130 results on '"Shim, Byonghyo"'
Search Results
2. Robust energy harvest balancing optimization with V2X-SWIPT over MISO secrecy channel
- Author
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Zhu, Zhengyu, Wang, Zhongyong, Chu, Zheng, Zhang, Di, and Shim, Byonghyo
- Published
- 2018
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3. Tonal signal detection in passive sonar systems using atomic norm minimization
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Kim, Jinhong, Kim, Junhan, Nguyen, Luong Trung, Shim, Byonghyo, and Hong, Wooyoung
- Published
- 2019
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4. Oblique Projection Matching Pursuit
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Wang, Jian, Wang, Feng, Dong, Yunquan, and Shim, Byonghyo
- Published
- 2017
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5. Near optimal bound of orthogonal matching pursuit using restricted isometric constant
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Wang, Jian, Kwon, Seokbeop, and Shim, Byonghyo
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- 2012
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6. Complexity analysis of multicarrier and single-carrier systems for very high-speed digital subscriber line
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Shim, Byonghyo and Shanbhag, Naresh R.
- Subjects
Digital Subscriber Line -- Research ,Signal processing -- Research ,DSL ,Digital signal processor ,Business ,Computers ,Electronics ,Electronics and electrical industries - Abstract
Complexity analysis of discrete multitone (DMT) and single-carrier modulation (SCM) in the context of a very high-speed digital subscriber line (VDSL) is discussed.
- Published
- 2003
7. Integrated Sensing and Communication Waveform Design With Sparse Vector Coding: Low Sidelobes and Ultra Reliability.
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Zhang, Ruoyu, Shim, Byonghyo, Yuan, Weijie, Renzo, Marco Di, Dang, Xiaoyu, and Wu, Wen
- Subjects
- *
MIMO radar , *BINARY sequences , *STATIC VAR compensators - Abstract
Integrated sensing and communication (ISAC) can provide efficient usage for both spectrum and hardware resources. A critical challenge, however, is to design the dual-functional waveform for simultaneous radar sensing and communication. In this paper, we propose a sparse vector coding-based ISAC (SVC-ISAC) waveform to simultaneously provide low sidelobes for radar sensing and ultra reliability for communication transmission. The key idea of the proposed waveform is to embed the communication information into the support of one sparse vector and transmit a low-dimensional signal via the spreading codebook. We derive a closed-form expression of the ambiguity function for the proposed SVC-ISAC waveform, and prove that it exhibits low sidelobes in the delay and Doppler domains, regardless of the distribution of the transmitted bit stream. In addition, the information decoding at the communication receiver is solved through the support identification and sparse demapping. Simulation results demonstrate that the proposed waveform improves the reliability while consistently suppressing the sidelobe levels. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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- View/download PDF
8. A robust peak detection method for RNA structure inference by high-throughput contact mapping
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Kim, Jinkyu, Yu, Seunghak, Shim, Byonghyo, Kim, Hanjoo, Min, Hyeyoung, Chung, Eui-Young, Das, Rhiju, and Yoon, Sungroh
- Published
- 2009
9. Direction-of-Arrival Estimation for Large Antenna Arrays With Hybrid Analog and Digital Architectures.
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Zhang, Ruoyu, Shim, Byonghyo, and Wu, Wen
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PHASE shifters , *CHANNEL estimation , *RADIO frequency - Abstract
The large antenna arrays with hybrid analog and digital (HAD) architectures can provide a large aperture with low cost and hardware complexity, resulting in enhanced direction-of-arrival (DOA) estimation and reduced power consumption. This paper investigates the trade-off between DOA estimation and power consumption in large antenna arrays with HAD architectures. Particularly, the DOA estimation problem of fully-connected, sub-connected (SC), and switches-based (SE) hybrid architectures is formulated into a unified expression, with the compression matrix in a time-varying form. Based on this model, we derive a dynamic maximum likelihood (D-ML) estimator that is suitable for both HAD and conventional fully digital (FD) structures, and the closed-form expression of Cramér-Rao bound (CRB) to evaluate the performance limit of the D-ML estimator for different HAD structures. The theoretical CRB analysis in the single-source case reveals that, the SC structure has the ability to achieve approximately the same performance as the FD structures at DOAs around zero, but suffers from the inherent angle ambiguity because of the antenna grouping. In addition, we propose a dynamic SC (D-SC) structure that is proved to eliminate the angle ambiguity with time-varying phase shifters, and a switch optimization (SWO) algorithm to minimize the CRB of SE structures. Finally, we introduce a new metric, DOA efficiency, to measure the trade-off between the DOA estimation performance and power consumption of different structures. Simulation results verify our theoretical analysis and the superiority of the proposed D-SC structure and the SWO algorithm. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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10. Deep Learning-Based Beam Tracking for Millimeter-Wave Communications Under Mobility.
- Author
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Lim, Sun Hong, Kim, Sunwoo, Shim, Byonghyo, and Choi, Jun Won
- Subjects
DEEP learning ,SHORT-term memory ,LONG-term memory ,TIME-varying networks ,MARKETING channels ,CHANNEL estimation - Abstract
In this paper, we propose a deep learning-based beam tracking method for millimeter-wave (mmWave) communications. Beam tracking is employed for transmitting the known symbols using the sounding beams and tracking time-varying channels to maintain a reliable communication link. When the pose of a user equipment (UE) device varies rapidly, the mmWave channels also tend to vary fast, which hinders seamless communication. Thus, models that can capture temporal behavior of mmWave channels caused by the motion of the device are required, to cope with this problem. Accordingly, we employ a deep neural network to analyze the temporal structure and patterns underlying in the time-varying channels and the signals acquired by inertial sensors. We propose a model based on long short term memory (LSTM) that predicts the distribution of the future channel behavior based on a sequence of input signals available at the UE. This channel distribution is used to 1) control the sounding beams adaptively for the future channel state and 2) update the channel estimate through the measurement update step under a sequential Bayesian estimation framework. Our experimental results demonstrate that the proposed method achieves a significant performance gain over the conventional beam tracking methods under various mobility scenarios. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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11. Weak Signal Frequency Detection Using Chaos Theory: A Comprehensive Analysis.
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Chen, Dawei, Shi, Shuo, Gu, Xuemai, and Shim, Byonghyo
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SIGNAL detection ,ADDITIVE white Gaussian noise ,CHAOS theory ,LYAPUNOV exponents ,CHAOS synchronization - Abstract
As a potential technology in weak signal detection (WSD), the chaos theory benefits from its characteristics of the sensitivity to the initial condition and the immunity to the Additive White Gaussian Noise (AWGN). Traditional methods based on chaos theory perform well on single non-variable-frequency signal detection (SNVFSD), which is a common situation in texture flaw detection while it is a rare scenario in the communication field. In this paper, we give a comprehensive analysis of the chaos-based approach for weak signal frequency detection. To better understand the advantages and limitations of the chaos theory, we present the research results for several typical communication scenarios. Specifically, we proposed several chaos-based approaches to get a satisfying performance in the following situations: single variable-frequency signal detection (SVFSD), multiple non-variable-frequency signals detection (MNVFSD), multiple variable-frequency signals detection (MVFSD). To enhance the generalization performance to real application, the critical state's characteristics, Lyapunov Exponents (LE) and Melnikov method are analyzed to employed in these proposed chaos-based approaches. By theoretical analysis and numerical simulations, we study the performance of chaos-based detection systems in terms of SVFSD, MNVFSD, MVFSD. Our results show that these proposed schemes can obtain a satisfying performance in terms of accuracy and robustness, and the extensive simulations demonstrate their effectiveness. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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12. Energy-Efficient Ultra-Dense Network Using LSTM-based Deep Neural Networks.
- Author
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Kim, Seungnyun, Son, Junwon, and Shim, Byonghyo
- Abstract
As a means to achieve thousand-fold throughput improvements of future wireless communications, ultra-dense network (UDN) where a large number of small cells are densely deployed on top of the macro cells has received great deal of attention in recent years. While UDN offers number of benefits, intensive deployment of small cells may pose a serious concern in the energy consumption. Over the years, to reduce the energy consumption of UDN, an approach that turns off the lightly loaded base stations (BSs) has been proposed. However, determining the proper on/off modes of BSs is a challenging problem due to the huge computational overhead and inefficiency caused by the delayed decision. An aim of this paper is to propose a deep neural network (DNN)-based framework to achieve reduction of energy consumption in UDN. By exploiting the long short-term memory (LSTM) to extract the temporally correlated features from the channel information and the feedforward network to make BS on/off mode decision, we can control the on/off modes of BSs, thereby achieving a considerable reduction of the cumulative energy consumption. From the extensive simulations, we demonstrate that the proposed technique is effective in reducing the energy consumption of UDN. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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13. Energy-Efficient Millimeter-Wave Cell-Free Systems Under Limited Feedback.
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Kim, Seungnyun and Shim, Byonghyo
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PSYCHOLOGICAL feedback , *ENERGY consumption , *CONSUMPTION (Economics) , *ALGORITHMS - Abstract
MmWave cell-free systems where multiple base stations (BSs) cooperatively serve user using the mmWave band signal have gained much attention recently due to its capability to dramatically improve the system capacity. One potential drawback of mmWave cell-free systems is that an intensive deployment of BSs increases the energy consumption of network substantially. To improve the energy efficiency, acquisition of accurate downlink channel state information (CSI) at the BSs is essential. However, this task is not easy since the CSI feedback overhead scales linearly with the number of antennas as well as the number of BSs. In this paper, we propose an approach to maximize the energy efficiency of mmWave cell-free systems under the limited feedback. Key idea of the proposed energy-efficient dominating path selection (EE-DPS) algorithm is to choose a small number of paths in the angular domain channel and then exploit the channel information of chosen paths in the data precoding and power allocation. By choosing the dominating paths maximizing the energy efficiency and then feeding back the components of chosen paths, we achieve a considerable reduction in the feedback overhead. Numerical results demonstrate that EE-DPS achieves more than 80% energy efficiency improvement over the conventional CSI feedback-based schemes. [ABSTRACT FROM AUTHOR]
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- 2021
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14. Nonlinear preprocessing method for detecting peaks from gas chromatograms
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Min Hyeyoung, Shim Byonghyo, and Yoon Sungroh
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Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background The problem of locating valid peaks from data corrupted by noise frequently arises while analyzing experimental data. In various biological and chemical data analysis tasks, peak detection thus constitutes a critical preprocessing step that greatly affects downstream analysis and eventual quality of experiments. Many existing techniques require the users to adjust parameters by trial and error, which is error-prone, time-consuming and often leads to incorrect analysis results. Worse, conventional approaches tend to report an excessive number of false alarms by finding fictitious peaks generated by mere noise. Results We have designed a novel peak detection method that can significantly reduce parameter sensitivity, yet providing excellent peak detection performance and negligible false alarm rates from gas chromatographic data. The key feature of our new algorithm is the successive use of peak enhancement algorithms that are deliberately designed for a gradual improvement of peak detection quality. We tested our approach with real gas chromatograms as well as intentionally contaminated spectra that contain Gaussian or speckle-type noise. Conclusion Our results demonstrate that the proposed method can achieve near perfect peak detection performance while maintaining very small false alarm probabilities in case of gas chromatograms. Given the fact that biological signals appear in the form of peaks in various experimental data and that the propose method can easily be extended to such data, our approach will be a useful and robust tool that can help researchers highlight valid signals in their noisy measurements.
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- 2009
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15. Efficient Beam Training and Sparse Channel Estimation for Millimeter Wave Communications Under Mobility.
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Lim, Sun Hong, Kim, Sunwoo, Shim, Byonghyo, and Choi, Jun Won
- Subjects
MILLIMETER waves ,CHANNEL estimation ,GREEDY algorithms ,ALGORITHMS - Abstract
In this paper, we propose an efficient beam training technique for millimeter-wave (mmWave) communications. Beam training should be performed frequently when some mobile users are under high mobility to ensure the accurate acquisition of the channel state information. To reduce the resource overhead caused by frequent beam training, we introduce a dedicated beam training strategy which sends the training beams separately to a specific high mobility user (called a target user) without changing the periodicity of the conventional beam training. The dedicated beam training requires a small amount of resources because the training beams can be optimized for the target user. To satisfy the performance requirement with a low training overhead, we propose the optimal training beam selection strategy which finds the best beamforming vectors yielding the lowest channel estimation error based on the target user’s probabilistic channel information. This dedicated beam training is combined with the greedy channel estimation algorithm that accounts for sparse characteristics and temporal dynamics of the target user’s channel. Our numerical evaluation demonstrates that the proposed scheme can maintain good channel estimation performance with significantly less training overhead compared to the conventional beam training protocols. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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16. Principal Component Analysis-Based Broadband Hybrid Precoding for Millimeter-Wave Massive MIMO Systems.
- Author
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Sun, Yiwei, Gao, Zhen, Wang, Hua, Shim, Byonghyo, Gui, Guan, Mao, Guoqiang, and Adachi, Fumiyuki
- Abstract
Hybrid analog-digital precoding is challenging for broadband millimeter-wave (mmWave) massive MIMO systems, since the analog precoder is frequency-flat but the mmWave channels are frequency-selective. In this paper, we propose a principal component analysis (PCA)-based broadband hybrid precoder/combiner design, where both the fully-connected array and partially-connected subarray (including the fixed and adaptive subarrays) are investigated. Specifically, we first design the hybrid precoder/combiner for fully-connected array and fixed subarray based on PCA, whereby a low-dimensional frequency-flat precoder/combiner is acquired based on the optimal high-dimensional frequency-selective precoder/combiner. Meanwhile, the near-optimality of our proposed PCA approach is theoretically proven. Moreover, for the adaptive subarray, a low-complexity shared agglomerative hierarchical clustering algorithm is proposed to group the antennas for the further improvement of spectral efficiency (SE) performance. Besides, we theoretically prove that the proposed antenna grouping algorithm is only determined by the slow time-varying channel parameters in the large antenna limit. Simulation results demonstrate the superiority of the proposed solution over state-of-the-art schemes in SE, energy efficiency (EE), bit-error-rate performance, and the robustness to time-varying channels. Our work reveals that the EE advantage of adaptive subarray over fully-connected array is obvious for both active and passive antennas, but the EE advantage of fixed subarray only holds for passive antennas. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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17. Downlink Compressive Channel Estimation With Phase Noise in Massive MIMO Systems.
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Zhang, Ruoyu, Shim, Byonghyo, and Zhao, Honglin
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PHASE noise , *CHANNEL estimation , *MIMO systems , *RESTRICTED isometry property , *ALGORITHMS , *LEAST squares - Abstract
Phase noise (PN) introduced by the oscillator at the base station and user side severely degrades the channel estimation performance. This paper investigates the impact of PN on downlink compressive channel estimation in massive multiple-input multiple-output (MIMO) systems. Particularly, the downlink compressive channel estimation with PN is modeled as a sparse signal recovery problem with additive correlated perturbation on the pilot matrix, which is a general formulation for both non-synchronous and synchronous PN. Based on this signal model, the performance of the equivalent sensing matrix is analyzed by invoking restricted isometry property (RIP) in compressive sensing. In addition, the upper bound for $l_{1}$ -minimization based channel estimation method and tight channel estimation bound are derived in the framework of RIP and Oracle least square methodology, respectively. Finally, we propose a PN-aware sparse Bayesian learning (PNA-SBL) algorithm to improve the channel estimation performance in the presence of synchronous PN. Simulation results demonstrate our analysis and superiority of the proposed PNA-SBL algorithm. [ABSTRACT FROM AUTHOR]
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- 2020
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18. Sparse Vector Transmission: An Idea Whose Time Has Come.
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Kim, Wonjun, Ji, Hyoungju, Lee, Hyojin, Kim, Younsun, Lee, Juho, and Shim, Byonghyo
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In recent years, we have witnessed a bewildering variety of automated services and applications involving vehicles, robots, sensors, and machines powered by artificial intelligence (AI) technologies. Communication mechanisms associated with these services are clearly distinct from human-centric methods. One important feature of machine-centric communication is that the amount of information to be transmitted is tiny. In view of the short packet transmission, relying on today's transmission mechanisms would not be efficient due to the waste of resources, large decoding latency, and expensive operational cost. In this article, we present an overview of sparse vector transmission (SVT), a scheme to transmit short pieces of information after sparse transformation. We discuss the basics of SVT and two distinct SVT strategies [frequency-domain sparse transmission (FDST) and SV coding (SVC)] and demonstrate their effectiveness in realistic wireless environments. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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19. Joint Sparse Recovery Using Signal Space Matching Pursuit.
- Author
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Kim, Junhan, Wang, Jian, Nguyen, Luong Trung, and Shim, Byonghyo
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RESTRICTED isometry property ,ALGORITHMS ,MULTIPLE Signal Classification ,SPARSE matrices ,POLLUTION measurement - Abstract
In this paper, we put forth a new joint sparse recovery algorithm called signal space matching pursuit (SSMP). The key idea of the proposed SSMP algorithm is to sequentially investigate the support of jointly sparse vectors to minimize the subspace distance to the residual space. Our performance guarantee analysis indicates that SSMP accurately reconstructs any row K-sparse matrix of rank r in the full row rank scenario if the sampling matrix $\mathbf {A}$ satisfies $\mathop{\mathrm{krank}}\limits (\mathbf {A}) \ge {K}+1$ , which meets the fundamental minimum requirement on $\mathbf {A}$ to ensure exact recovery. We also show that SSMP guarantees exact reconstruction in at most ${K}-{r}+\lceil \frac {{r}}{{L}} \rceil $ iterations, provided that $\mathbf {A}$ satisfies the restricted isometry property (RIP) of order ${L}({K}-{r})+{r}+1$ with $\delta _{{L}({K}-{r})+{r}+1} < \max \left \{{ \frac {\sqrt {{r}}}{\sqrt {{K}+\frac {{r}}{4}}+\sqrt {\frac {{r}}{4}}}, \frac {\sqrt {{L}}}{\sqrt {K}+1.15 \sqrt {{L}}} }\right \}$ , where L is the number of indices chosen in each iteration. This implies that the requirement on the RIP constant becomes less restrictive when r increases. Such behavior seems to be natural but has not been reported for most of conventional methods. We also show that if ${r}=1$ , then by running more than K iterations, the performance guarantee of SSMP can be improved to $\delta _{\lfloor 7.8{K} \rfloor } \le 0.155$. Furthermore, we show that under a suitable RIP condition, the reconstruction error of SSMP is upper bounded by a constant multiple of the noise power, which demonstrates the robustness of SSMP to measurement noise. Finally, from extensive numerical experiments, we show that SSMP outperforms conventional joint sparse recovery algorithms both in noiseless and noisy scenarios. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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20. Pilot-Less One-Shot Sparse Coding for Short Packet-Based Machine-Type Communications.
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Wu, Jiao, Kim, Wonjun, and Shim, Byonghyo
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GREEDY algorithms ,STATIC VAR compensators ,MULTICASTING (Computer networks) ,VIDEO coding - Abstract
This paper presents a novel transmission scheme to support massive machine-type communications (MTC) devices sending very short packets for Internet-of-Things (IoT) applications. The proposed scheme, termed as pilot-less one-shot (PLOS) transmission, does not require the pilot signaling. The key idea behind PLOS is to encode information into the inter-block nonzero positions and intra-block nonzero positions of a sparse vector. In the receiver, we propose a deep neural network-based scheme, referred to as deep learning-based PLOS (DL-PLOS) to recover the nonzero positions of the sparse vector. From the simulations results, we demonstrate that PLOS is effective in the short packet transmission and DL-PLOS outperforms the conventional greedy algorithms. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
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21. Enhanced Sparse Vector Coding for Ultra-Reliable and Low Latency Communications.
- Author
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Kim, Wonjun, Bandari, Shravan Kumar, and Shim, Byonghyo
- Subjects
NUMERICAL analysis ,ERROR rates ,VIDEO coding ,COMPRESSED sensing - Abstract
An important observation in the ultra-reliable and low latency communications is that the size of transmit information is tiny. To support the effective short packet transmission, a sparse vector coding (SVC) scheme where an information is encoded into the positions of the sparse vector was proposed. In this paper, we propose a novel SVC technique further improving the reliability of the short packet transmission. Key idea of the proposed technique is to encode information both in the position as well as symbols. From the performance analysis and numerical evaluations on realistic channel models, we demonstrate that the proposed scheme outperforms the conventional SVC scheme in terms of the block error rate (BLER) and transmission latency. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
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22. Deep Neural Network-Based Active User Detection for Grant-Free NOMA Systems.
- Author
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Kim, Wonjun, Ahn, Yongjun, and Shim, Byonghyo
- Subjects
NEUROPROSTHESES - Abstract
As a means to support the access of massive machine-type communication devices, grant-free access and non-orthogonal multiple access (NOMA) have received great deal of attention in recent years. In the grant-free transmission, each device transmits information without the granting process so that the base station needs to identify the active devices among all potential devices. This process, called an active user detection (AUD), is a challenging problem in the NOMA-based systems since it is difficult to identify active devices from the superimposed received signal. An aim of this paper is to put forth a new type of AUD based on deep neural network (DNN). By feeding the training data in the properly designed DNN, the proposed AUD scheme learns the nonlinear mapping between the received NOMA signal and indices of active devices. As a result, the trained DNN can handle the whole AUD process, achieving an accurate detection of the active users. Numerical results demonstrate that the proposed AUD scheme outperforms the conventional approaches by a large margin in both AUD success probability and computational complexity. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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23. Channel Aware Sparse Transmission for Ultra Low-Latency Communications in TDD Systems.
- Author
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Kim, Wonjun, Ji, Hyoungju, and Shim, Byonghyo
- Subjects
TELECOMMUNICATION systems ,COMPRESSED sensing ,NUMERICAL analysis ,SYSTEMS design ,WIRELESS communications - Abstract
Major goal of ultra reliable and low latency communication (URLLC) is to reduce the latency down to a millisecond (ms) level while ensuring reliability of the transmission. Since the current uplink transmission scheme requires a complicated handshaking procedure to initiate the transmission, to meet this stringent latency requirement is a challenge in wireless system design. In particular, in the time division duplexing (TDD) systems, supporting the URLLC is difficult since the mobile device has to wait until the transmit direction is switched to the uplink. In this paper, we propose a new approach to support a low latency access in TDD systems, called channel aware sparse transmission (CAST). Key idea of the proposed scheme is to encode a grant signal in a form of sparse vector. This together with the fact that the sensing mechanism preserves the energy of the sparse vector allows us to use the compressed sensing (CS) technique in CAST decoding. From the performance analysis and numerical evaluations, we demonstrate that the proposed CAST scheme achieves a significant reduction in access latency over the 4G LTE-TDD and 5G NR-TDD systems. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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24. Compressive Sensing Based Channel Estimation for Millimeter-Wave Full-Dimensional MIMO With Lens-Array.
- Author
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Wan, Ziwei, Gao, Zhen, Shim, Byonghyo, Yang, Kai, Mao, Guoqiang, and Alouini, Mohamed-Slim
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CHANNEL estimation ,RADIO frequency ,SWITCHING systems (Telecommunication) - Abstract
Channel estimation (CE) for millimeter-wave (mmWave) lens-array suffers from prohibitive training overhead, whereas the state-of-the-art solutions require an extra complicated radio frequency phase shift network. By contrast, lens-array using antenna switching network (ASN) simplifies the hardware, but the associated CE is a challenging task due to the constraint imposed by ASN. This paper proposes a compressive sensing (CS)-based CE solution for full-dimensional (FD) lens-array, where the mmWave channel sparsity is exploited. Specifically, we first propose an approach of pilot training under the more severe haraware constraint imposed by ASN, and formulate the associated CE of lens-array as a CS problem. Then, a redundant dictionary is tailored for FD lens-array to combat the power leakage caused by the continuous angles of multipath components. Further, we design the baseband pilot signals to minimize the total mutual coherence of the measurement matrix based on CS theory for more reliable CE performance. Our solution provides a framework for applying CS techniques to lens-array using simple and practical ASN. Simulation results demonstrate the effectiveness of the proposed scheme. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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25. Systematic Resource Allocation in Cloud RAN With Caching as a Service Under Two Timescales.
- Author
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Tang, Jianhua, Quek, Tony Q. S., Chang, Tsung-Hui, and Shim, Byonghyo
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TIME ,RESOURCE allocation ,RADIO access networks ,DIMENSIONS ,NONLINEAR programming - Abstract
Recently, cloud radio access network (C-RAN) with caching as a service (CaaS) was proposed to merge the functionalities of communication, computing, and caching (CC&C) together. In this paper, we dissect the interactions of CC&C in C-RAN with CaaS from two dimensions: physical resource dimension and time dimension. In the physical resource dimension, we identify how to segment the baseband unit (BBU) pool resources (i.e., computation and storage) into different types of virtual machines (VMs). In the time dimension, we address how the long-term resource segmentation in the BBU pool impacts on the short-term transmit beamforming at the remote radio heads. We formulate the problem as a stochastic mixed-integer nonlinear programming (SMINLP) to minimize the system cost, including the server cost, VM cost and wireless transmission cost. After a series of approximation, including sample average approximation, successive convex approximation, and semidefinite relaxation, the SMINLP is approximated as a global consensus problem. The alternating direction method of multipliers (ADMM) is utilized to obtain the solution in a parallel fashion. Simulation results verify the convergence of our proposed algorithm, and also confirm that the proposed scheme is more cost-saving than that without considering the integration of CC&C. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
26. Nearly Optimal Restricted Isometry Condition for Rank Aware Order Recursive Matching Pursuit.
- Author
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Kim, Junhan, Wang, Jian, and Shim, Byonghyo
- Subjects
RESTRICTED isometry property ,ORTHOGONAL matching pursuit ,SPARSE matrices ,POLLUTION measurement - Abstract
In this paper, we analyze the performance guarantee of the rank aware order recursive matching pursuit (RA-ORMP) algorithm in recovering a group of jointly sparse vectors. Specifically, we show that RA-ORMP accurately reconstructs any group of $r$ linearly independent jointly $K$ -sparse vectors, provided that the sampling matrix has unit $\ell _{2}$ -norm columns and satisfies the restricted isometry property (RIP) of order $K+1$ with $\delta _{K+1} < {\sqrt{r}} /\left({\sqrt{K+\frac{r}{4}}+\sqrt{\frac{r}{4}}}\right)$. We show the near-optimality of the proposed guarantee by providing a group of $r$ jointly $K$ -sparse vectors that cannot be recovered by RA-ORMP under $\delta _{K+1} \geq \sqrt{\frac{r}{K}}$. We also present a condition of RA-ORMP in the more realistic scenarios where a sampling matrix might not have unit $\ell _{2}$ -norm columns and the measurements are contaminated with noise. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
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27. Localization of IoT Networks via Low-Rank Matrix Completion.
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Nguyen, Luong Trung, Kim, Junhan, Kim, Sangtae, and Shim, Byonghyo
- Subjects
LOW-rank matrices ,CONJUGATE gradient methods ,EUCLIDEAN distance ,EUCLIDEAN algorithm ,RIEMANNIAN manifolds ,INTERNET of things - Abstract
Location awareness, providing the ability to identify the location of sensor, machine, vehicle, and wearable device, is a rapidly growing trend of hyper-connected society and one of the key ingredients for the Internet of Things (IoT) era. In order to make a proper reaction to the collected information from things, location information of things should be available at the data center. One challenge for the IoT networks is to identify the location map of whole nodes from partially observed distance information. The aim of this paper is to present an algorithm to recover the Euclidean distance matrix (and eventually the location map) from partially observed distance information. By casting the low-rank matrix completion problem into the unconstrained minimization problem in a Riemannian manifold in which a notion of differentiability can be defined, we solve the low-rank matrix completion problem using a modified conjugate gradient algorithm. From the convergence analysis, we show that localization in Riemannian manifold using conjugate gradient (LRM-CG) converges linearly to the original Euclidean distance matrix under the extended Wolfe’s conditions. From the numerical experiments, we demonstrate that the proposed method, called LRM-CG, is effective in recovering the Euclidean distance matrix. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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28. EP-Based Joint Active User Detection and Channel Estimation for Massive Machine-Type Communications.
- Author
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Ahn, Jinyoup, Shim, Byonghyo, and Lee, Kwang Bok
- Subjects
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CHANNEL estimation , *MULTIUSER computer systems , *WIRELESS communications , *COMPRESSED sensing , *MARKETING channels , *IMAGE compression - Abstract
Massive machine-type communication (mMTC) is a newly introduced service category in 5G wireless communication systems to support a variety of Internet-of-Things (IoT) applications. In recovering sparsely represented multi-user vectors, compressed sensing-based multi-user detection (CS-MUD) can be used. CS-MUD is a feasible solution to the grant-free uplink non-orthogonal multiple access (NOMA) environments. In CS-MUD, active user detection (AUD) and channel estimation (CE) should be performed before data detection. In this paper, we propose the expectation propagation-based joint AUD and CE (EP-AUD/CE) technique for mMTC networks. The EP algorithm is a Bayesian framework that approximates a computationally intractable probability distribution to an easily tractable distribution. The proposed technique finds a close approximation of the posterior distribution of the sparse channel vector. Using the approximate distribution, AUD and CE are jointly performed. We show by numerical simulations that the proposed technique substantially enhances AUD and CE performances over competing algorithms. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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29. Performance Analysis of FD-NOMA-Based Decentralized V2X Systems.
- Author
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Zhang, Di, Liu, Yuanwei, Dai, Linglong, Bashir, Ali Kashif, Nallanathan, Arumugam, and Shim, Byonghyo
- Subjects
MULTIPLE access protocols (Computer network protocols) ,INTEGRAL functions ,QUALITY of service ,EXPONENTIAL functions ,SUBDIVISION surfaces (Geometry) ,SIGNAL-to-noise ratio ,RICIAN channels - Abstract
In order to meet the requirements of massively connected devices, different quality of services (QoS), various transmit rates, and ultra-reliable and low latency communications (URLLC) in vehicle-to-everything (V2X) communications, we introduce a full duplex non-orthogonal multiple access (FD-NOMA)-based decentralized V2X system model. We, then, classify the V2X communications into two scenarios and give their exact capacity expressions. To solve the computation complicated problems of the involved exponential integral functions, we give the approximate closed-form expressions with arbitrary small errors. Numerical results indicate the validness of our derivations. Our analysis has that the accuracy of our approximate expressions is controlled by the division of $\frac {\pi }{2}$ in the urban and crowded scenarios, and the truncation point ${T}$ in the suburban and remote scenarios. Numerical results manifest that: 1) increasing the number of V2X device, NOMA power, and Rician factor value yields a better capacity performance; 2) effect of FD-NOMA is determined by the FD self-interference and the channel noise; and 3) FD-NOMA has a better latency performance compared with other schemes. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
30. Service Multiplexing and Revenue Maximization in Sliced C-RAN Incorporated With URLLC and Multicast eMBB.
- Author
-
Tang, Jianhua, Shim, Byonghyo, and Quek, Tony Q. S.
- Subjects
SEMIDEFINITE programming ,RADIO access networks ,MULTICASTING (Computer networks) ,NONLINEAR programming ,MULTIPLEXING ,WIRELESS communications - Abstract
The fifth generation (5G) wireless system aims to differentiate its services based on different application scenarios. Instead of constructing different physical networks to support each application, radio access network (RAN) slicing is deemed as a prospective solution to help operate multiple logical separated wireless networks in a single physical network. In this paper, we incorporate two typical 5G services, i.e., enhanced Mobile BroadBand (eMBB) and ultra-reliable low-latency communications (URLLC), in a cloud RAN (C-RAN), which is suitable for RAN slicing due to its high flexibility. In particular, for eMBB, we make use of multicasting to improve the throughput, and for URLLC, we leverage the finite blocklength capacity to capture the delay accurately. We envision that there will be many slice requests for each of these two services. Accepting a slice request means a certain amount of revenue (consists of long-term revenue and shot-term revenue) is earned by the C-RAN operator. Our objective is to maximize the C-RAN operator’s revenue by properly admitting the slice requests, subject to the limited physical resource constraints. We formulate the revenue maximization problem as a mixed-integer nonlinear programming and exploit efficient approaches to solve it, such as successive convex approximation and semidefinite relaxation. Simulation results show that our proposed algorithm significantly saves system power consumption and receives the near-optimal revenue with an acceptable time complexity. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
31. Channel Feedback Based on AoD-Adaptive Subspace Codebook in FDD Massive MIMO Systems.
- Author
-
Shen, Wenqian, Dai, Linglong, Shim, Byonghyo, Wang, Zhaocheng, and Heath, Robert W.
- Subjects
MIMO systems ,FEEDBACK control systems ,WIRELESS channels ,SPECTRUM allocation ,IEEE 802 standard - Abstract
Channel feedback is essential in frequency division duplexing (FDD) massive multiple-input multiple-output (MIMO) systems. Unfortunately, prior work on multiuser MIMO has shown that the feedback overhead scales linearly with the number of base station (BS) antennas, which is large in massive MIMO systems. To reduce the feedback overhead, we propose an angle-of-departure (AoD) adaptive subspace codebook for channel feedback in FDD massive MIMO systems. Our key insight is to leverage the observation that path AoDs vary more slowly than the path gains. Within the angle coherence time, by utilizing the constant AoD information, the proposed AoD-adaptive subspace codebook is able to quantize the channel vector in a more accurate way. From the performance analysis, we show that the feedback overhead of the proposed codebook only scales linearly with a small number of dominant (path) AoDs instead of the large number of BS antennas. Moreover, we compare the proposed quantized feedback technique using the AoD-adaptive subspace codebook with a comparable analog feedback method. Extensive simulations show that the proposed AoD-adaptive subspace codebook achieves good channel feedback quality, while requiring low overhead. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
32. Sparse Vector Coding for Ultra Reliable and Low Latency Communications.
- Author
-
Ji, Hyoungju, Park, Sunho, and Shim, Byonghyo
- Abstract
Ultra reliable and low latency communication (URLLC) is a newly introduced service category in 5G to support delay-sensitive applications. In order to support this new service category, the 3rd Generation Partnership Project (3GPP) sets an aggressive requirement that a packet should be delivered with 10−5 packet error rate within 1-ms transmission period. Since the current wireless transmission scheme, which is designed to maximize the coding gain by transmitting the capacity achieving long codeblock, is not relevant for this purpose, and a new transmission scheme to support URLLC is required. In this paper, we propose a new approach to support the short packet transmission, called sparse vector coding (SVC). The key idea behind the proposed SVC technique is to transmit the information after the sparse vector transformation. By mapping the information into the position of nonzero elements and then transmitting it after random spreading, we obtain an underdetermined sparse system for which the principle of compressed sensing can be applied. From the numerical evaluations and performance analysis, we demonstrate that the proposed SVC technique is very effective in URLLC transmission and outperforms the 4G LTE and LTE-Advanced scheme. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
33. MAP-Based Active User and Data Detection for Massive Machine-Type Communications.
- Author
-
Jeong, Byeong Kook, Shim, Byonghyo, and Lee, Kwang Bok
- Subjects
- *
WIRELESS communications , *ALGORITHMS , *DATA packeting , *TELECOMMUNICATION systems , *ALGEBRA - Abstract
With the advent of the Internet of things, massive machine-type communications (mMTC) have become one of the most important requirements for next generation communication systems. In the mMTC scenarios, grant-free nonorthogonal multiple access on the transmission side and compressive sensing-based multi-user detection (CS-MUD) on the reception side are a promising solution because many users sporadically transmit small data packets at low rates. In this paper, we propose a novel CS-MUD algorithm for the active user and data detection in the mMTC systems. The proposed scheme consists of the maximum a posteriori probability (MAP) based active user detector (MAP-AUD) and the MAP-based data detector (MAP-DD). By exchanging the extrinsic information between MAP-AUD and MAP-DD, the proposed algorithm improves the active user detection performance and the reliability of the data detection. In addition, we extend the proposed algorithm to exploit group sparsity. By jointly processing the multiple received data with common activity, the proposed algorithm dramatically enhances the active user detection performance. We show by numerical experiments that the proposed algorithm achieves a substantial performance gain over existing algorithms. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
34. Ultra-Reliable and Low-Latency Communications in 5G Downlink: Physical Layer Aspects.
- Author
-
Ji, Hyoungju, Park, Sunho, Yeo, Jeongho, Kim, Younsun, Lee, Juho, and Shim, Byonghyo
- Abstract
URLLC is a new service category in 5G to accommodate emerging services and applications having stringent latency and reliability requirements. In order to support URLLC, there should be both evolutionary and revolutionary changes in the air interface named 5G NR. In this article, we provide an up-to-date overview of URLLC with an emphasis on the physical layer challenges and solutions in 5G NR downlink. We highlight key requirements of URLLC and then elaborate the physical layer issues and enabling technologies including packet and frame structure, scheduling schemes, and reliability improvement techniques, which have been discussed in the 3GPP Release 15 standardization. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
35. Packet Structure and Receiver Design for Low Latency Wireless Communications With Ultra-Short Packets.
- Author
-
Lee, Byungju, Love, David J., Park, Sunho, Ji, Hyoungju, and Shim, Byonghyo
- Subjects
5G networks ,DATA packeting ,INTERNET of things ,ENERGY harvesting ,DATA transmission systems - Abstract
Fifth generation wireless standards require much lower latency than what current wireless systems can guarantee. The main challenge in fulfilling these requirements is the development of short packet transmission, in contrast to most of the current standards, which use a long data packet structure. Since the available training resources are limited by the packet size, reliable channel and interference covariance estimation with reduced training overhead are crucial to any system using short data packets. In this paper, we propose an efficient receiver that exploits useful information available in the data transmission period to enhance the reliability of the short packet transmission. In the proposed method, the receive filter (i.e., the sample covariance matrix) is estimated using the received samples from the data transmission without using an interference training period. A channel estimation algorithm to use the most reliable data symbols as virtual pilots is employed to improve quality of the channel estimate. Simulation results verify that the proposed receiver algorithms enhance the reception quality of the short packet transmission. [ABSTRACT FROM PUBLISHER]
- Published
- 2018
- Full Text
- View/download PDF
36. Optimal Power Control for Transmitting Correlated Sources With Energy Harvesting Constraints.
- Author
-
Dong, Yunquan, Chen, Zhi, Wang, Jian, and Shim, Byonghyo
- Abstract
We investigate the weighted-sum distortion minimization problem in transmitting two correlated Gaussian sources over Gaussian channels using two energy harvesting nodes. To this end, we develop off-line and online power control policies to optimize the transmit power of the two nodes. In the off-line case, we cast the problem as a convex optimization and investigate the structure of the optimal solution. We also develop a generalized waterfilling-based power allocation algorithm to obtain the optimal solution efficiently. For the online case, we quantify the distortion of the system using a cost function and show that the expected cost equals the expected weighted-sum distortion. Based on Banach’s fixed point theorem, we further propose a geometrically converging algorithm to find the minimum cost via simple iterations. Simulation results show that our online power control outperforms the greedy power control where each node uses all the available energy in each slot and also performs close to that of the proposed off-line power control. Moreover, the performance of our off-line power control almost coincides with the performance limit of the system. [ABSTRACT FROM PUBLISHER]
- Published
- 2018
- Full Text
- View/download PDF
37. Detection of Large-Scale Wireless Systems via Sparse Error Recovery.
- Author
-
Choi, Jun Won and Shim, Byonghyo
- Subjects
- *
WIRELESS communications , *MEAN square algorithms , *COMPRESSED sensing , *ORTHOGONAL matching pursuit , *MULTIUSER detection (Telecommunication) ,MATHEMATICAL models of signal processing - Abstract
In this paper, we propose a new detection algorithm for large-scale wireless systems, referred to as post sparse error detection (PSED) algorithm, that employs a sparse error recovery algorithm to refine the estimate of a symbol vector obtained by the conventional linear detector. The PSED algorithm operates in two steps: First, sparse transformation converting the original nonsparse system into the sparse system whose input is an error vector caused by the symbol slicing; and second, the estimation of the error vector using the sparse recovery algorithm. From the asymptotic mean square error analysis and empirical simulations performed on large-scale wireless systems, we show that the PSED algorithm brings significant performance gain over classical linear detectors while imposing relatively small computational overhead. [ABSTRACT FROM PUBLISHER]
- Published
- 2017
- Full Text
- View/download PDF
38. Perfect error compensation via algorithmic error cancellation.
- Author
-
Gonugondla, Sujan K., Shim, Byonghyo, and Shanbhag, Naresh R.
- Published
- 2016
- Full Text
- View/download PDF
39. Compressed Sensing for Wireless Communications: Useful Tips and Tricks.
- Author
-
Choi, Jun Won, Shim, Byonghyo, Ding, Yacong, Rao, Bhaskar, and Kim, Dong In
- Published
- 2017
- Full Text
- View/download PDF
40. Expectation-Maximization-Based Channel Estimation for Multiuser MIMO Systems.
- Author
-
Park, Sunho, Choi, Jun Won, Seol, Ji-Yun, and Shim, Byonghyo
- Subjects
MIMO systems ,DATA transmission systems ,INFORMATION & communication technologies ,ORTHOGONAL frequency division multiplexing ,CODING theory - Abstract
Multiuser multiple-input multiple-output (MU-MIMO) transmission techniques have been popularly used to improve the spectral efficiency and user experience. However, due to the coarse knowledge of channel state information at the transmitter, the quality of transmit precoding to control multiuser interference is degraded, and hence, co-scheduled user equipment may suffer from large residual multiuser interference. In this paper, we propose a new channel estimation technique employing reliable soft symbols to improve the channel estimation and subsequent detection quality of MU-MIMO systems. To this end, we pick reliable data tones from both desired and interfering users and then use them as pilots to re-estimate the channel. In order to jointly estimate the channel and data symbols, we employ the expectation maximization algorithm, where the channel estimation and data decoding are performed iteratively. From numerical experiments in realistic MU-MIMO scenarios, we show that the proposed method achieves substantial performance gain in channel estimation and detection quality over conventional channel estimation approaches. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
41. Overview of Full-Dimension MIMO in LTE-Advanced Pro.
- Author
-
Ji, Hyoungju, Kim, Younsun, Lee, Juho, Onggosanusi, Eko, Nam, Younghan, Zhang, Jianzhong, Lee, Byungju, and Shim, Byonghyo
- Subjects
MIMO systems ,ANTENNAS (Electronics) ,MOBILE communication systems ,STANDARDIZATION ,SYSTEMS design - Abstract
Multiple-input multiple-output (MIMO) systems with a large number of base station antennas, often called massive MIMO, have received much attention in academia and industry as a means to improve the spectral efficiency, energy efficiency, and processing complexity of next generation cellular systems. The mobile communication industry has initiated a feasibility study of massive MIMO systems to meet the increasing demand of future wireless systems. Field trials of the proof-of-concept systems have demonstrated the potential gain of the Full-Dimension MIMO (FD-MIMO), an official name for the MIMO enhancement in the 3rd generation partnership project (3GPP). 3GPP initiated standardization activity for the seamless integration of this technology into current 4G LTE systems. In this article, we provide an overview of FD-MIMO systems, with emphasis on the discussion and debate conducted on the standardization process of Release 13. We present key features for FD-MIMO systems, a summary of the major issues for the standardization and practical system design, and performance evaluations for typical FD-MIMO scenarios. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
42. A MIMO Relay With Delayed Feedback Can Improve DoF in $K$- User MISO Interference Channel With No CSIT.
- Author
-
Shin, Wonjae, Shim, Byonghyo, Lee, Jungwoo, and Lee, Byungju
- Subjects
- *
MIMO systems , *INTERFERENCE channels (Telecommunications) , *DEGREES of freedom , *WIRELESS communications , *TRANSMITTERS (Communication) - Abstract
This paper studies the impact of a multiple-input–multiple-output (MIMO) relay on the $K$- user multiple-input–single-output (MISO) interference channel (IC) when the relay has
delayed feedback (i.e., delayed channel state information (CSI) or delayed channel output feedback) from each receiver, yet each transmitter has no knowledge about CSI. We first develop a newrelay-aided retrospective interference alignment (r-RIA) and characterize theoptimal sum degrees of freedom (DoFs) for the $K$- user MISO IC with a MIMO relay by providing a new matching outer bound. It is shown that the sum DoF does not decrease, even in the absence of direct links between transmitters and receivers, as long as $K$ is sufficiently large. We next show that a MIMO relay can provide a sum-DoF gain in the $K$- user MISO IC with delayed feedback to the relay in the absence of CSI at transmitter (CSIT), whereas relaying is shown to benot useful withinstantaneous CSIT from the DoF perspective. [ABSTRACT FROM PUBLISHER]- Published
- 2016
- Full Text
- View/download PDF
43. DEARER: A Distance-and-Energy-Aware Routing With Energy Reservation for Energy Harvesting Wireless Sensor Networks.
- Author
-
Dong, Yunquan, Wang, Jian, Shim, Byonghyo, and Kim, Dong In
- Subjects
NETWORK routing protocols ,ENERGY harvesting ,WIRELESS sensor networks - Abstract
We consider cluster-based routing protocols for energy harvesting wireless sensor networks. Since the energy harvesting process does not match the real energy demand, sensor nodes suffer from occasional energy shortages, especially when they serve as cluster head (CH) nodes. To address this problem, we propose a cluster-based routing protocol referred to as distance-and-energy-aware routing with energy reservation (DEARER). The DEARER protocol encourages nodes with high energy-arrival rate or being close to the sink to serve as CH nodes. Also, DEARER allows non-CH nodes to reserve a portion of the harvested energy for future use. In doing so, the DEARER selects “enabler” nodes as CH nodes and provides them with more energy, thereby mitigating the energy shortage events at CH nodes. By theoretical analysis and numerical experiments, we demonstrate that the DEARER protocol outperforms direct transmission and also approaches the genie-aided routing, where CH nodes are selected based on the real-time energy information of each node. [ABSTRACT FROM PUBLISHER]
- Published
- 2016
- Full Text
- View/download PDF
44. Greedy tree search for Internet of Things signal detection.
- Author
-
Lee, Jaeseok and Shim, Byonghyo
- Published
- 2015
- Full Text
- View/download PDF
45. Compressive sensing based pilot reduction technique for massive MIMO systems.
- Author
-
Choi, Jun Won and Shim, Byonghyo
- Published
- 2015
- Full Text
- View/download PDF
46. 3D beamforming for capacity boosting in LTE-advanced system.
- Author
-
Ji, Hyoungju, Lee, Byungju, Shim, Byonghyo, Nam, Young-Han, Kwak, Youngwoo, Noh, Hoondong, and Shin, Choelkyu
- Published
- 2015
- Full Text
- View/download PDF
47. Soft decision-directed channel estimation for multiuser MIMO systems.
- Author
-
Park, Sunho, Choi, Jun Won, Lee, Keonkook, and Shim, Byonghyo
- Published
- 2015
- Full Text
- View/download PDF
48. Sparse symbol detection by a greedy tree search.
- Author
-
Lee, Jaeseok and Shim, Byonghyo
- Published
- 2015
- Full Text
- View/download PDF
49. Joint Channel Training and Feedback for FDD Massive MIMO Systems.
- Author
-
Shen, Wenqian, Dai, Linglong, Wang, Zhaocheng, Shi, Yi, and Shim, Byonghyo
- Subjects
5G networks ,MIMO systems ,CHANNEL estimation ,ORTHOGONAL frequency division multiplexing ,WIRELESS communications - Abstract
Massive multiple-input multiple-output (MIMO) is widely recognized as a promising technology for future 5G wireless communication systems. To achieve the theoretical performance gains in massive MIMO systems, accurate channel-state information at the transmitter (CSIT) is crucial. Due to the overwhelming pilot signaling and channel feedback overhead, however, conventional downlink channel estimation and uplink channel feedback schemes might not be suitable for frequency-division duplexing (FDD) massive MIMO systems. In addition, these two topics are usually separately considered in the literature. In this paper, we propose a joint channel training and feedback scheme for FDD massive MIMO systems. Specifically, we first exploit the temporal correlation of time-varying channels to propose a differential channel training and feedback scheme, which simultaneously reduces the overhead for downlink training and uplink feedback. We next propose a structured compressive sampling matching pursuit (S-CoSaMP) algorithm to acquire a reliable CSIT by exploiting the structured sparsity of wireless MIMO channels. Simulation results demonstrate that the proposed scheme can achieve substantial reduction in the training and feedback overhead. [ABSTRACT FROM PUBLISHER]
- Published
- 2016
- Full Text
- View/download PDF
50. Exact Recovery of Sparse Signals Using Orthogonal Matching Pursuit: How Many Iterations Do We Need?
- Author
-
Wang, Jian and Shim, Byonghyo
- Subjects
- *
ORTHOGONAL matching pursuit , *ITERATIVE methods (Mathematics) , *ALGORITHM research , *NUMERICAL analysis , *MATRICES (Mathematics) - Abstract
Orthogonal matching pursuit (OMP) is a greedy algorithm widely used for the recovery of sparse signals from compressed measurements. In this paper, we analyze the number of iterations required for the OMP algorithm to perform exact recovery of sparse signals. Our analysis shows that OMP can accurately recover all $K$-sparse signals within $\lceil 2.8 \; K \rceil$ iterations when the measurement matrix satisfies a restricted isometry property (RIP). Our result improves upon the recent result of Zhang and also bridges the gap between Zhang's result and the fundamental limit of OMP at which exact recovery of $K$-sparse signals cannot be uniformly guaranteed. [ABSTRACT FROM PUBLISHER]
- Published
- 2016
- Full Text
- View/download PDF
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