Hardware Efficient Massive MIMO Systems with Optimal Antenna Selection
Abstract
:1. Introduction
- We introduce an energy-efficient downlink antenna selection technique for mobile and static users. The proposed technique considers two-phase selection:
- Optimal number of BS antennas () at which the energy efficiency graph becomes maximum and starts declining, is determined as, . For this, the following assumptions are used:
- –
- A maximum number users a BS can support is assumed, and all users are to be at the cell edge distances.
- –
- All BS antennas and RF components are employed to determine total downlink power consumption according to (34).
- –
- The channel is assumed to be random, and we consider fixed SNR (), which is the average of least SNR values from several random channel generations for cell edge as in (18). A minimum SNR value is considered to accommodate the worst-case in which the channel is in deep fading.
- Next, user mobility-based selection is made. In this case, our selection algorithm incorporates the exhaustive searching method to select a group of elements with the best channel gain as in (21) and (23). The double section also reduces the number of search combinations and computational complexity. Again, since double selection using algorithms one and two minimizes the number of RF components directly associated with the antenna elements in the case of digital beamforming, the power consumption is substantially reduced and makes the system energy efficient.In comparison to prior methods, our proposed algorithm lowers the computational complexity of the transceiver system.
- We design a heuristic and simple formulation of antenna selection to evaluate the performance for mMIMO at sub-6 GHz and mmWave bands with CI and FS path-loss models.
- We introduce an energy-efficient and optimal DAC resolution algorithm for massive MIMO systems.
- Finally, by integrating our novel algorithms, the effect of selection on the EE was evaluated with low resolution and typical DAC.
2. System Model and Description
3. Propagation Model and Analysis
3.1. Channel Model
3.2. Array Steering Vector
3.3. Signal Model
3.4. Mobile Location and Positioning
3.5. Close-In (CI) Path Loss Model
4. Antenna Selection and Power Model
4.1. Antenna Selection
4.2. Capacity and Power Consumption Model
Algorithm 1: Initial access-based optimal number selection algorithm. |
Algorithm 2: Number and element selection after reduced distance. |
Algorithm 3: Proposed algorithm for low resolution DAC. |
- In algorithm one, the selection is made with dynamic or nondeterministic channel conditions. The input for selection is a pilot signal, and the number is identified based on the optimal value of the EE curve.
- In algorithm two, the maximum number of antennas is transformed to , which was obtained as a new number in algorithm one.
- After identifying the minimum received signal at the cell edge and an optimal number of antennas () using the initial access condition in algorithm one, the number of antennas is adaptively reduced. Instead of reducing the transmit power when users move from the cell edge area to the cell centre positions, in this case, the number of antennas is reduced, maintaining the minimum required SNR for connection quality. Then, after finding the average SNR, the number is changed from to .
- After identifying , the branches with best channel gains are selected from iteratively, and the DPC capacity is computed.
- Assuming fixed SNR at the cell edge, the minimum capacity is obtained and considered as a threshold capacity. Here, the free space propagation model is considered, and small-scale fading is ignored.
- Through randomly generated bits, the capacity of DAC is calculated and compared with the threshold.
- If the capacity of DAC, which was obtained with random bits, is greater than the threshold capacity, then DAC down resolution is done by iteratively decreasing the number of bits before analogue conversion is done. This reduction in bits ultimately reduces the operating power consumption of DAC according to (14). This DAC power directly affects the total system power consumption according to (37).
- Finally, the EE is computed as a function of the capacity and total power with low resolution. Throughout the evaluation process in this paper, the following parameters in Table 2 are used.
5. Results and Analysis
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
AoA | Angle of Arrival |
AoD | Angle of Departure |
BS | Base Station |
CI | Close In |
DAC | Digital to Analogue Conversion |
EE | Energy Efficiency |
mMIMO | massive Multiple Input Multiple Output |
RF | Radio Frequency |
SE | Spectral Efficiency |
SNR | Signal-to-Noise Ratio |
ZoD | Azimuth Angle of Departure |
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Algorithm 2 | Algorithm 1 + 2 | Algorithm 1 + 2 + 3 |
---|---|---|
Parameter | Description | Value |
---|---|---|
Static power of DAC | ||
Dynamic power of DAC | ||
B | Channel bandwidth | 40 MHz |
Cell edge distance | 200 m | |
Minimum distance | 3 m | |
f | Operating frequency | 38 GHz |
Total average SNR at the cell edge | ||
c | Speed of light | m/s |
Path loss at cell edge distance | ||
Random bit generation time interval | 5 ms | |
Amplifier power | 0.05 mW | |
Mixer power | 0.04 mW | |
Local oscillator power | 0.01 mW | |
Large-scale signal fluctuations due to the CI pathloss model | 4.4 dB | |
Low pass filter power | 0.012 mW | |
Hybrid with buffer power | 0.033 mW |
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Aredo, S.C.; Negash, Y.; Marye, Y.W.; Kassa, H.B.; Kornegay, K.T.; Diba, F.D. Hardware Efficient Massive MIMO Systems with Optimal Antenna Selection. Sensors 2022, 22, 1743. https://doi.org/10.3390/s22051743
Aredo SC, Negash Y, Marye YW, Kassa HB, Kornegay KT, Diba FD. Hardware Efficient Massive MIMO Systems with Optimal Antenna Selection. Sensors. 2022; 22(5):1743. https://doi.org/10.3390/s22051743
Chicago/Turabian StyleAredo, Shenko Chura, Yalemzewd Negash, Yihenew Wondie Marye, Hailu Belay Kassa, Kevin T. Kornegay, and Feyisa Debo Diba. 2022. "Hardware Efficient Massive MIMO Systems with Optimal Antenna Selection" Sensors 22, no. 5: 1743. https://doi.org/10.3390/s22051743
APA StyleAredo, S. C., Negash, Y., Marye, Y. W., Kassa, H. B., Kornegay, K. T., & Diba, F. D. (2022). Hardware Efficient Massive MIMO Systems with Optimal Antenna Selection. Sensors, 22(5), 1743. https://doi.org/10.3390/s22051743