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[Keyword] Z(5900hit)

101-120hit(5900hit)

  • Kr-Plasma Sputtering for Pt Gate Electrode Deposition on MFSFET with 5 nm-Thick Ferroelectric Nondoped HfO2 Gate Insulator for Analog Memory Application

    Joong-Won SHIN  Masakazu TANUMA  Shun-ichiro OHMI  

     
    PAPER

      Pubricized:
    2023/06/02
      Vol:
    E106-C No:10
      Page(s):
    581-587

    In this research, we investigated the threshold voltage (VTH) control by partial polarization of metal-ferroelectric-semiconductor field-effect transistors (MFSFETs) with 5 nm-thick nondoped HfO2 gate insulator utilizing Kr-plasma sputtering for Pt gate electrode deposition. The remnant polarization (2Pr) of 7.2 μC/cm2 was realized by Kr-plasma sputtering for Pt gate electrode deposition. The memory window (MW) of 0.58 V was realized by the pulse amplitude and width of -5/5 V, 100 ms. Furthermore, the VTH of MFSFET was controllable by program/erase (P/E) input pulse even with the pulse width below 100 ns which may be caused by the reduction of leakage current with decreasing plasma damage.

  • Fusion-Based Edge and Color Recovery Using Weighted Near-Infrared Image and Color Transmission Maps for Robust Haze Removal

    Onhi KATO  Akira KUBOTA  

     
    PAPER

      Pubricized:
    2023/05/23
      Vol:
    E106-D No:10
      Page(s):
    1661-1672

    Various haze removal methods based on the atmospheric scattering model have been presented in recent years. Most methods have targeted strong haze images where light is scattered equally in all color channels. This paper presents a haze removal method using near-infrared (NIR) images for relatively weak haze images. In order to recover the lost edges, the presented method first extracts edges from an appropriately weighted NIR image and fuses it with the color image. By introducing a wavelength-dependent scattering model, our method then estimates the transmission map for each color channel and recovers the color more naturally from the edge-recovered image. Finally, the edge-recovered and the color-recovered images are blended. In this blending process, the regions with high lightness, such as sky and clouds, where unnatural color shifts are likely to occur, are effectively estimated, and the optimal weighting map is obtained. Our qualitative and quantitative evaluations using 59 pairs of color and NIR images demonstrated that our method can recover edges and colors more naturally in weak haze images than conventional methods.

  • Optimal Online Bin Packing Algorithms for Some Cases with Two Item Sizes

    Hiroshi FUJIWARA  Masaya KAWAGUCHI  Daiki TAKIZAWA  Hiroaki YAMAMOTO  

     
    PAPER-Algorithms and Data Structures

      Pubricized:
    2023/03/07
      Vol:
    E106-A No:9
      Page(s):
    1100-1110

    The bin packing problem is a problem of finding an assignment of a sequence of items to a minimum number of bins, each of capacity one. An online algorithm for the bin packing problem is an algorithm that irrevocably assigns each item one by one from the head of the sequence. Gutin, Jensen, and Yeo (2006) considered a version in which all items are only of two different sizes and the online algorithm knows the two possible sizes in advance, and gave an optimal online algorithm for the case when the larger size exceeds 1/2. In this paper we provide an optimal online algorithm for some of the cases when the larger size is at most 1/2, on the basis of a framework that facilitates the design and analysis of algorithms.

  • Theory and Application of Topology-Based Exact Synthesis for Majority-Inverter Graphs

    Xianliang GE  Shinji KIMURA  

     
    PAPER-VLSI Design Technology and CAD

      Pubricized:
    2023/03/03
      Vol:
    E106-A No:9
      Page(s):
    1241-1250

    Majority operation has been paid attention as a basic element of beyond-Moore devices on which logic functions are constructed from Majority elements and inverters. Several optimization methods are developed to reduce the number of elements on Majority-Inverter Graphs (MIGs) but more area and power reduction are required. The paper proposes a new exact synthesis method for MIG based on a new topological constraint using node levels. Possible graph structures are clustered by the levels of input nodes, and all possible structures can be enumerated efficiently in the exact synthesis compared with previous methods. Experimental results show that our method decreases the runtime up to 25.33% compared with the fence-based method, and up to 6.95% with the partial-DAG-based method. Furthermore, our implementation can achieve better performance in size optimization for benchmark suites.

  • iLEDGER: A Lightweight Blockchain Framework with New Consensus Method for IoT Applications

    Veeramani KARTHIKA  Suresh JAGANATHAN  

     
    PAPER-Cryptography and Information Security

      Pubricized:
    2023/03/06
      Vol:
    E106-A No:9
      Page(s):
    1251-1262

    Considering the growth of the IoT network, there is a demand for a decentralized solution. Incorporating the blockchain technology will eliminate the challenges faced in centralized solutions, such as i) high infrastructure, ii) maintenance cost, iii) lack of transparency, iv) privacy, and v) data tampering. Blockchain-based IoT network allows businesses to access and share the IoT data within their organization without a central authority. Data in the blockchain are stored as blocks, which should be validated and added to the chain, for this consensus mechanism plays a significant role. However, existing methods are not designed for IoT applications and lack features like i) decentralization, ii) scalability, iii) throughput, iv) faster convergence, and v) network overhead. Moreover, current blockchain frameworks failed to support resource-constrained IoT applications. In this paper, we proposed a new consensus method (WoG) and a lightweight blockchain framework (iLEDGER), mainly for resource-constrained IoT applications in a permissioned environment. The proposed work is tested in an application that tracks the assets using IoT devices (Raspberry Pi 4 and RFID). Furthermore, the proposed consensus method is analyzed against benign failures, and performance parameters such as CPU usage, memory usage, throughput, transaction execution time, and block generation time are compared with state-of-the-art methods.

  • New Constructions of Type-II Binary Z-Complementary Pairs

    Xiaoyu CHEN  Yihan ZHANG  Lianfeng SUN  Yubo LI  

     
    LETTER-Coding Theory

      Pubricized:
    2023/02/24
      Vol:
    E106-A No:9
      Page(s):
    1272-1276

    This letter is devoted to constructing new Type-II Z-complementary pairs (ZCPs). A ZCP of length N with ZCZ width Z is referred to in short by the designation (N, Z)-ZCP. Inspired by existing works of ZCPs, systematic constructions of (2N+3, N+2)-ZCPs and (4N+4, 7/2N+4)-ZCPs are proposed by appropriately inserting elements into concatenated GCPs. The odd-length binary Z-complementary pairs (OB-ZCPs) are Z-optimal. Furthermore, the proposed construction can generate even-length binary Z-complementary pairs (EB-ZCPs) with ZCZ ratio (i.e. ZCZ width over the sequence length) of 7/8. It turns out that the PMEPR of resultant EB-ZCPs are upper bounded by 4.

  • Smart Radio Environments with Intelligent Reflecting Surfaces for 6G Sub-Terahertz-Band Communications Open Access

    Yasutaka OGAWA  Shuto TADOKORO  Satoshi SUYAMA  Masashi IWABUCHI  Toshihiko NISHIMURA  Takanori SATO  Junichiro HAGIWARA  Takeo OHGANE  

     
    INVITED PAPER

      Pubricized:
    2023/05/23
      Vol:
    E106-B No:9
      Page(s):
    735-747

    Technology for sixth-generation (6G) mobile communication system is now being widely studied. A sub-Terahertz band is expected to play a great role in 6G to enable extremely high data-rate transmission. This paper has two goals. (1) Introduction of 6G concept and propagation characteristics of sub-Terahertz-band radio waves. (2) Performance evaluation of intelligent reflecting surfaces (IRSs) based on beamforming in a sub-Terahertz band for smart radio environments (SREs). We briefly review research on SREs with reconfigurable intelligent surfaces (RISs), and describe requirements and key features of 6G with a sub-Terahertz band. After that, we explain propagation characteristics of sub-Terahertz band radio waves. Important feature is that the number of multipath components is small in a sub-Terahertz band in indoor office environments. This leads to an IRS control method based on beamforming because the number of radio waves out of the optimum beam is very small and power that is not used for transmission from the IRS to user equipment (UE) is little in the environments. We use beams generated by a Butler matrix or a DFT matrix. In simulations, we compare the received power at a UE with that of the upper bound value. Simulation results show that the proposed method reveals good performance in the sense that the received power is not so lower than the upper bound value.

  • Uplink Postcoding in User-Cluster-Centric Cell-Free Massive MIMO

    Ryo TAKAHASHI  Hidenori MATSUO  Sijie XIA  Qiang CHEN  Fumiyuki ADACHI  

     
    PAPER

      Pubricized:
    2023/03/08
      Vol:
    E106-B No:9
      Page(s):
    748-757

    Cell-free massive MIMO (CF-mMIMO), which cooperatively utilizes a large number of antennas deployed over a communication area, has been attracting great attention as an important technology for realizing 5G-advanced and 6G systems. Recently, to ensure system scalability and mitigate inter-user interference in CF-mMIMO, a user-centric (UC) approach was investigated. In this UC approach, user-centric antenna-sets are formed by selecting appropriate antennas for each user, and postcoding is applied to reduce the strong interference from users whose antenna-sets overlap. However, in very high user density environments, since the number of interfering users increases due to increased overlapping of antenna-sets, the achievable link capacity may degrade. In this paper, we propose a user-cluster-centric (UCC) approach, which groups neighborhood users into a user-cluster and associates the predetermined number of antennas to this user-cluster for spatial multiplexing. We derive the uplink postcoding weights and explain the effectiveness of the proposed UCC approach in terms of the computational complexity of the weight computation. We also compare the uplink user capacities achievable with UC and UCC approaches by computer simulation and clarify situations where the UCC approach is effective. Furthermore, we discuss the impact of the number of interfering users considered in the zero-forcing and minimum mean square error postcoding weight computation on the user capacity.

  • A 2-D Beam Scanning Array Antenna Fed by a Compact 16-Way 2-D Beamforming Network in Broadside Coupled Stripline

    Jean TEMGA  Tomoyuki FURUICHI  Takashi SHIBA  Noriharu SUEMATSU  

     
    PAPER

      Pubricized:
    2023/03/28
      Vol:
    E106-B No:9
      Page(s):
    768-777

    A 2-D beam scanning array antenna fed by a compact 16-way 2-D beamforming network (BFN) designed in Broadside Coupled Stripline (BCS) is addressed. The proposed 16-way 2-D BFN is formed by interconnecting two groups of 4x4 Butler Matrix (BM). Each group is composed of four compact 4x4 BMs. The critical point of the design is to propose a simple and compact 4x4 BM without crossover in BCS to achieve a better transmission coefficient of the 16-way 2-D BFN with reduced size of merely 0.8λ0×0.8λ0×0.04λ0. Moreover, the complexity of the interface connection between the 2-D BFN and the 4x4 patch array antenna is reduced by using probe feeding. The 16-way 2-D BFN is able to produce the phase shift of ±45°, and ±135° in x- and y- directions. The 2-D BFN is easily integrated under the 4x4 patch array to form a 2-D phased array capable of switching 16 beams in both elevation and azimuth directions. The area of the proposed 2-D beam scanning array antenna module has been significantly reduced to 2λ0×2λ0×0.04λ0. A prototype operating in the frequency range of 4-6GHz is fabricated and measured to validate the concept. The measurement results agree well with the simulations.

  • Service Deployment Model with Virtual Network Function Resizing Based on Per-Flow Priority

    Keigo AKAHOSHI  Eiji OKI  

     
    PAPER-Network

      Pubricized:
    2023/03/24
      Vol:
    E106-B No:9
      Page(s):
    786-797

    This paper investigates a service deployment model for network function virtualization which handles per-flow priority to minimize the deployment cost. Service providers need to implement network services each of which consists of one or more virtual network functions (VNFs) with satisfying requirements of service delays. In our previous work, we studied the service deployment model with per-host priority; flows belonging to the same service, for the same VNF, and handled on the same host have the same priority. We formulated the model as an optimization problem, and developed a heuristic algorithm named FlexSize to solve it in practical time. In this paper, we address per-flow priority, in which flows of the same service, VNF, and host have different priorities. In addition, we expand FlexSize to handle per-flow priority. We evaluate per-flow and per-host priorities, and the numerical results show that per-flow priority reduces deployment cost compared with per-host priority.

  • Backup Resource Allocation Model with Probabilistic Protection Considering Service Delay

    Shinya HORIMOTO  Fujun HE  Eiji OKI  

     
    PAPER-Network

      Pubricized:
    2023/03/24
      Vol:
    E106-B No:9
      Page(s):
    798-816

    This paper proposes a backup resource allocation model for virtual network functions (VNFs) to minimize the total allocated computing capacity for backup with considering the service delay. If failures occur to primary hosts, the VNFs in failed hosts are recovered by backup hosts whose allocation is pre-determined. We introduce probabilistic protection, where the probability that the protection by a backup host fails is limited within a given value; it allows backup resource sharing to reduce the total allocated computing capacity. The previous work does not consider the service delay constraint in the backup resource allocation problem. The proposed model considers that the probability that the service delay, which consists of networking delay between hosts and processing delay in each VNF, exceeds its threshold is constrained within a given value. We introduce a basic algorithm to solve our formulated delay-constraint optimization problem. In a problem with the size that cannot be solved within an acceptable computation time limit by the basic algorithm, we develop a simulated annealing algorithm incorporating Yen's algorithm to handle the delay constraint heuristically. We observe that both algorithms in the proposed model reduce the total allocated computing capacity by up to 56.3% compared to a baseline; the simulated annealing algorithm can get feasible solutions in problems where the basic algorithm cannot.

  • A Unified Design of Generalized Moreau Enhancement Matrix for Sparsity Aware LiGME Models

    Yang CHEN  Masao YAMAGISHI  Isao YAMADA  

     
    PAPER-Digital Signal Processing

      Pubricized:
    2023/02/14
      Vol:
    E106-A No:8
      Page(s):
    1025-1036

    In this paper, we propose a unified algebraic design of the generalized Moreau enhancement matrix (GME matrix) for the Linearly involved Generalized-Moreau-Enhanced (LiGME) model. The LiGME model has been established as a framework to construct linearly involved nonconvex regularizers for sparsity (or low-rank) aware estimation, where the design of GME matrix is a key to guarantee the overall convexity of the model. The proposed design is applicable to general linear operators involved in the regularizer of the LiGME model, and does not require any eigendecomposition or iterative computation. We also present an application of the LiGME model with the proposed GME matrix to a group sparsity aware least squares estimation problem. Numerical experiments demonstrate the effectiveness of the proposed GME matrix in the LiGME model.

  • LFWS: Long-Operation First Warp Scheduling Algorithm to Effectively Hide the Latency for GPUs

    Song LIU  Jie MA  Chenyu ZHAO  Xinhe WAN  Weiguo WU  

     
    PAPER-Algorithms and Data Structures

      Pubricized:
    2023/02/10
      Vol:
    E106-A No:8
      Page(s):
    1043-1050

    GPUs have become the dominant computing units to meet the need of high performance in various computational fields. But the long operation latency causes the underutilization of on-chip computing resources, resulting in performance degradation when running parallel tasks on GPUs. A good warp scheduling strategy is an effective solution to hide latency and improve resource utilization. However, most current warp scheduling algorithms on GPUs ignore the ability of long operations to hide latency. In this paper, we propose a long-operation-first warp scheduling algorithm, LFWS, for GPU platforms. The LFWS filters warps in the ready state to a ready queue and updates the queue in time according to changes in the status of the warp. The LFWS divides the warps in the ready queue into long and short operation groups based on the type of operations in their instruction buffers, and it gives higher priority to the long-operating warp in the ready queue. This can effectively use the long operations to hide some of the latency from each other and enhance the system's ability to hide the latency. To verify the effectiveness of the LFWS, we implement the LFWS algorithm on a simulation platform GPGPU-Sim. Experiments are conducted over various CUDA applications to evaluate the performance of LFWS algorithm, compared with other five warp scheduling algorithms. The results show that the LFWS algorithm achieves an average performance improvement of 8.01% and 5.09%, respectively, over three traditional and two novel warp scheduling algorithms, effectively improving computational resource utilization on GPU.

  • Signal Detection for OTFS System Based on Improved Particle Swarm Optimization

    Jurong BAI  Lin LAN  Zhaoyang SONG  Huimin DU  

     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2023/02/16
      Vol:
    E106-B No:8
      Page(s):
    614-621

    The orthogonal time frequency space (OTFS) technique proposed in recent years has excellent anti-Doppler frequency shift and time delay performance, enabling its application in high speed communication scenarios. In this article, a particle swarm optimization (PSO) signal detection algorithm for OTFS system is proposed, an adaptive mechanism for the individual learning factor and global learning factor in the speed formula of the algorithm is designed, and the position update method of the particles is improved, so as to increase the convergence accuracy and avoid the particles to fall into local optimum. The simulation results show that the improved PSO algorithm has the advantages of low bit error rate (BER) and high convergence accuracy compared with the traditional PSO algorithm, and has similar performance to the ideal state maximum likelihood (ML) detection algorithm with lower complexity. In the case of high Doppler shift, OTFS technology has better performance than orthogonal frequency division multiplexing (OFDM) technology by using improved PSO algorithm.

  • A Cause of Momentary Level Shifts Appearing in Broadcast Satellite Signals Open Access

    Ryouichi NISHIMURA  Byeongpyo JEONG  Hajime SUSUKITA  Takashi TAKAHASHI  Kenichi TAKIZAWA  

     
    PAPER-Sensing

      Pubricized:
    2023/02/24
      Vol:
    E106-B No:8
      Page(s):
    714-722

    The degree of reception of BS signals is affected by various factors. After routinely recording it at two observation points at two locations, we found that momentary upward and downward level shifts occurred multiple times, mainly during daytime. These level shifts were observed at one location. No such signal was sensed at the other location. After producing an algorithm to extract such momemtary level shifts, their statistical properties were investigated. Careful analyses, including assessment of the signal polarity, amplitude, duration, hours, and comparison with actual flight schedules and route information implied that these level shifts are attributable to the interference of direct and reflected waves from aircraft flying at approximately tropopause altitude. This assumption is further validated through computer simulations of BS signal interference.

  • Highly Integrated DBC-Based IPM with Ultra-Compact Size for Low Power Motor Drive Applications

    Huanyu WANG  Lina HUANG  Yutong LIU  Zhenyuan XU  Lu ZHANG  Tuming ZHANG  Yuxiang FENG  Qing HUA  

     
    BRIEF PAPER-Electronic Circuits

      Pubricized:
    2023/02/20
      Vol:
    E106-C No:8
      Page(s):
    442-445

    This paper proposes the new series highly integrated intelligent power module (IPM), which is developed to provide a ultra-compact, high performance and reliable motor drive system. Details of the key design technologies of the IPM is given and practical application issues such as electrical characteristics, system operation performance and power dissipation are discussed. Layout placement and routing have been optimized in order to reduce and balance the parasitic impedances. By implementing an innovative direct bonding copper (DBC) ceramic substrate, which can effectively dissipate heat, the IPM delivers a fully integrated power stages including two three-phase inverters, power factor correction (PFC) and rectifier in an ultra-compact 75.5mm × 30mm package, offering up to a 17.3 percent smaller space than traditional motor drive scheme.

  • EMRNet: Efficient Modulation Recognition Networks for Continuous-Wave Radar Signals

    Kuiyu CHEN  Jingyi ZHANG  Shuning ZHANG  Si CHEN  Yue MA  

     
    BRIEF PAPER-Electronic Instrumentation and Control

      Pubricized:
    2023/03/24
      Vol:
    E106-C No:8
      Page(s):
    450-453

    Automatic modulation recognition(AMR) of radar signals is a currently active area, especially in electronic reconnaissance, where systems need to quickly identify the intercepted signal and formulate corresponding interference measures on computationally limited platforms. However, previous methods generally have high computational complexity and considerable network parameters, making the system unable to detect the signal timely in resource-constrained environments. This letter firstly proposes an efficient modulation recognition network(EMRNet) with tiny and low latency models to match the requirements for mobile reconnaissance equipments. One-dimensional residual depthwise separable convolutions block(1D-RDSB) with an adaptive size of receptive fields is developed in EMRNet to replace the traditional convolution block. With 1D-RDSB, EMRNet achieves a high classification accuracy and dramatically reduces computation cost and network paraments. The experiment results show that EMRNet can achieve higher precision than existing 2D-CNN methods, while the computational cost and parament amount of EMRNet are reduced by about 13.93× and 80.88×, respectively.

  • Distilling Distribution Knowledge in Normalizing Flow

    Jungwoo KWON  Gyeonghwan KIM  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2023/04/26
      Vol:
    E106-D No:8
      Page(s):
    1287-1291

    In this letter, we propose a feature-based knowledge distillation scheme which transfers knowledge between intermediate blocks of teacher and student with flow-based architecture, specifically Normalizing flow in our implementation. In addition to the knowledge transfer scheme, we examine how configuration of the distillation positions impacts on the knowledge transfer performance. To evaluate the proposed ideas, we choose two knowledge distillation baseline models which are based on Normalizing flow on different domains: CS-Flow for anomaly detection and SRFlow-DA for super-resolution. A set of performance comparison to the baseline models with popular benchmark datasets shows promising results along with improved inference speed. The comparison includes performance analysis based on various configurations of the distillation positions in the proposed scheme.

  • Deep Multiplicative Update Algorithm for Nonnegative Matrix Factorization and Its Application to Audio Signals

    Hiroki TANJI  Takahiro MURAKAMI  

     
    PAPER-Digital Signal Processing

      Pubricized:
    2023/01/19
      Vol:
    E106-A No:7
      Page(s):
    962-975

    The design and adjustment of the divergence in audio applications using nonnegative matrix factorization (NMF) is still open problem. In this study, to deal with this problem, we explore a representation of the divergence using neural networks (NNs). Instead of the divergence, our approach extends the multiplicative update algorithm (MUA), which estimates the NMF parameters, using NNs. The design of the extended MUA incorporates NNs, and the new algorithm is referred to as the deep MUA (DeMUA) for NMF. While the DeMUA represents the algorithm for the NMF, interestingly, the divergence is obtained from the incorporated NN. In addition, we propose theoretical guides to design the incorporated NN such that it can be interpreted as a divergence. By appropriately designing the NN, MUAs based on existing divergences with a single hyper-parameter can be represented by the DeMUA. To train the DeMUA, we applied it to audio denoising and supervised signal separation. Our experimental results show that the proposed architecture can learn the MUA and the divergences in sparse denoising and speech separation tasks and that the MUA based on generalized divergences with multiple parameters shows favorable performances on these tasks.

  • Variable Ordering in Binary Decision Diagram Using Spider Monkey Optimization for Node and Path Length Optimization

    Mohammed BALAL SIDDIQUI  Mirza TARIQ BEG  Syed NASEEM AHMAD  

     
    PAPER-VLSI Design Technology and CAD

      Pubricized:
    2023/01/16
      Vol:
    E106-A No:7
      Page(s):
    976-989

    Binary Decision Diagrams (BDDs) are an important data structure for the design of digital circuits using VLSI CAD tools. The ordering of variables affects the total number of nodes and path length in the BDDs. Finding a good variable ordering is an optimization problem and previously many optimization approaches have been implemented for BDDs in a number of research works. In this paper, an optimization approach based on Spider Monkey Optimization (SMO) algorithm is proposed for the BDD variable ordering problem targeting number of nodes and longest path length. SMO is a well-known swarm intelligence-based optimization approach based on spider monkeys foraging behavior. The proposed work has been compared with other latest BDD reordering approaches using Particle Swarm Optimization (PSO) algorithm. The results obtained show significant improvement over the Particle Swarm Optimization method. The proposed SMO-based method is applied to different benchmark digital circuits having different levels of complexities. The node count and longest path length for the maximum number of tested circuits are found to be better in SMO than PSO.

101-120hit(5900hit)