Arcangelo
Celeste
*a,
Valeria
Lombardi
abc,
Marta
Mirolo
d,
Yan
Lu
e,
Rafal E.
Dunin-Borkowski
e,
Eric
Hirschmann
f,
Maik
Butterling
f,
Macie O.
Liedke
f,
Andreas
Wagner
f,
Antonino
Santoni
g,
Priscilla
Reale
bg,
Maria Assunta
Navarra
a,
Sergio
Brutti
a and
Laura
Silvestri
*b
aDepartment of Chemistry, Sapienza University of Rome, P.le Aldo Moro 5, 00185, Rome, Italy. E-mail: arcangelo.celeste@uniroma1.it
bDepartment of Energy Technologies and Renewable Sources, ENEA C. R. Casaccia, via Anguillarese 301, 00123, Rome, Italy. E-mail: laura.silvestri@enea.it
cMaterial Research Institute (IMFAA), Aalen University, Beethovenstraße 1, 73430, Aalen, Germany
dESRF – The European Synchrotron, 71 Avenue des Martyrs, 38000 Grenoble, France
eErnst Ruska-Centre for Microscopy and Spectroscopy with Electrons, Forschungszentrum Jülich GmbH, Wilhelm-Johnen-Straße, 52428, Jülich, Germany
fHelmholtz-Zentrum Dresden-Rossendorf, Bautzner Landstraße 400, 01328, Dresden, Germany
gNuclear Department, ENEA C. R. Frascati, via E.Fermi 45, 00044 Frascati, Italy
First published on 27th November 2025
This study highlights a novel perspective on the role of defectivity in governing the electrochemical performance of cobalt-free lithium-rich layered oxides (LRLOs), specifically Li1.24Mn0.62Ni0.14O2. By varying the solvent environment during solvothermal synthesis, using binary mixtures of water and ethanol, we demonstrate that the nature of the solvent profoundly influences defect formation within the material. These solvent-dependent defect structures emerge as the key drivers of electrochemical behavior, rather than just crystallinity or composition. Through advanced characterization techniques including synchrotron X-ray diffraction, electron diffraction, transmission electron microscopy, and positron annihilation lifetime spectroscopy, we reveal how each solvent system tailors specific microstructural and defect profiles. Despite identical nominal compositions, these variations in defectivity lead to remarkable different electrochemical performances: higher ethanol content promotes small vacancies and electronic defects, boosting initial capacity but reducing stability, while lower ethanol fractions favour larger vacancies and stacking faults, yielding more balanced performance. Our findings underscore the critical role of solvent selection in tuning defect chemistry, offering a new pathway for optimizing LRLO materials by intentionally controlling defect landscapes during synthesis.
The performance of LIBs is primarily constrained by the cathode materials, as they play a critical role in determining the energy and power density, cycle life, and overall cost of the battery system.4–6 Currently, Li-rich layered oxide materials (LRLOs) stand out for their specific capacity (> 250 mAh g−1), high working potential (3.6 V vs. Li+/Li), energy density (900 Wh kg−1), and low cost.7,8 The electrochemical performance of lithium-rich layered oxides (LRLOs) is significantly influenced by the architecture of the cathode active material.9 However, accurately characterizing this structure remains challenging, further complicated by the intricate behaviour exhibited during battery cycling, ultimately hindering efforts to optimize LRLOs for better performance.10–12 Regardless of the pristine structural configuration, these materials exhibit instability during cycling due to the oxygen redox reactions, which are however crucial for achieving their high capacity. Specifically, the layered architecture of the LRLOs undergoes transformation into a spinel-like phase. This transition is linked to multiple adverse effects that currently hinder their application in commercial battery systems.13
To tackle the existing challenges associated with lithium-rich layered oxides, researchers investigated a range of synthesis techniques. These methods influence various material characteristics, including phase crystallinity, purity, particle size, morphology, and ultimately, electrochemical performance.8,14–17 The synthetic approach can significantly impact the scalability and reproducibility of production processes. Within this framework, the solvothermal method stands out as a highly effective technique for the synthesis of lithium-rich layered oxides (LRLOs), providing the ability to precisely control crystal growth.18–20 This approach enables the customization of material properties by adjusting various reaction parameters, including reactant concentrations, types of solvents, reaction temperature, and synthesis duration.21 As an example, Shao et al. reported a LRLO material synthesized via a multi-solvent solvothermal method, showing how the solvent plays a crucial role in the precipitation rate of the transition metals (TMs) and obtaining a 3D porous structure and uniform particle size.22 Moreover, Yan et al. showed that the chemical–physical properties of the final material are also strongly influenced by the precipitators.23
In this study, we illustrate that modifications to the crystallization environment significantly influence the crystal structures and defect formations (including vacancies, antisites, small voids, large voids, stacking faults, and twin boundaries) within lithium-rich layered oxides (LRLOs). These alterations consequently affect the reversibility of lithium-ion intercalation/deintercalation into the cathode structure. To investigate this, we examine the impact of various crystallization media, specifically five different liquid mixtures of ethanol and water at varying volume ratios, on the structural, morphological, and electrochemical properties of a cobalt-free Li-rich layered oxide, namely Li1.24Mn0.62Ni0.14O2, synthesized via a solvothermal method.24 Our findings reveal that the crystallization medium critically governs the defect chemistry and, consequently, the electrochemical response of Li1.24Mn0.62Ni0.14O2. For these solvent mixtures, samples prepared with higher ethanol content tend to develop a higher density of small vacancy clusters and more pronounced electronic defects, which correlate with enhanced initial capacity but lower coulombic efficiency and reduced capacity retention. Conversely, samples synthesized with a lower amount of ethanol feature favourable surface chemistry and a defect structure that supports balanced electrochemical performance, leading to good capacity, improved efficiency, and superior cycling stability.
:
EtOH = 1
:
0, 2
:
1, 1
:
1, 1
:
2 and 0
:
1 v/v. Before solvothermal treatment, two solutions were prepared as follows:
• Sol. A: prepared by dissolving into the reaction solvent a mixture of lithium (with an additional 5% atomic excess to compensate for any evaporative losses during the thermal treatment at high temperature), nickel and manganese acetates in stoichiometric amounts.
• Sol. B: 1 M solution of oxalic acid (prepared using the same solvent of Sol. A), acting as a chelating and precipitant agent. The amount of oxalic acid was chosen in order to have a molar ratio of Ox.Ac.
:
(Mn + Ni) of 1
:
1.5.
The two solutions were properly mixed and poured in a Teflon-lined autoclave for the solvothermal synthesis, carried out at 180 °C for 12 h. At the end of solvothermal treatment the reactor was cooled down to room temperature, then the obtained product was recovered, and the solvent evaporated. The as-obtained reaction precursor was dried overnight in an oven at 80 °C under vacuum and successively subjected to the final thermal treatment in a muffle furnace in an air atmosphere. The thermal procedure consisted of a first step at 450 °C for 2 h (10 °C min−1), and a second step at 900 °C for 12 h (10 °C min−1).
High-resolution X-ray powder diffraction data were acquired at the ID22 beamline of the ESRF synchrotron radiation source (Grenoble, France), using an energy of 35 keV (corresponding to a wavelength of 0.354 Å), and the setup equipped with crystal analyzers, with a 2θ resolution of 0.003°.25,26 Diffraction patterns were analysed by Rietveld refinement using the software FAULTS.27
Attenuated total reflectance Fourier transform infrared spectroscopy measurements (ATR-FTIR) were performed with an Agilent Cary 630 instrument.
Raman spectroscopy measurements were carried out on a Dilor Labram instrument equipped with a He–Ne laser source at 632.7 nm and a CCD cooled detector.
X-Ray photoemission spectra (XPS) were acquired using a PSP TSX-400 non-monochromatized photon source operating at 1253.6 eV (Mg Kα) and a PREVAC EA15 electron spectrometer in an ultra-high-vacuum chamber with a base pressure of about 5 × 10−10 mbar. Core-level photoemission data were recorded at 50 eV pass energy and 0.1 eV step. The spectra were fitted using the CASA XPS software with a Shirley-type background and pseudo-Voigt line-shapes.
A Zeiss Auriga field-emission high-resolution scanning electron microscope equipped with an energy-dispersive X-ray (EDX) spectroscopy system was used to acquire SEM micrographs. Precursor SEM micrographs were acquired using a Phenom ProX Desktop SEM.
Variable energy positron annihilation lifetime spectroscopy (VEPALS) measurements were conducted at the Mono-energetic Positron Source (MePS) beamline at HZDR, Germany.28 A CeBr3 scintillator detector coupled to a Hamamatsu R13089-100 photomultiplier tube (PMT) was utilized for gamma photon detection. The signals were processed using the Teledyne SP Devices ADQ14DC-2X digitizer (14-bit vertical resolution and 2 GS per s horizontal resolution).29 The overall time resolution of the measurement system is ≈0.250 ns and all spectra contained at least 107 counts. A typical lifetime spectrum N(t), the absolute value of the time derivative of the positron decay spectrum, is described by
The microstructure and selected area electron diffraction (SAED) analyses of the samples were performed on an FEI Titan 80–300 TEM with an accelerating voltage of 300 kV.
:
dimethyl carbonate (DMC) = 1
:
1 v/v) as the aprotic electrolyte-soaked Whatman GF/D separator.
In this study, we synthesized five distinct samples, each labelled according to the respective water (W) and ethanol (E) content in the solvothermal reaction bath, as summarized in Table 1. The compositions of all the samples after the solvothermal synthesis and the high temperature annealing have been analysed using ICP-OES, and the results closely match the expected nominal stoichiometric values calculated from the reagents (Table 1).
| Sample name | Reaction solvent v/v ratio | Experimental composition (ICP-OES) | |||
|---|---|---|---|---|---|
| Water | Ethanol | Li | Mn | Ni | |
| W1 | 1 | 0 | 1.267 ± 0.005 | 0.618 ± 0.001 | 0.115 ± 0.001 |
| W2E1 | 2 | 1 | 1.262 ± 0.002 | 0.631 ± 0.001 | 0.107 ± 0.001 |
| W1E1 | 1 | 1 | 1.262 ± 0.002 | 0.624 ± 0.005 | 0.114 ± 0.001 |
| W1E2 | 1 | 2 | 1.281 ± 0.001 | 0.618 ± 0.004 | 0.101 ± 0.003 |
| E1 | 0 | 1 | 1.288 ± 0.005 | 0.603 ± 0.001 | 0.109 ± 0.004 |
![]() | ||
| Fig. 1 (a) Diffraction patterns acquired with a Rigaku SmartLab, (b) ATR-FTIR spectra and (c) SEM images of the precursor samples, recovered at the end of solvothermal treatment. | ||
As ethanol concentration in the reaction environment increases, the diffraction patterns evolve. In the case of the P-E1 sample, the diffraction peaks can be attributed to anhydrous MnC2O4, anhydrous NiC2O4, and Li2C2O4. The diffractograms between the two extremes exhibit intermediate features, with a transition marked by the disappearance of the peak around 18°, which is primarily associated with MnC2O4·2H2O, and the appearance of new peaks around 24°, corresponding to NiC2O4. The ATR-FTIR spectra confirm the XRD findings (Fig. 1b). Strong peaks in the range of 1800 to 1100 cm−1 are observed, attributed to the asymmetric stretching νas(C–O), symmetric stretching νs(C–O), and bending δ(OCO) vibrations of all metal oxalates. Although there are slight changes in the relative intensities of these peaks, they remain evident throughout the series. In the P-W1 sample, the vibrational analysis additionally reveals a pronounced and well-defined stretching vibration of water ν(OH) around 3300 cm−1, whose intensity decreases for the samples where the water is partially or completely replaced with ethanol, reinforcing the observations made from the XRD patterns. Furthermore, significant differences in the morphologies of the precursors are observed, as shown in Fig. 1c. The P-W1 sample displays irregular particles with no preferential growth. As the ethanol content in the reaction solvent increases, rod-like structures become increasingly prominent, especially in the P-W1E2 sample. In contrast, the precursor obtained in pure ethanol exhibits particles with flake morphology. These observations underline the impact of solvent variation on the solubility of the reactants, metal solvation and the subsequent nucleation and crystal growth processes.37 Indeed, the dielectric constant, excess volume, and vapor pressure of ethanol/water mixtures can provide valuable insights into the interactions occurring during the synthesis of the precursors.38,39 The dielectric constant of a solvent influences the solvation dynamics and the interactions between the metal precursors and the solvent molecules. As reported in the literature,40–42 the dielectric constant of ethanol is significantly lower than that of water, which affects the ionization and solvation of the ions during the synthesis process. This difference can lead to variations in the structural properties of the precursors, as the solvation environment directly impacts the nucleation and growth of the crystalline phases. Moreover, the mixtures exhibit pronounced deviations from ideality with respect to the pure solvents, water and ethanol. This is clearly reflected in the excess volume of ethanol–water mixtures, which serves as a reliable indicator of the non-ideal intermolecular interactions.42,43 Negative excess volumes suggest strong interactions between ethanol and water molecules, more than in the pure solvent, which can enhance the precipitation rate of transition metals during solvothermal synthesis. This can result in differences in the morphology and particle size of the precursors, as observed in the various solvent compositions used in the study, as well as in the different micro-defectivity of the products (see below). In the solvothermal method, the vapor pressure of the solvent mixture also plays a crucial role in the synthesis process. Higher pressures can accelerate crystal growth along preferential directions due to changes in kinetic conditions.44 The experimental data indicate that the vapor pressure of the ethanol/water mixture decreases with increasing ethanol concentration, which can influence the crystallization kinetics and the final properties of the Li-rich layered oxides.45 In addition, consistent with previous studies on layered oxides,46 the solvent environment and oxygen chemical potential influence surface energies and defect formation, further modulating precursor morphology. These combined effects of solvent composition may help to explain the observed variations in precursor morphology and defectivity, underscoring the critical role of solvent choice in tailoring material synthesis outcomes. Furthermore, the non-ideal interactions between water and ethanol solvents lead to unpredictable precursors in terms of morphology and defectivity.37 It should be noted that no linear correlation is expected between the investigated parameters and the solvent composition. This is because the chemical–physical properties of mixed solvents differ significantly from those of the corresponding pure solvents. Consequently, the behaviour of the system cannot be interpreted as a simple interpolation of the pure solvent data.
![]() | ||
| Fig. 2 Comparison of (a) diffraction patterns acquired at the ESRF synchrotron radiation source using an energy of 35 keV and (b) stacking faults and Li-TM percentages. | ||
Further structural characterization was carried out with TEM and Fig. 3 shows the cryptographic microstructure of all the samples. Fig. 3a–e show the bright field TEM images of W1, W2E1, W1E1, W1E2, and E1, respectively. The SAED patterns of the circle areas are displayed in the lower right corner. Fig. 3f–j show the corresponding high-resolution TEM (HRTEM) images from the selected grains. Same as FAULTS analysis, frequent stacking faults (SFs) are shown in Fig. 3a, c and e and correspondingly in Fig. 3f, h and j. In the upper panels, low magnification TEM images display parallel line contrast which exhibit SF contrasts, and the corresponding SAED patterns demonstrate typical SF features. In addition to SFs, coincidence boundaries and twins were found in sample W2E1, as shown in Fig. 3b and g. The SAED pattern includes two boundaries, among which grain 1 (G1) and G2 are twins, and G2 and G3 share the same plane as the boundary. The red arrows indicate the other coincidence boundaries. Such boundaries are planar defects which are similar to SFs. Fig. 3g displays the HRTEM images of G1 and G2. The Fourier transform of G1 and G2 is consistent with SAED, showing a twin boundary. TEM characterization of the sample of W1E2 is shown in Fig. 3d and i. In particular, the crystal structure is revealed by the HRTEM image and SAED pattern taken from the circled area, shown in Fig. 3d. The indexes in SAED indicated by yellow and blue labels present zone axes of [1
2] and [112] of the C2/m Li2MnO3 prototype, respectively. The HRTEM image is taken along the [1
2] zone axis, and the interplanar spacing of (131) and (
01) is 2.00 Å and 2.39 Å, respectively. The corresponding Fourier transform is shown in the lower right which is consistent with the yellow labels in the SAED pattern. Positron lifetime spectroscopy was employed to investigate the vacancy-related defects in the five samples: W1, W2E1, W1E1, W1E2, and E1 (see Fig. 4). The measurements revealed up to three major lifetime components (Tau1–Tau2–Tau3) and two additional long-lifetime components (Tau4–Tau5), with corresponding intensity values (Int1–Int2–Int3–Int4–Int5). Due to their minimal contribution to the total signal (Int4 + Int5 < 2%) and their likely association with surface effects, Tau4 and Tau5 are excluded from further discussion (Fig. S4a and b).
All observed lifetimes exhibited only minimal dependency on the implantation profile, indicating that the defect structures are relatively stable across the investigated energy range. Tau1 was observed exclusively in samples W1 (94 ps), E1 (75 ps), and W2E1 (75 ps), with an intensity of ∼10% (Fig. S4c). This suggests a reduced bulk lifetime, which is indicative of the onset of defect saturation. To validate this observation, ATSUP GC scheme simulations were conducted, predicting a bulk lifetime of 153 ps for a defect-free material. However, this value could not be consistently fitted across the entire sample set, reinforcing the notion of defect-related modifications in the bulk material. A consistent Tau2 value of approximately 220 ps was found in all samples. According to simulation results, this lifetime corresponds to the presence of small vacancy clusters consisting of 3 to 4 missing atoms. Tau3 was found at approximately 415 ps across all samples, which is characteristic of large vacancy clusters or voids containing more than 15 missing atoms. Despite the uniformity in lifetime, the intensity of this component (Int3) varied significantly among the samples, reflecting differences in defect concentration and structural homogeneity. Unlike the positron lifetime values, the intensity of the observed lifetimes exhibited notable variations among the different samples and implantation energies. The two different vacancy clusters correspond to the lack of small groups of bonded atoms, with a different void size, in the material structure and likely originate from an uneven crystallization of the lattices during the synthesis. Under the assumption of electroneutral voids, one may speculate that the smallest vacancies (i.e., 3–4 atoms) possibly imply the lack of Li2O, NiO or MnO2 units, with +1, +2, +4 and −2 being the mean oxidation states of Li, Ni, Mn, and O, respectively. Under the same assumption, the large voids (i.e., >15 atoms) may be explained by the missing crystallization within the structure of approximately one whole unit cell (i.e., 12 atoms). Considering the pure solvents, the intensity of larger voids (Int3) decreases from the surface to the bulk for both, but the sample synthesized in ethanol shows a bigger intensity across all the energies (see Fig. 4), again likely due to the faster nucleation compared to water. In contrast, the intensity of smaller voids (Int2) is comparable. This suggests that the ethanol solvent promoted the formation of larger vacancy clusters, potentially due to differences in reaction kinetics and crystallization during synthesis. For the mixed solvent systems, the behaviour was more complex, and the intensity trend of large vacancy-clusters followed the order: W1E2 < W1E1 < W2E1, as reported in Fig. 4. Sample W1E2 exhibited the lowest intensity for large vacancy clusters (Int3), suggesting a more homogeneous structure compared to the other samples. In contrast, W2E1 showed the highest intensity for large vacancy clusters, indicating a higher concentration of large voids or defects. The rich complexity of the vacancy clusters in the various samples can be outlined by reporting the trend of the ratio between the intensities of the Int3 and Int2 components as a function of the implantation energies as shown in Fig. 4. When this ratio is above 1, the concentration of the large voids (∼415 ps, component 3) is larger than the concentration of the small vacancy clusters (∼220 ps, component 2) and vice versa in the case Int3/Int2 < 1. Overall, the Int3/Int2 ratio suggests remarkable structural differences in the defectivities among samples. In particular, W1E2 shows at any implantation energy (i.e., implantation depth) the least number of large voids, and thus the largest amount of small cluster vacancies, whereas W2E1 exhibits the highest concentration of large voids and the smallest of the small cluster vacancies. These findings confirm the trend observed with the XRD analysis, in particular with the stacking faults. XPS analysis was performed to characterize the surface of the different layered oxides prepared in the different solvothermal environments.
Fig. 5a and b show the XPS core-level spectrum of Ni 2p3/2 and Mn 2p3/2, respectively. The binding energies are corrected with the C 1s C–C(C–H) peak set at 284.8 eV. The interpretation and quantification of the Ni 2p3/2 signals are known to carry a high degree of uncertainty due to the complex, extended multiplet, shake-up and plasmon loss structures, further confounded by the overlap between various chemical states. Due to the broad shape of the peak and the absence of visible structures, a simple fitting strategy has been adopted in this work to individuate the peak position, by using an asymmetric line-shape and including the plasmon peak in the fitting procedure. For all the samples, the position of the Ni 2p3/2 peak is around 855.1 ± 0.1 eV, a binding energy in good agreement with D. P. Abraham47 and coherent with Ni(II). The Mn 2p3/2 signals are in the 642–644 eV region of binding energies. To fit them, multiple splitting of multiple oxidation states has been taken in consideration. Mn(III) and Mn(IV) fit parameters as proposed by Ilton48 were fixed for individual oxidation states but allowed to shift in energies and intensities as packets relative to other oxidation states. An allowance for relative BE shifts acknowledges the possibility that the ionicity/covalency and Madelung potential are different in multivalent compared to monovalent minerals, or in different structures. The best fit to the layered Mn 2p3/2 spectrum yielded almost 80% Mn(IV) and 20% Mn(III), for an average oxidation state of 3.8, with small variations between samples (i.e. W1 +3.84, W2E1 +3.85, W1E1 +3.80, W1E2 +3.75, E1 +3.79, for the mean oxidation state of the Mn ions in the LRLO structures). Generally, a lower oxidation state than 4 for Mn indicates a more defective surface. In the case of pure solvents, the E1 sample shows a lower oxidation state compared to W1, suggesting a more defective material, which is consistent with findings from other techniques. Similarly, for the mixtures, a higher concentration of defects correlates with a lower Mn oxidation state. The variability of relative amount of each of these defects for different synthetic conditions confirms the remarkable impact of the solvothermal media on the precipitation thermodynamics/kinetics and therefore on the periodicity/crystallinity of the resulting lattice.
Although the XPS spectra of the samples are very similar with only subtle differences, all fitting parameters are provided in Table S3 of the SI. The small variations fall within typical experimental uncertainty and agree with literature values,48 indicating subtle changes in the local chemical environment rather than significant oxidation state shifts. The relatively broad peaks arise from the higher pass energy employed to improve signal intensity.
These results were also confirmed by analysing the behaviour of the samples at elevated C-rate. As shown in Fig. 7a, W1E2 retains a high capacity of about 160 mAh g−1 at 2C, while for the other samples, it ranges between 100 mAh g−1 for W1E1 and 120 mAh g−1 for W2E1 (Fig. 7b).
The cycling stability at 1C is illustrated in Fig. 7c and Fig. S7, where the trend is similar to that already observed at C/10. The initial specific capacity increases progressively from W1, at approximately 120 mAh g−1, to W1E2, which reaches 170 mAh g−1. However, while W1 and E1 retain 99 and 102 mAh g−1 after 250 cycles, corresponding to capacity retentions of 82% and 85% (Fig. 7d), respectively, W1E2 experiences significant fading, retaining only 108 mAh g−1 (67% of its initial capacity). In contrast, W1E1 and W2E1 achieve a more favourable balance, retaining 121 and 120 mAh g−1 after 250 cycles (Fig. S8), which corresponds to capacity retentions of 81% and 84%, respectively. Coulombic efficiency (CE) further emphasizes the differences among the electrodes (Fig. S9). W1E1 and W2E1 sustain efficiencies above 99.5% throughout cycling, indicative of highly reversible Li+ insertion/de-insertion and minimal parasitic reactions. W1 and E1 display slightly lower CE values, just below 99.5%, whereas W1E2 exhibits a gradual decline to approximately 99% by the 250th cycle. Overall, W1E2 exhibits the highest initial capacity and superior rate performance, which can be attributed to its relatively low stacking fault density, facilitating Li-ion diffusion, and pronounced Li-TM mixing. However, these same structural features, together with the same defects can create highly reactive sites that promote undesirable side reactions, such as the decomposition of the electrolyte (with the observed reduced coulombic efficiency), which consumes active lithium ions and reduces capacity over time. Furthermore, defects (often oxygen vacancies) can lead to the dissolution of transition metal ions into the electrolyte, further degrading the material and causing capacity fade and reduce lattice stability during prolonged cycling. Consequently, W1E2 exhibits pronounced capacity fading and a gradual decrease in coulombic efficiency after 250 cycles. In conclusion, galvanostatic cycling tests indicate that the electrochemical behaviour of the samples is closely linked to structural defectivity and surface chemistry, both of which are influenced by the synthesis solvent.
The solvent composition is a key factor in shaping the morphology and microstructure of the solvothermal precursors, primarily through its impact on ion solvation and nucleation kinetics. However, it is important to note that although the solvent influences both the precursor morphology and defect formation in the final products, these processes occur through different mechanisms. The high-temperature annealing at 900 °C induces significant structural and morphological changes, causing the original shape of the precursors to be lost. Instead, the solvent's role during the annealing process affects defect formation, which ultimately results in variations in the stacking fault density observed in the final cathode materials.
Although a layered phase is formed consistently across all conditions, structural characterization via XRD, HR-TEM, and PALS reveals that variations in the water-to-ethanol ratio significantly affect microstructural features and defect density. These structural differences translate directly into electrochemical behaviour, as summarized in Fig. S10. For instance, the ethanol solvent promotes the formation of stacking faults and vacancy clusters, while the binary water–ethanol mixture at a 1
:
2 volume ratio (W1E2) yields the smallest stacking fault density and a marked reduction in large defects, suggesting an increased concentration of smaller defects. Galvanostatic cycling in lithium half-cells shows that the W1E2 sample delivers the highest initial discharge capacity (330 mAh g−1 at C/10), likely due to enhanced participation of oxygen redox processes. However, it also showed lower coulombic efficiency and faster capacity fading during cycling, indicating a correlation between redox activation and structural instability. Surface analysis via XPS indicates more stable surface chemistries, marked by higher transition metal oxidation states. W2E1 exhibits better cycling performance, having a specific capacity of more than 200 mAh g−1 at C/10 and a capacity retention of 84% at 1C after 250 cycles. These results highlight the impact of both bulk and surface structures on electrochemical functionality and demonstrate that synthesis parameters critically dictate defect formation and, consequently, the redox activity and cycling stability in Co-free LRLOs. Although establishing a direct correlation between structural features and electrochemical functionality remains challenging due to the intricate interdependence of bulk and surface structures, our findings offer mechanistic insights that advance the rational design of next-generation cobalt-free cathodes.
The diffraction datasets in Fig. 2 analyzed during the current study can be found in the ESRF Data Portal at https://doi.org/10.15151/ESRF-ES-1424924468.
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