A Survey on MIMO-OFDM Systems: Review of Recent Trends
Abstract
:1. Introduction
2. Overview of Recent Radio Trends
2.1. Cognitive Radio Networks
2.2. System-Defined Radio Paradigm (SDR)
2.3. MIMO Systems
3. State-of-the-Art MIMO-SDR Systems
3.1. MIMO Systems
3.1.1. Educational Platforms and Testbeds
Massive MIMO Systems
- It allows the amount of data supported in both the uplink and the downlink to be 384 Gbits/s.
- The synchronization is performed with an external signal derived from 8 Octo-Clock devices (7 Octo-Clock devices commanded with a master Octo-Clock). However, some phase tight distortion appears during the transmission tests performed between the base station radio frequency channels; this is due to the receiver channels [24].
- The system could be extended up to 128 antennas.
- A planar T-shaped antenna array with 160 dual polarized elements was used. Moreover, five USRP-RIO-type 2953Rs are deployed to emulate the receiving user equipment with a GPS reference signal connection capability.
Small-Scale MIMO Systems
3.1.2. Hardware and Architecture Innovations
Distributed MIMO
- Single source transmission: a source (S), generating the signals to be transmitted, is connected via wireless or a physical interface to the non-collocated transmitting antennas. The signal is received, in the other side, by another set of antennas and transmitted to a receiving point (R) that gathers all the information. The signaling channel interfaces are necessary to set up the MIMO communications. Please refer to Figure 5a.
- Cooperative transmission: in this case, each transmitting antenna represents a signal source by itself. The transmitting and receiving antennas can cooperate, using signaling channel information, without the need of an intermediate point. Please refer to Figure 5b.
Fiber-Based Systems
GPU Implementations
MIMO Antennas
- Operability in multi-band frequencies
- Polarization diversity
- Low size and cost with high performance.
3.2. MIMO-SDR Waveforms
3.2.1. MIMO Waveforms Analysis
3.2.2. OFDM/Cyclic Prefix OFDM (CP-OFDM) Theory Aspects
3.2.3. MIMO-OFDM Variants
- GFDM
- UF-OFDM
- FBMC-OQAM
3.2.4. MIMO-OFDM Variants Enhancement Studies
3.3. MIMO-OFDM Block Enhancements
3.3.1. Channel Estimation
- Pilot-aided channel estimation algorithms
- Blind and semi-blind channel estimation algorithms
- Decision-directed channel estimation algorithms
3.3.2. Equalization
4. Conclusions
- -
- The part on implementation is more limited to research testbeds that apply traditional channel estimation algorithms.
- -
- The most deployed channel estimation algorithms are complex and have a lower level of mitigation of ICI.
- -
- The equalization algorithms are quite limited in terms of performance.
4.1. Challenges
4.2. Opportunities
- -
- The machine learning algorithm, as well as the empirical mode decomposition-based methods, draws interesting results for the channel estimating problem.
- -
- The equalization techniques based on the wavelet decomposition technique are interesting.
- -
- OFDM waveform enhanced schema.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Year | Details Paper Reference | Special Focus/General Vision of the Paper | MIMO-SDR System Research Axes | |
---|---|---|---|---|
Simple overview | 2019 | Delson and Jose [2] | 5G standards, specifications, and massive MIMO testbed, including transceiver design models using QAM modulation scheme |
|
2017 | Shafi, et al. [3] | 5G standards, trials, challenges, deployment, and practice |
| |
2014 | Banelli, et al. [4] | Modulation formats and waveforms for 5G networks |
| |
2014 | Wang, et al. [5] | Key technologies for 5G wireless communications |
| |
2012 | Amin and Trapasiya [6] | Space–time coding scheme for MIMO system |
| |
Deep review | 2022 | Our paper | MIMO-SDR OFDM systems |
|
2021 | Chen, et al. [7] | Massive MIMO systems |
| |
2019 | Mokhtari, et al. [8] | MIMO systems in presence of channel and hardware impairments |
| |
2019 | Ijiga, et al. [9] | Channel estimation algorithms for 5G candidate waveforms |
| |
2019 | Wen, et al. [10] | 5G massive MIMO localization |
| |
2015 | Zheng, et al. [11] | Large-scale MIMO Systems |
| |
2015 | Yang and Hanzo [12] | MIMO Detection |
| |
2008 | Paul and Bhattacharjee [13] | MIMO channel modelling | ||
2002 | Yu and Ottersten [14] | Models for MIMO propagation channels | ||
2018 | Fatema, et al. [15] | Massive MIMO linear precoding techniques for single- and multi-cell systems | ||
2008 | Garcıa-Naya, González-López and Castedo [1] | Overview of MIMO testbed technology |
|
Testbed 1 | Year | Tx × Rx 2 | Hardware Implementation | Software 3 | BW 4 | Operating Frequency | Waveform | |
---|---|---|---|---|---|---|---|---|
DSP | FPGA | |||||||
Zamfirescu, et al. [28] | 2019 | 2 × 2/3 × 3 | ___ |
| GNU radio | ___ | 2 GHz | OFDM |
Ribeiro and Gameiro [29] | 2017 | 2 × 2 | DSP48 |
| MATLAB | Max61.44 MHz | 400 MHz–4 GHz |
|
Vielva, et al. [30] | 2010 | 4 × 4 | MAX2829 single chip RF transceiver | MATLAB | Up to 40 MHz | 2.412–2.472 GHz and 5.15–5.35 GHz | OFDM 802.11 WLAN | |
GTEC [31] | 2010 | 2 × 2/4 × 4 | Texas Instruments TMS320C6416 DSP running at 600 MHz | Xilinx Virtex II XC2V1000–6 | 3L Diamond software | 20 MHz | 2.4 GHz | 16 QAM modulation |
2 × 3 | 5.2 GHz | |||||||
Bates, et al. [32] | 2008 | 4 × 4 | Texas Instruments DSP development kit: 440 Logic Elements 9-bit DSPs | Altera Stratix II EP2560 2.5 Mb Memory 60 | MATLAB | Up to 40 MHz | The 2.4 GHz to 2.5 GHz | OFDM with 64-QAM modulation |
GEDOMIS [33] | 2006 | 4 × 4 | Multi-DSP processing board, Pentek, model 4292, provides four fixed-point DSPs, operating, Texas Instruments model TMS320C6203, at 300 MHz in a single-slot VME motherboard. | 8 FPGAs: six Spartan-II and two Virtex-II | ___ | ___ | 2.412–2.472 GHz and 5.15–5.35 GHz |
|
GTAS by Ramirez, et al. [34] | 2006 | 2 × 2 | An SMT365 module contains a DSP at 600 MHz with 1 MB of internal memory | Xilinx Virtex-II Pro X2VP7 | MATLAB | Up to 20 MHz | The band around 2.4 GHz | Quadrature Phase Shift Keying (QPSK) modulation and Alamouti space–time coding |
Vienna [35] | 2006 | 4 × 4 | FPGA boards from Sundance [36]: equipped with a fixed-point DSP (600 MHz, 4800 MIPS peak performance, Texas Instruments TMS320C6416), a Xilinx FPGA (Virtex II XC2V1000-4-FF896), and 8 Mbytes of RAM | MATLAB | 20 MHz | 2.45 GHz | 4-QAM/16-QAM constellation | |
Roy and Bélanger [37] | 2006 | 4 × 4 | C6701 [1] | Virtex II [1] | ___ | 40 MHz [1] | ___ | ___ |
SABA by Borkowski, et al. [38] | 2006 | 4 × 4 | ___ | The BenBLUE II (BigBlue) module is equipped with two XC2V3000 Virtex II FPGAs | ___ | 30 MHz | 10.525 GHz, following the IEEE 802.16 standard | OFDM with 16-QAM modulation |
STAR [39] | 2006 | TR-STBC: 2 × 1 |
| MATLAB or octave | 2 MHz | 2.0–2.7 GHzcentred on 2.45 GHz | BPSK | |
DFE-MIMO: 4 × 4 | 1 MHz | π/4 DQPSK | ||||||
OFDM-MIMO: 4 × 4 | 15 MHz | 64-carrier QPSK | ||||||
STARS [40] | 2005 | 2 × 4 | Sundance’s signal processing modules are based on XILINX Virtex II/Virtex II-pro FPGAs and Texas Instruments’ TMS320C6416 DSPs | MATLAB | Up to 30 MHz | 2.4 GHz band | ___ | |
UCLA2 [41] | 2005 | 4 × 4 | Pentek 4291 Quad DSP [(TMS320C6701)]/Pentek 4292 Quad DSP [(TMS320C6203)] processing boards | Xilinx Vertex II X3000 FPGA | MATLAB | Up to 20 MHz | OFDM with 64-QAM modulation | |
Wallace, et al. [42] | 2004 | 4 × 4 | Base on Pentek DSP platform: four separate TI TMS320C6203 fixed-point DSPs | ___ | MATLAB | 2.45 GHz | 4-QAM constellation | |
UCLA [43] | 2004 | 2 × 2/4 × 4 | ___ | ___ | MATLAB | 25 MHz | 5.25 GHz | OFDM with 4/16/32-QAM constellation |
Morawski, et al. [44] | 2003 | 4 × 4 | ___ | ___ | ___ | Up to 3.5 MHz | 1.88756 Hz | OFDM with 64-QAM modulation |
Rice Murphy, et al. [45] | 2003 | 2 × 2 | XtremeDSP Kit FPGA board (XC2V2000 Xilinx Virtex II FPGA) | ___ | Up to 20 MHz | From 900 MHz to 2.6 GHz | 802.11b wireless LAN standard | |
Fabregas, et al. [46] | 2003 | 2 × 2 | ___ | A 1.5M gates ALTERA EP20K1500EBC652-1X | MATLAB | 20 MHz | 5.15 GHz and 5.35 GHz | OFDM with 16-QAM modulation |
Waveform | Reference | Advantages/Disadvantages/Summaries | |||
---|---|---|---|---|---|
Name | Acronym | ||||
Single-Carrier | Single-carrier QAM | SC-QAM | [67] |
| |
Single-carrier transmission with frequency domain equalization | SC-FDE | [68,69,70] | Considered as a direct alternative to OFDM as it overcomes the drawbacks presented by this technique. However, it does not offer the same flexibility given by OFDM concerning the management of the bandwidth and the energy resources. | ||
Single-carrier frequency division multiplexing | SC-FDM | [71,72] | SC-FDM has a low Peak-to-Average Power Ratio (PAPR) compared to OFDM. However, it suffers from noise enhancement [72,73] phenomena. | ||
Single-carrier FDP | SC-FDP | [70,74,75] | SC-FDP has lower PAPR in comparison with OFDM for a low number of end users. However, with a higher number of end-users SC-FPD performs the same as OFDM [70]. | ||
Single-carrier frequency division multiple access | SC-FDMA | [76,77] | Presents some disadvantages compared to OFDM:
| ||
Multi-Carrier | Orthogonal | Orthogonal frequency division multiplexing | OFDM | [78] | This waveform has some drawbacks:
|
orthogonal frequency division multiple access | OFDMA | [76,77] |
| ||
Rate-splitting multiple access | RSMA | [79] | RSMA is a robust technique that allows the deploying of more powerful coding approaches [80]. | ||
Multi-carrier code division multiple access | MC-CDMA or OFDM-CDM | [81] |
| ||
Non-Orthogonal | Sparse code multiple access | SCMA | [82] |
| |
Filter Bank Multi-Carrier | FBMC | [83] |
| ||
Space Division Multiple Access | SDMA | [85] |
| ||
Multi-User Shared Access | MUSA | [86] |
| ||
Nonorthogonal multiple access | NOMA | [87] |
|
OFDM Variants | ||
---|---|---|
CP-OFDM | Cyclic prefix OFDM | [91] |
UF-OFDM or UFMC | Universal filtered OFDM or universal filtered multi-carrier | [83,91,92] |
CP-OFDM-WOLA | Weighted overlap and add CP-OFDM | [88,89] 1 |
GFDM | Generalized OFDM | [93,94] |
F-OFDM | Filtered OFDM | [95] |
FBMC | Filter-bank multi-carrier | [83,96] |
Enhancement of Study | OFDM | CP-OFDM | UFMC | GFDM | F-OFDM | FBMC |
---|---|---|---|---|---|---|
Chang and Ueng [98] | X | |||||
Sharief and Sairam [99] | X | |||||
Singh, et al. [100] | X | |||||
Zakaria and Le Ruyet [101] | X | |||||
Zhao, et al. [102] | X | |||||
Yu, et al. [103] | X 1 | |||||
Jin, et al. [104] | X | |||||
Aminjavaheri, et al. [105] | X | |||||
Pereira, et al. [106] | X |
Classification | Pilot-Aided (or Training-Based) | Blind [112] and Semi-Blind | Decision-Directed | |||
---|---|---|---|---|---|---|
Statistical Methods | Deterministic Methods | Hard | Soft | |||
2nd Order | High Order | |||||
References | [113,114,115,116,117,118,119,120,121,122,123,124] | [125,126,127] | [128,129] | [130,131,132,133] | [134] | [135,136,137,138,139] |
Type | References | Year | Main Idea | Key Algorithms |
---|---|---|---|---|
Type 1 | [150] | 2019 | A symmetric successive over-relaxation (SSOR) method to reduce the complexity of the classical ZF precoding which uses the channel property of asymptotical orthogonality to compute the optimal relaxation parameters. | SSOR technique for ZF |
Type 3 | [151] | 2019 |
| Deep neural network with gradient descent algorithm |
Type 2 | [149] | 2019 |
| Turbo MMSE equalizer with MAP decoder |
Type 1 | [148] | 2018 | Testing MMSE equalizer with a decision-directed channel estimator in a multipath fading channel | MMSE algorithm |
Type 2 | [152] | 2012 | Iterative receiver based on equal gain combining (EGC) and maximum ratio combining (MRC) | RGC, MRC and LLR |
Type 3 | [147] | 2009 | An independent component analysis-based equalizer: First the received signal is whitened by principal component analysis, using JADE to gather uncorrelated signals. A phase shifting is performed as well as a reordering technique. | JADE batch algorithm |
Type 1 | [147] | 2009 | Exchanging the order of the processing block: interpolation and the ZF equalizer stage. This operation is performed at each pilot position, then the ZF equalizer is interpolated over the whole grid. | ZF equalization |
Type 2 | [153] | 2009 | The oblique projection (OB) with QR-based factorization is used to separate the noise from the data. Afterwards, the resulting matrix is forwarded to the DFE equalizer. | DFE equalizer, associated with the OB |
Type 3 | [154] | 2008 | A semi-blind time domain equalization, using second-order statistics and a one-tape equalizer. | |
Type 2 | [155] | 2007 | a DFE equalizer combined with Recursive Least Squares (RLS) to compute the coefficient of the adaptive filter. | RLS algorithm |
Type 1 | [156] | 2007 | An MMSE equalizer based on QR factorization implemented on FPGA to compute the inverse of the filter matrix. | MMSE and QR factorization |
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Harkat, H.; Monteiro, P.; Gameiro, A.; Guiomar, F.; Farhana Thariq Ahmed, H. A Survey on MIMO-OFDM Systems: Review of Recent Trends. Signals 2022, 3, 359-395. https://doi.org/10.3390/signals3020023
Harkat H, Monteiro P, Gameiro A, Guiomar F, Farhana Thariq Ahmed H. A Survey on MIMO-OFDM Systems: Review of Recent Trends. Signals. 2022; 3(2):359-395. https://doi.org/10.3390/signals3020023
Chicago/Turabian StyleHarkat, Houda, Paulo Monteiro, Atilio Gameiro, Fernando Guiomar, and Hasmath Farhana Thariq Ahmed. 2022. "A Survey on MIMO-OFDM Systems: Review of Recent Trends" Signals 3, no. 2: 359-395. https://doi.org/10.3390/signals3020023
APA StyleHarkat, H., Monteiro, P., Gameiro, A., Guiomar, F., & Farhana Thariq Ahmed, H. (2022). A Survey on MIMO-OFDM Systems: Review of Recent Trends. Signals, 3(2), 359-395. https://doi.org/10.3390/signals3020023