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[Author] Hao LI(76hit)

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  • Compact Analytical Threshold Voltage Model of Strained Gate-All-Around MOSFET Fabricated on Si1-xGex Virtual Substrate

    Yefei ZHANG  Zunchao LI  Chuang WANG  Feng LIANG  

     
    PAPER-Semiconductor Materials and Devices

      Vol:
    E99-C No:2
      Page(s):
    302-307

    In this paper, an analytical threshold voltage model of the strained gate-all-around MOSFET fabricated on the Si1-xGex virtual substrate is presented by solving the two-dimensional Poisson equation. The impact of key parameters such as the strain, channel length, gate oxide thickness and radius of the silicon cylinder on the threshold voltage has been investigated. It has been demonstrated that the threshold voltage decreases as the strain in the channel increases. The threshold voltage roll-off becomes severe when increasing the Ge content in the Si1-xGex virtual substrate. The model is found to tally well with the device simulator.

  • The Evolution Time of Stochastic Resonance and Its Application in Baseband Signal Sampling

    Chaowei DUAN  Yafeng ZHAN  Hao LIANG  

     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2017/10/17
      Vol:
    E101-B No:4
      Page(s):
    995-999

    Stochastic resonance can improve the signal-to-noise ratio of digital baseband signals. However, the output of SR system needs some time for evolution to achieve global steady-state. This paper first analyzes the evolution time of SR systems, which is an important factor for digital baseband signal processing based on SR. This investigation shows that the sampling number per symbol should be rather large, and the minimum sampling number per symbol is deduced according to the evolution time of SR system.

  • Accuracy of the Minimum Time Estimate for Programs on Heterogeneous Machines

    Dingchao LI  Yuji IWAHORI  Naohiro ISHII  

     
    PAPER-Computer Systems

      Vol:
    E81-D No:1
      Page(s):
    19-26

    Parallelism on heterogeneous machines brings cost effectiveness, but also raises a new set of complex and challenging problems. This paper addresses the problem of estimating the minimum time taken to execute a program on a fine-grained parallel machine composed of different types of processors. In an earlier publication, we took the first step in this direction by presenting a graph-construction method which partitions a given program into several homogeneous parts and incorporates timing constraints due to heterogeneous parallelism into each part. In this paper, to make the method easier to be applied in a scheduling framework and to demonstrate its practical utility, we present an efficient implementation method and compare the results of its use to the optimal schedule lengths obtained by enumerating all possible solutions. Experimental results for several different machine models indicate that this method can be effectively used to estimate a program's minimum execution time.

  • A Robust Signal Recognition Method for Communication System under Time-Varying SNR Environment

    Jing-Chao LI  Yi-Bing LI  Shouhei KIDERA  Tetsuo KIRIMOTO  

     
    PAPER-Pattern Recognition

      Vol:
    E96-D No:12
      Page(s):
    2814-2819

    As a consequence of recent developments in communications, the parameters of communication signals, such as the modulation parameter values, are becoming unstable because of time-varying SNR under electromagnetic conditions. In general, it is difficult to classify target signals that have time-varying parameters using traditional signal recognition methods. To overcome this problem, this study proposes a novel recognition method that works well even for such time-dependent communication signals. This method is mainly composed of feature extraction and classification processes. In the feature extraction stage, we adopt Shannon entropy and index entropy to obtain the stable features of modulated signals. In the classification stage, the interval gray relation theory is employed as suitable for signals with time-varying parameter spaces. The advantage of our method is that it can deal with time-varying SNR situations, which cannot be handled by existing methods. The results from numerical simulation show that the proposed feature extraction algorithm, based on entropy characteristics in time-varying SNR situations,offers accurate clustering performance, and the classifier, based on interval gray relation theory, can achieve a recognition rate of up to 82.9%, even when the SNR varies from -10 to -6 dB.

  • Reducing Aging Effects on Ternary CAM

    Ing-Chao LIN  Yen-Han LEE  Sheng-Wei WANG  

     
    PAPER-Integrated Electronics

      Vol:
    E99-C No:7
      Page(s):
    878-891

    Ternary content addressable memory (TCAM), which can store 0, 1, or X in its cells, is widely used to store routing tables in network routers. Negative bias temperature instability (NBTI) and positive bias temperature instability (PBTI), which increase Vth and degrade transistor switching speed, have become major reliability challenges. This study analyzes the signal probability of routing tables. The results show that many cells retain static stress and suffer significant degradation caused by NBTI and PBTI effects. The bit flipping technique is improved and proactive power gating recovery is proposed to mitigate NBTI and PBTI effects. In order to maintain the functionality of TCAM after bit flipping, a novel TCAM cell design is proposed. Simulation results show that compared to the original architecture, the bit flipping technique improves read static noise margin (SNM) for data and mask cells by 16.84% and 29.94%, respectively, and reduces search time degradation by 12.95%. The power gating technique improves read SNM for data and mask cells by 12.31% and 20.92%, respectively, and reduces search time degradation by 17.57%. When both techniques are used, read SNM for data and mask cells is improved by 17.74% and 30.53%, respectively, and search time degradation is reduced by 21.01%.

  • Automatic Extraction of Layout-Dependent Substrate Effects for RF MOSFET Modeling

    Zhao LI  Ravikanth SURAVARAPU  Kartikeya MAYARAM  C.-J. Richard SHI  

     
    PAPER-Device Modeling

      Vol:
    E87-A No:12
      Page(s):
    3309-3317

    This paper presents CrtSmile--a CAD tool for the automatic extraction of layout-dependent substrate effects for RF MOSFET modeling. CrtSmile incorporates a new scalable substrate model, which depends not only on the geometric layout information of a transistor (the number of gate fingers, finger width, channel length and bulk contact location), but also on the transistor layout and bulk patterns. We show that this model is simple to extract and has good agreement with measured data for a 0.35 µm CMOS process. CrtSmile reads in the layout information of RF transistors in the CIF/GDSII format, performs a pattern-based layout extraction to recognize the transistor layout and bulk patterns. A scalable layout-dependent substrate model is automatically generated and attached to the standard BSIM3 device model as a sub-circuit for use in circuit simulation. A low noise amplifier is evaluated with the proposed CrtSmile tool, showing the importance of layout effects for RF transistor substrate modeling.

  • Crowd Gathering Detection Based on the Foreground Stillness Model

    Chun-Yu LIU  Wei-Hao LIAO  Shanq-Jang RUAN  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2018/03/30
      Vol:
    E101-D No:7
      Page(s):
    1968-1971

    The abnormal crowd behavior detection is an important research topic in computer vision to improve the response time of critical events. In this letter, we introduce a novel method to detect and localize the crowd gathering in surveillance videos. The proposed foreground stillness model is based on the foreground object mask and the dense optical flow to measure the instantaneous crowd stillness level. Further, we obtain the long-term crowd stillness level by the leaky bucket model, and the crowd gathering behavior can be detected by the threshold analysis. Experimental results indicate that our proposed approach can detect and locate crowd gathering events, and it is capable of distinguishing between standing and walking crowd. The experiments in realistic scenes with 88.65% accuracy for detection of gathering frames show that our method is effective for crowd gathering behavior detection.

  • A Realization of Signal-Model-Based SAR Imaging via Atomic Decomposition

    Yesheng GAO  Hui SHENG  Kaizhi WANG  Xingzhao LIU  

     
    PAPER-Digital Signal Processing

      Vol:
    E98-A No:9
      Page(s):
    1906-1913

    A signal-model-based SAR image formation algorithm is proposed in this paper. A model is used to describe the received signal, and each scatterer can be characterized by a set of its parameters. Two parameter estimation methods via atomic decomposition are presented: (1) applying 1-D matching pursuit to azimuthal projection data; (2) applying 2-D matching pursuit to raw data. The estimated parameters are mapped to form a SAR image, and the mapping procedure can be implemented under application guidelines. This algorithm requires no prior information about the relative motion between the platform and the target. The Cramer-Rao bounds of parameter estimation are derived, and the root mean square errors of the estimates are close to the bounds. Experimental results are given to validate the algorithm and indicate its potential applications.

  • A SOM-CNN Algorithm for NLOS Signal Identification

    Ze Fu GAO  Hai Cheng TAO   Qin Yu ZHU  Yi Wen JIAO  Dong LI  Fei Long MAO  Chao LI  Yi Tong SI  Yu Xin WANG  

     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2022/08/01
      Vol:
    E106-B No:2
      Page(s):
    117-132

    Aiming at the problem of non-line of sight (NLOS) signal recognition for Ultra Wide Band (UWB) positioning, we utilize the concepts of Neural Network Clustering and Neural Network Pattern Recognition. We propose a classification algorithm based on self-organizing feature mapping (SOM) neural network batch processing, and a recognition algorithm based on convolutional neural network (CNN). By assigning different weights to learning, training and testing parts in the data set of UWB location signals with given known patterns, a strong NLOS signal recognizer is trained to minimize the recognition error rate. Finally, the proposed NLOS signal recognition algorithm is verified using data sets from real scenarios. The test results show that the proposed algorithm can solve the problem of UWB NLOS signal recognition under strong signal interference. The simulation results illustrate that the proposed algorithm is significantly more effective compared with other algorithms.

  • Receiver Performance Evaluation and Fading Duration Analysis for Concurrent Transmission

    Chun-Hao LIAO  Makoto SUZUKI  Hiroyuki MORIKAWA  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2017/08/07
      Vol:
    E101-B No:2
      Page(s):
    582-591

    Concurrent transmission (CT) is a revolutionary multi-hop protocol that significantly improves the MAC- and network-layer efficiency by allowing synchronized packet collisions. Although its superiority has been empirically verified, there is still a lack of studies on how the receiver survives such packet collisions, particularly in the presence of the carrier frequency offsets (CFO) between the transmitters. This work rectifies this omission by providing a comprehensive evaluation of the physical-layer receiver performance under CT, and a theoretical analysis on the fading duration of the beating effect resulting from the CFO. The main findings from our evaluations are the following points. (1) Beating significantly affects the receiver performance, and an error correcting mechanism is needed to combat the beating. (2) In IEEE 802.15.4 systems, the direct sequence spread spectrum (DSSS) plays such a role in combatting the beating. (3) However, due to the limited length of DSSS, the receiver still suffers from the beating if the fading duration is too long. (4) On the other hand, the basic M-ary FSK mode of IEEE 802.15.4g is vulnerable to CT due to the lack of error correcting mechanism. In view of the importance of the fading duration, we further theoretically derive the closed form of the average fading duration (AFD) of the beating under CT in terms of the transmitter number and the standard deviation of the CFO. Moreover, we prove that the receiver performance can be improved by having higher CFO deviations between the transmitters due to the shorter AFD. Finally, we estimate the AFD in the real system by actually measuring the CFO of a large number of sensor nodes.

  • A Robust Tracking with Low-Dimensional Target-Specific Feature Extraction Open Access

    Chengcheng JIANG  Xinyu ZHU  Chao LI  Gengsheng CHEN  

     
    PAPER-Image Recognition, Computer Vision

      Pubricized:
    2019/04/19
      Vol:
    E102-D No:7
      Page(s):
    1349-1361

    Pre-trained CNNs on ImageNet have been widely used in object tracking for feature extraction. However, due to the domain mismatch between image classification and object tracking, the submergence of the target-specific features by noise largely decreases the expression ability of the convolutional features, resulting in an inefficient tracking. In this paper, we propose a robust tracking algorithm with low-dimensional target-specific feature extraction. First, a novel cascaded PCA module is proposed to have an explicit extraction of the low-dimensional target-specific features, which makes the new appearance model more effective and efficient. Next, a fast particle filter process is raised to further accelerate the whole tracking pipeline by sharing convolutional computation with a ROI-Align layer. Moreover, a classification-score guided scheme is used to update the appearance model for adapting to target variations while at the same time avoiding the model drift that caused by the object occlusion. Experimental results on OTB100 and Temple Color128 show that, the proposed algorithm has achieved a superior performance among real-time trackers. Besides, our algorithm is competitive with the state-of-the-art trackers in precision while runs at a real-time speed.

  • On the Balanced Elementary Symmetric Boolean Functions

    Longjiang QU  Qingping DAI  Chao LI  

     
    LETTER-Cryptography and Information Security

      Vol:
    E96-A No:2
      Page(s):
    663-665

    In this paper, we give some results towards the conjecture that σ2t+1l-1,2t are the only nonlinear balanced elementary symmetric Boolean functions where t and l are positive integers. At first, a unified and simple proof of some earlier results is shown. Then a property of balanced elementary symmetric Boolean functions is presented. With this property, we prove that the conjecture is true for n=2m+2t-1 where m,t (m>t) are two non-negative integers, which verified the conjecture for a large infinite class of integer n.

  • A New Attack on RSA with Known Middle Bits of the Private Key

    Shixiong WANG  Longjiang QU  Chao LI  Shaojing FU  

     
    PAPER-Cryptography and Information Security

      Vol:
    E98-A No:12
      Page(s):
    2677-2685

    In this paper, we investigate the security property of RSA when some middle bits of the private key d are known to an attacker. Using the technique of unravelled linearization, we present a new attack on RSA with known middle bits, which improves a previous result under certain circumstance. Our approach is based on Coppersmith's method for finding small roots of modular polynomial equations.

  • An Optimized Auto-tuning Digital DC--DC Converter Based on Linear-Non-Linear and Predictive PID

    Chuang WANG  Zunchao LI  Cheng LUO  Lijuan ZHAO  Yefei ZHANG  Feng LIANG  

     
    PAPER-Electronic Circuits

      Vol:
    E97-C No:8
      Page(s):
    813-819

    A novel auto-tuning digital DC--DC converter is presented. In order to reduce the recovery time and undershoot, the auto-tuning control combines LnL, conventional PID and a predictive PID with a configurable predictive coefficient. A switch module is used to select an algorithm from the three control algorithms, according to the difference between the error signal and the two initially predefined thresholds. The detection and control logic is designed for both window delay line ADC and $Sigma Delta$ DPWM to correct the delay deviation. When the output of the converter exceeds the quantization range, the digital output of ADC is set at 0 or 1, and the delay line stops working to reduce power consumption. Theoretical analysis and simulations in the CSMC CMOS 0.5,$mu$m process are carried out to verify the proposed DC--DC converter. It is found that the converter achieves a power efficiency of more than 90% at heavy load, and reduces the recovery time and undershoot.

  • Toward Blockchain-Based Spoofing Defense for Controlled Optimization of Phases in Traffic Signal System

    Yingxiao XIANG  Chao LI  Tong CHEN  Yike LI  Endong TONG  Wenjia NIU  Qiong LI  Jiqiang LIU  Wei WANG  

     
    PAPER

      Pubricized:
    2021/09/13
      Vol:
    E105-D No:2
      Page(s):
    280-288

    Controlled optimization of phases (COP) is a core implementation in the future intelligent traffic signal system (I-SIG), which has been deployed and tested in countries including the U.S. and China. In such a system design, optimal signal control depends on dynamic traffic situation awareness via connected vehicles. Unfortunately, I-SIG suffers data spoofing from any hacked vehicle; in particular, the spoofing of the last vehicle can break the system and cause severe traffic congestion. Specifically, coordinated attacks on multiple intersections may even bring cascading failure of the road traffic network. To mitigate this security issue, a blockchain-based multi-intersection joint defense mechanism upon COP planning is designed. The major contributions of this paper are the following. 1) A blockchain network constituted by road-side units at multiple intersections, which are originally distributed and decentralized, is proposed to obtain accurate and reliable spoofing detection. 2) COP-oriented smart contract is implemented and utilized to ensure the credibility of spoofing vehicle detection. Thus, an I-SIG can automatically execute a signal planning scheme according to traffic information without spoofing data. Security analysis for the data spoofing attack is carried out to demonstrate the security. Meanwhile, experiments on the simulation platform VISSIM and Hyperledger Fabric show the efficiency and practicality of the blockchain-based defense mechanism.

  • A Modified Genetic Channel Router

    Akio SAKAMOTO  Xingzhao LIU  Takashi SHIMAMOTO  

     
    PAPER

      Vol:
    E77-A No:12
      Page(s):
    2076-2084

    Genetic algorithms have been shown to be very useful in a variety of search and optimization problems. In this paper, we propose a modified genetic channel router. We adopt the compatible crossover operator and newly designed compatible mutation operator in order to search solution space more effectively, where vertical constraints are integrated. By carefully selected fitness function forms and optimized genetic parameters, the current version speeds up benchmarks on average about 5.83 times faster than that of our previous version. Moreover the total convergence to optimal solutions for benchmarks can be always obtained.

61-76hit(76hit)