Characteristics of Channel Eigenvalues and Mutual Coupling Effects for Holographic Reconfigurable Intelligent Surfaces
Abstract
:1. Introduction
1.1. Related Work
1.2. Contributions
- First, leveraging the block-Toeplitz with Toeplitz block (BTTB) matrix theory, we relate the eigenvalues of the spatial correlation matrix of the holographic RIS to the power spectrum of the spatial correlation function, and explain the counter-intuitive phenomenon of seemingly lower spatial DoF with growing numbers of elements in a holographic RIS observed in our prior work [22], which has not been addressed in the literature to our best knowledge. This analysis also helps with distinguishing the spatial DoF corresponding to the far field and near field of a holographic RIS.
- Second, we incorporate MC into the array response and spatial correlation matrix of the holographic RIS considering realistic element sizes, and demonstrate the potential of holographic RISs to reach an extraordinary array gain that is significantly higher than conventional antenna arrays with concrete examples. The results indicate that, different from the common belief that MC is always deleterious and should be avoided or compensated for, MC can be beneficial in boosting the array gain of holographic RISs even without sophisticated manipulation of excitation coefficients for the array elements.
- Furthermore, in-depth analysis and comparisons are performed regarding the MC effects on spatial correlation and the corresponding eigenvalue distributions for holographic RISs working in the transmitting (Tx) and receiving (Rx) modes, respectively, and with various element intervals as well as source and load impedance values. A metric named inter-element correlation/coupling strength indicator (ICSI) is proposed to measure the amount of inter-element correlation/coupling within an array. Results show that the effects of MC are quite discrepant for Tx and Rx arrays, and are also dependent upon element spacing, source and load impedance, among other factors, necessitating comprehensive design and implementation considerations.
1.3. Article Outline and Notation
2. System Model
2.1. Array Response and Spatial Correlation Excluding MC
2.2. Array Response and Spatial Correlation Including MC
3. Eigenvalue Distributions Without MC
3.1. Relationship between Eigenvalues and Power Spectrum
3.2. Analysis on Eigenvalues via Power Spectrum
4. Eigenvalue Distributions with MC
4.1. Coupling Matrix
- Step 1: Calculate the conventional (i.e., MC-unaware) array response vector in (5) based on the geometry and element topology of the RIS;
- Step 2: Obtain the spatial scattering function in (3) based on theoretical analysis or measurements;
- Step 3: Calculate the spatial correlation matrix that excludes MC according to (6);
- Step 4: Obtain the impedance matrix in (28) for the elements in a holographic RIS based on theoretical analysis or measurements;
- Step 6: Calculate the effective spatial correlation matrix according to (14) using from Step 3 and () from Step 5 for the Tx (Rx).
4.2. Inter-Element Correlation/Coupling Strength Indicator
4.3. Numerical Simulations Including MC
- When excluding MC, the most prominent inflection point of the eigenvalues in Figure 8 shifts to the left, i.e., the number of dominant eigenvalues decreases, as the element spacing shrinks, which is consistent with the observations for the larger holographic RIS aperture in Figure 3 and is well explained by the analysis in Section 3.
- In most cases, MC increases the effective spatial correlation at Tx, as indicated by the more rapidly-decaying eigenvalues compared with the no MC case in Figure 8 as well as the ICSI values in Table 1, and also elevates the largest eigenvalues for all element spacings studied. Furthermore, the correlation enhancement by MC diminishes as the array becomes denser, and MC may even have a decorrelation effect for sufficiently dense RISs. The reason lies in the fact that the product term in (30) approaches an identity matrix when ; meanwhile, for non-zero , it becomes a banded symmetric block-Toeplitz matrix that is sparse with non-zero entries confined to a diagonal band, and the off-diagonal entries are significantly smaller than the diagonal ones. In addition, the sparsity becomes more pronounced as the number of elements increases. Consequently, the behavior of in (30) gradually resembles that of a diagonal matrix as the element spacing dwindles, such that the effective spatial correlation becomes weaker for smaller element spacing when including MC.
- Different source impedance values exert a noticeable effect on the eigenvalue structure. Specifically, the effective spatial correlation is enhanced more substantially by perfect impedance match in contrast to , as demonstrated by the corresponding eigenvalue trends in Figure 8 and ICSI values in Table 1. This can be explained by similar reasons stated above: the properties of in (30) are farther apart from those of a diagonal matrix with a larger (i.e., , as opposed to ), thus higher correlation is induced. This is further verified by the ICSI for an even greater of in Table 1.
- In general, the eigenvalue magnitude increases with the density of the holographic RIS, which is consistent with the array gain enhancement shown by Figure 7.
- MC at the Rx reduces the magnitude of eigenvalues in most cases (except for the first few largest eigenvalues). Compared with the Tx coupling matrix in (30), the Rx coupling matrix in (32) is mainly different by a term , which causes the reduction of the eigenvalue magnitude after multiplying with the original spatial correlation matrix.
- As seen in Table 2, MC increases the effective spatial correlation at the Rx, which is similar to the Tx side. However, contrary to the observation for the Tx side, MC with a larger load impedance tends to have less correlation enhancement effect at Rx in general, as shown by Figure 9 and Table 2, since a larger load impedance renders the term more dominant in in (32) so that the coupling matrix is more like a diagonal matrix with smaller off-diagonal entries and hence weaker correlation.
- Rx MC increases the effective spatial DoF for element spacings less than half a wavelength, as implied by the most prominent inflection point of the eigenvalues which shifts to the right when considering MC. This is beneficial for spatial diversity and multistreaming.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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ICSI in (33) | Tx Spatial Correlation Matrix without MC | Tx Spatial Correlation Matrix with MC, | Tx Spatial Correlation Matrix with MC, | Tx Spatial Correlation Matrix with MC, |
---|---|---|---|---|
0.0495 | 0.0927 | 0.0752 | 0.1500 | |
0.0646 | 0.0750 | 0.0665 | 0.0974 | |
0.0702 | 0.0705 | 0.0671 | 0.0851 |
ICSI in (33) | Rx Spatial Correlation Matrix without MC | Rx Spatial Correlation Matrix with MC, | Rx Spatial Correlation Matrix with MC, | Rx Spatial Correlation Matrix with MC, |
---|---|---|---|---|
0.0495 | 0.0682 | 0.0787 | 0.0550 | |
0.0646 | 0.0867 | 0.1001 | 0.0698 | |
0.0702 | 0.1045 | 0.1213 | 0.0828 |
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Sun, S.; Tao, M. Characteristics of Channel Eigenvalues and Mutual Coupling Effects for Holographic Reconfigurable Intelligent Surfaces. Sensors 2022, 22, 5297. https://doi.org/10.3390/s22145297
Sun S, Tao M. Characteristics of Channel Eigenvalues and Mutual Coupling Effects for Holographic Reconfigurable Intelligent Surfaces. Sensors. 2022; 22(14):5297. https://doi.org/10.3390/s22145297
Chicago/Turabian StyleSun, Shu, and Meixia Tao. 2022. "Characteristics of Channel Eigenvalues and Mutual Coupling Effects for Holographic Reconfigurable Intelligent Surfaces" Sensors 22, no. 14: 5297. https://doi.org/10.3390/s22145297
APA StyleSun, S., & Tao, M. (2022). Characteristics of Channel Eigenvalues and Mutual Coupling Effects for Holographic Reconfigurable Intelligent Surfaces. Sensors, 22(14), 5297. https://doi.org/10.3390/s22145297