrodynamic volume via aggregation driven by strong interparticle interactions [35].

4. Conclusions

We used temperature-resolved ac-susceptibility measurements to carry out an investigation of the magnetization dynamics of Co0.2Fe2.8O4/Isopar M ferrofluid (CFO) at temperatures above the melting point of the carrier fluid, TF = 197 K. We found that Co doping substantially increased the CFO interparticle ensemble compared to its Fe3O4/Isopar M (FO) counterpart. This was indicated by a one-order-of-magnitude decrease in the relative χ″-peak temperature variation per frequency decade, T T · l o g ( f ) , from Φ~0.15 in FO to Φ~0.025 in CFO. As a result, the blocking temperature increased in the Co-doped ferrofluid by almost 100 K, so the magnetic events relevant to collective superspin relaxation occurred in CFO above TF, where both the Néel and Brown mechanisms are active. Our main finding came from χ″vs. T|f datasets that showed two magnetic events at temperatures Tp1 = 240 K and Tp2 = 275 K. For each of them we identified the microscopic mechanisms that contributed to the observed effective superspin relaxation time, τeff. Using Rosensweig’s formula, 1/ τeff = 1/τN + 1/τB, and the temperature dependence of the Néel relaxation, τN(T), obtained from the CFO powder, we determined that the Brown mechanism fully describes the collective spin relaxation at 240 K, whereas Néel relaxation becomes dominant at 275 K. Finally, we carried out fits of models that describe the temperature dependence of the relaxation time via these two mechanisms: τ B ( T ) = 3 η 0 V H k B T exp E k B T T 0 and τ N T = τ 0 exp E B k B T T 0 . The best fits yielded γ 0 = 3 η 0 V H k B   =1.5 × 10−8 s·K, E′/kB = 703 K, and T0′ = 201 K for Brown relaxation and EB/kB = 2818 K and T0 = 143 K for Néel relaxation. These results are important because they have the potential to open up new avenues for the synthesis of magnetic nanoparticle ensembles with enhanced properties for biomedical applications.

Author Contributions

Conceptualization, C.E.B.; Methodology, C.E.B. and A.D.P.; Investigation, C.E.B. and A.D.P.; Project administration, C.E.B.; Formal analysis, C.E.B. and A.D.P.; Writing—original draft, C.E.B.; Writing—review and editing, A.D.P. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded in part by The Research Corporation Cottrell College Science Award No. 7749.

Data Availability Statement

The original contributions presented in this study are included in the article. Further inquiries can be directed to the corresponding author.

Conflicts of Interest

The authors declare no conflicts of interest.

References

  1. Nakamura, T.; Miyamoto, T.; Yamada, Y. Complex permeability spectra of polycrystalline Li–Zn ferrite and application to EM-wave absorber. J. Magn. Magn. Mater. 2003, 256, 340–347. [Google Scholar]
  2. Hayashi, T.; Hirono, S.; Tomita, M.; Umemura, S. Magnetic Thin Films of Cobalt Nanocrystals Encapsulated in Graphite-like Carbon. Nature 1996, 381, 772–774. [Google Scholar]
  3. Kikitsu, A. Prospects for Bit Patterned Media for High-Density Magnetic Recording. J. Magn. Magn. Mater. 2009, 321, 526–530. [Google Scholar]
  4. Mohammed, H.; Mia, M.F.; Wiggins, J.; Desai, S. Nanomaterials for Energy Storage Systems—A Review. Molecules 2025, 30, 883. [Google Scholar] [CrossRef]
  5. Liosis, C.; Papadopoulou, A.; Karvelas, E.; Karakasidis, T.E.; Saris, I.E. Heavy Metal Adsorption Using Nanoparticles for Water Purification: A Critical Review. Materials 2021, 14, 7500. [Google Scholar] [CrossRef] [PubMed]
  6. Heo, Y.J.; Lee, E.-H.; Lee, S.-W. Adsorptive removal of micron-sized polystyrene particles using magnetic iron oxide nanoparticles. Chemosphere 2022, 307, 135672. [Google Scholar]
  7. Zhang, K.; Song, X.; Liu, M.; Chen, M.; Li, J.; Han, J. Review on the Use of Magnetic Nanoparticles in the Detection of Environmental Pollutants. Water 2023, 15, 3077. [Google Scholar] [CrossRef]
  8. Akshith, D.; Jingyi, X.; Sanjukta, D. Magnetic nanoparticles in bone tissue engineering. Nanomaterials 2022, 12, 757. [Google Scholar] [CrossRef]
  9. Lee, H.; Yoon, T.J.; Weissleder, R. Ultrasensitive detection of bacteria using core-shell nanoparticles and an NMR-filter system. Angew. Chem. Int. Ed. 2009, 48, 5657–5660. [Google Scholar]
  10. Koh, I.; Josephson, L. Magnetic nanoparticle sensors. Sensors 2009, 9, 8130–8145. [Google Scholar] [CrossRef]
  11. Palanisamy, S.; Wang, Y.M. Superparamagnetic Iron Oxide Nanoparticulate System: Synthesis, Targeting, Drug Delivery and Therapy in Cancer. Dalt. Trans. 2019, 48, 9490–9515. [Google Scholar]
  12. Beg, M.S.; Mohapatra, J.; Pradhan, L.; Patkar, D.; Bahadur, D. Porous Fe3O4-SiO2 Core-Shell Nanorods as High-Performance MRI Contrast Agent and Drug Delivery Vehicle. J. Magn. Magn. Mater. 2017, 428, 340–347. [Google Scholar]
  13. Shah, S.T.; Chowdhury, Z.Z.; Johan, M.R.B.; Badruddin, I.A.; Khaleed, H.M.T.; Kamangar, S.; Alrobei, H. Surface Functionalization of Magnetite Nanoparticles with Multipotent Antioxidant as Potential Magnetic Nanoantioxidants and Antimicrobial Agents. Molecules 2022, 27, 789. [Google Scholar] [CrossRef]
  14. Hergt, R.; Dutz, S.; Müller, R.; Zeisberger, M. Magnetic Particle Hyperthermia: Nanoparticle Magnetism and Materials Development for Cancer Therapy. J. Phys. Condens. Matter 2006, 18, S2919–S2934. [Google Scholar]
  15. Niculaes, D.; Lak, A.; Anyfantis, G.C.; Marras, S.; Laslett, O.; Avugadda, S.K.; Cassani, M.; Serantes, D.; Hovorka, O.; Chantrell, R.; et al. Asymmetric Assembling of Iron Oxide Nanocubes for Improving Magnetic Hyperthermia Performance. ACS Nano 2017, 11, 12121–12133. [Google Scholar] [PubMed]
  16. Fatima, H.; Charinpanitkul, T.; Kim, K.-S. Fundamentals to apply magnetic particles to hyperthermia therapy. Nanomaterials 2021, 11, 1203. [Google Scholar]
  17. Hervault, A.; Thanh, N.T.K. Magnetic nanoparticle-based therapeutic agents for thermo-chemotherapy treatment of cancer. Nanoscale 2014, 6, 11553–11573. [Google Scholar]
  18. Kobayashi, T. Cancer hyperthermia using magnetic nanoparticles. Biotechnol. J. 2011, 6, 1342–1347. [Google Scholar]
  19. Gilchrist, R.K.; Medal, R.; Shorey, W.D.; Hanselman, R.C.; Parrott, J.C.; Taylor, B. Selective inductive heating of Lymph Nodes. Ann. Surg. 1957, 146, 596–606. [Google Scholar]
  20. Lee, J.-H.; Kim, B.; Kim, Y.; Kim, S.-K. Ultra-high rate of temperature increment from superparamagnetic nanoparticles for highly efficient hyperthermia. Sci. Rep. 2021, 11, 4969. [Google Scholar]
  21. Szwed, M.; Marczak, A. Application of Nanoparticles for Magnetic Hyperthermia for Cancer Treatment—The Current State of Knowledge. Cancers 2024, 16, 1156. [Google Scholar] [CrossRef]
  22. Shtrikman, S.; Wohlfarth, E.P. The Theory of Vogel-Fulcher Law of Spin Glasses. Phys. Lett. A 1981, 85, 467–470. [Google Scholar]
  23. Botez, C.E.; Morris, J.L.; Eastman, M.P. Superspin Relaxation in Fe3O4/Hexane Magnetic Fluids: A Dynamic Susceptibility Study. Chem. Phys. 2012, 403, 89–93. [Google Scholar]
  24. Rosensweig, R.E. Heating magnetic fluid with alternating magnetic fields. J. Magn. Magn. Mater. 2002, 252, 370–374. [Google Scholar]
  25. Botez, C.E.; Knoop, J. Non-Debye Behavior of the Néel and Brown Relaxation in Interacting Magnetic Nanoparticle Ensembles. Materials 2024, 17, 3957. [Google Scholar] [CrossRef] [PubMed]
  26. Ota, S.; Takemura, Y. Characterization of Néel and Brownian Relaxations Isolated from Complex Dynamics Influenced by Dipole Interactions in Magnetic Nanoparticles. J. Phys. Chem. C 2019, 123, 28859–28866. [Google Scholar]
  27. Botez, C.E.; Mussslewhite, Z. Evidence of Individual Superspin Relaxation in Diluted Fe3O4/Hexane Ferrofluids. Materials 2023, 16, 4850. [Google Scholar]
  28. Apostolova, I.; Apostolov, A.; Wesselinowa, J. Magnetic Properties of Gd-Doped Fe3O4 Nanoparticles. Appl. Sci. 2023, 13, 6411. [Google Scholar]
  29. Botez, C.E.; Price, A.D. Ac-Susceptibility Studies of the Energy Barrier to Magnetization Reversal in Frozen Magnetic Nanofluids of Different Concentrations. Appl. Sci. 2023, 13, 9416. [Google Scholar]
  30. Ahn, T.; Kim, J.H.; Yang, H.-M.; Lee, W.L.; Kim, J.-D. Formation Pathways of Magnetite Nanoparticles by Coprecipitation Method. J. Phys. Chem. C 2012, 116, 6069–6076. [Google Scholar]
  31. Sun, X.; Tayal, A.; Ullrich, A.; Petracic, O.; Haas, S. Phase Composition of Iron Oxide Nanoparticles Studied Using Hard X-Ray Absorption Spectroscopy. J. Phys. Chem. C 2023, 127, 12077–12083. [Google Scholar]
  32. Shipilin, A.; Zakharova, I.N.; Shipilin, A.M.; Bachurin, V.I. Mössbauer Studies of Magnetite Nanoparticles. J. Surf. Investig. X-Ray Synchrotron Neutron Tech. 2014, 8, 557–561. [Google Scholar]
  33. Dutz, S.; Buske, N.; Landers, J.; Gräfe, C.; Wende, H.; Clement, J.H. Biocompatible Magnetic Fluids of Co-Doped Iron Oxide Nanoparticles with Tunable Magnetic Properties. Nanomaterials 2020, 10, 1019. [Google Scholar] [CrossRef]
  34. Caizer, C. Computational Study Regarding CoxFe3-xO4 Ferrite Nanoparticles with Tunable Magnetic Properties in Superparamagnetic Hyperthermia for Effective Alternative Cancer Therapy. Nanomaterials 2021, 11, 3294. [Google Scholar] [PubMed]
  35. Ilg, P.; Kroger, M. Dynamics of interacting magnetic nanoparticles: Effective behavior from competition between Brownian and Neel relaxation. Phys. Chem. Chem. Phys. 2020, 22, 22244–22259. [Google Scholar] [PubMed]
Figure 1. Transmission Electron Microscopy images of nanopowders obtained via the evaporation of the carrier fluid from the FO sample showing (a) the nanoparticle ensemble and (b) the shape and size of individual nanoparticles; (c) the X-ray powder diffraction pattern and (d) size distribution of the nanoparticle ensemble.
Figure 1. Transmission Electron Microscopy images of nanopowders obtained via the evaporation of the carrier fluid from the FO sample showing (a) the nanoparticle ensemble and (b) the shape and size of individual nanoparticles; (c) the X-ray powder diffraction pattern and (d) size distribution of the nanoparticle ensemble.
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Figure 2. (a) The temperature dependence of the out-of-phase magnetic susceptibility measured on Fe3O4/Isopar M nanofluids at six different frequencies of the applied magnetic field: 10 Hz, 100 Hz, 500 Hz, 1000 Hz, 5000 Hz, and 10,000 Hz. (b) The temperature dependence of the out-of-phase magnetic susceptibility from Fe3O4 nanopowders obtained by evaporating the carrier fluid. The data was recorded at four different frequencies: 500 Hz, 1000 Hz, 5000 Hz, and 10,000 Hz. (c) The temperature dependence of the superspin relaxation time obtained from the χ″vs. T|f datasets in (a,b). The dashed lines are best fits to Equation (2) that allow the reduced energy barrier to magnetization reversal, EB/kB, and the interaction strength parameter, T0, to be determined.
Figure 2. (a) The temperature dependence of the out-of-phase magnetic susceptibility measured on Fe3O4/Isopar M nanofluids at six different frequencies of the applied magnetic field: 10 Hz, 100 Hz, 500 Hz, 1000 Hz, 5000 Hz, and 10,000 Hz. (b) The temperature dependence of the out-of-phase magnetic susceptibility from Fe3O4 nanopowders obtained by evaporating the carrier fluid. The data was recorded at four different frequencies: 500 Hz, 1000 Hz, 5000 Hz, and 10,000 Hz. (c) The temperature dependence of the superspin relaxation time obtained from the χ″vs. T|f datasets in (a,b). The dashed lines are best fits to Equation (2) that allow the reduced energy barrier to magnetization reversal, EB/kB, and the interaction strength parameter, T0, to be determined.
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Figure 3. (a) Temperature-resolved out-of-phase magnetic susceptibility recorded on the Co0.2Fe2.8O4/Isopar M ferrofluid at six different frequencies of the applied magnetic field: 10 Hz, 100 Hz, 500 Hz, 1000 Hz, 5000 Hz, and 10,000 Hz; (b) χ″vs. T|1000 Hz data revealing two magnetic events at temperatures Tp1 and Tp2.
Figure 3. (a) Temperature-resolved out-of-phase magnetic susceptibility recorded on the Co0.2Fe2.8O4/Isopar M ferrofluid at six different frequencies of the applied magnetic field: 10 Hz, 100 Hz, 500 Hz, 1000 Hz, 5000 Hz, and 10,000 Hz; (b) χ″vs. T|1000 Hz data revealing two magnetic events at temperatures Tp1 and Tp2.
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Figure 4. Temperature dependence of the superspin relaxation time, τ, (a) around Tp1 and (b) around Tp2 (circles), obtained from the frequency shift of the ac-susceptibility peaks observed in the Co0.2Fe2.8O4/Isopar M ferrofluid. In both cases the red lines are linear fits allowing the relative temperature variation per frequency decade Φ = ∆T/(T∙∆log(f)) to be determined.
Figure 4. Temperature dependence of the superspin relaxation time, τ, (a) around Tp1 and (b) around Tp2 (circles), obtained from the frequency shift of the ac-susceptibility peaks observed in the Co0.2Fe2.8O4/Isopar M ferrofluid. In both cases the red lines are linear fits allowing the relative temperature variation per frequency decade Φ = ∆T/(T∙∆log(f)) to be determined.
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Figure 5. (a) Ac-susceptibility curves from Co0.2Fe2.8O4 nanopowders obtained by evaporating the carrier fluid. The data were recorded at five different frequencies: 100 Hz, 500 Hz, 1000 Hz, 5000 Hz, and 10,000 Hz. The inset shows the shift in the χ″ peak temperature upon an increase in the measurement frequency. (b) The temperature dependence of the Néel relaxation time, τN (blue circles), obtained from data collected on the Co0.2Fe2.8O4 nanopowder, and the temperature dependence of the effective relaxation time, τeff (black disks), obtained from data collected on the Co0.2Fe2.8O4/Isopar M ferrofluid. In both cases the dashed lines are a guide for the eye.
Figure 5. (a) Ac-susceptibility curves from Co0.2Fe2.8O4 nanopowders obtained by evaporating the carrier fluid. The data were recorded at five different frequencies: 100 Hz, 500 Hz, 1000 Hz, 5000 Hz, and 10,000 Hz. The inset shows the shift in the χ″ peak temperature upon an increase in the measurement frequency. (b) The temperature dependence of the Néel relaxation time, τN (blue circles), obtained from data collected on the Co0.2Fe2.8O4 nanopowder, and the temperature dependence of the effective relaxation time, τeff (black disks), obtained from data collected on the Co0.2Fe2.8O4/Isopar M ferrofluid. In both cases the dashed lines are a guide for the eye.
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Figure 6. Individual contributions of Néel and Brown relaxation to the overall, effective relaxation time, τeff, measured around Tp2 on the Co0.2Fe2.8O4/Isopar M ferrofluid.
Figure 6. Individual contributions of Néel and Brown relaxation to the overall, effective relaxation time, τeff, measured around Tp2 on the Co0.2Fe2.8O4/Isopar M ferrofluid.
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Figure 7. Temperature dependence of the dominant (Néel) relaxation time, τN, obtained from the Tp2 peaks (circles). The dashed curve shows the best fit to the data of the Vogel–Fulcher law τ N T = τ 0 exp E B k B T T 0 .
Figure 7. Temperature dependence of the dominant (Néel) relaxation time, τN, obtained from the Tp2 peaks (circles). The dashed curve shows the best fit to the data of the Vogel–Fulcher law τ N T = τ 0 exp E B k B T T 0 .
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Figure 8. The temperature dependence of the superspin relaxation time obtained from the Tp1 peaks (circles). The dashed curve shows the best fit to the data of a hydrodynamic model exclusively based on the Brown mechanism τ B ( T ) = 3 η 0 V H k B T exp E k B T T 0 .
Figure 8. The temperature dependence of the superspin relaxation time obtained from the Tp1 peaks (circles). The dashed curve shows the best fit to the data of a hydrodynamic model exclusively based on the Brown mechanism τ B ( T ) = 3 η 0 V H k B T exp E k B T T 0 .
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Botez, C.E.; Price, A.D. Chemical Manipulation of the Collective Superspin Dynamics in Heat-Generating Superparamagnetic Fluids: An AC-Susceptibility Study. Crystals 2025, 15, 631. https://doi.org/10.3390/cryst15070631

AMA Style

Botez CE, Price AD. Chemical Manipulation of the Collective Superspin Dynamics in Heat-Generating Superparamagnetic Fluids: An AC-Susceptibility Study. Crystals. 2025; 15(7):631. https://doi.org/10.3390/cryst15070631

Chicago/Turabian Style

Botez, Cristian E., and Alex D. Price. 2025. "Chemical Manipulation of the Collective Superspin Dynamics in Heat-Generating Superparamagnetic Fluids: An AC-Susceptibility Study" Crystals 15, no. 7: 631. https://doi.org/10.3390/cryst15070631

APA Style

Botez, C. E., & Price, A. D. (2025). Chemical Manipulation of the Collective Superspin Dynamics in Heat-Generating Superparamagnetic Fluids: An AC-Susceptibility Study. Crystals, 15(7), 631. https://doi.org/10.3390/cryst15070631

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