The search functionality is under construction.

Author Search Result

[Author] Yu PAN(12hit)

1-12hit
  • BER Analysis of WFRFT-Based Systems with Order Offset

    Yuan LIANG  Xinyu DA  Ruiyang XU  Lei NI  Dong ZHAI  Yu PAN  

     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2018/07/25
      Vol:
    E102-B No:2
      Page(s):
    277-284

    We propose a novel bit error rate (BER) analysis model of weighted-type fractional Fourier transform (WFRFT)-based systems with WFRFT order offset Δα. By using the traditional BPSK BER analysis method, we deduce the equivalent signal noise ratio (SNR), model the interference in the channel as a Gaussian noise with non-zero mean, and provide a theoretical BER expression of the proposed system. Simulation results show that its theoretical BER performance well matches the empirical performance, which demonstrates that the theoretical BER analysis proposed in this paper is reliable.

  • Power-Efficient Instancy Aware DRAM Scheduling

    Gung-Yu PAN  Chih-Yen LAI  Jing-Yang JOU  Bo-Cheng Charles LAI  

     
    PAPER-Systems and Control

      Vol:
    E98-A No:4
      Page(s):
    942-953

    Nowadays, computer systems are limited by the power and memory wall. As the Dynamic Random Access Memory (DRAM) has dominated the power consumption in modern devices, developing power-saving approaches on DRAM has become more and more important. Among several techniques on different abstract levels, scheduling-based power management policies can be applied to existing memory controllers to reduce power consumption without causing severe performance degradation. Existing power-aware schedulers cluster memory requests into sets, so that the large portion of the DRAM can be switched into the power saving mode; however, only the target addresses are taken into consideration when clustering, while we observe the types (read or write) of requests can play an important role. In this paper, we propose two scheduling-based power management techniques on the DRAM controller: the inter-rank read-write aware clustering approach greatly reduces the active standby power, and the intra-rank read-write aware reordering approach mitigates the performance degradation. The simulation results show that the proposed techniques effectively reduce 75% DRAM power on average. Compared with the existing policy, the power reduction is 10% more on average with comparable or less performance degradation for the proposed techniques.

  • VMD-Informer-DCC for Photovoltaic Power Prediction Open Access

    Yun WU  Xingyu PAN  Jieming YANG  

     
    PAPER-Fundamental Theories for Communications

      Vol:
    E107-B No:7
      Page(s):
    487-494

    Photovoltaic power is an important part of sustainable development. Accurate prediction of photovoltaic power can improve energy utilization and prevent resource waste. However, the volatility and uncertainty of photovoltaic power make power prediction difficult. Although Informer has achieved good prediction results in the field of time series prediction, it does not put forward a good solution for the volatility of series and the leakage of future information when stacking. Therefore, this paper proposes a photovoltaic power prediction model based on VMD-Informer-DCC. Firstly, Spearman’s feature selector was used to screen the sequence features. Then, the VMD layer was added to the encoder of Informer to decompose the feature sequence to reduce the volatility of the feature sequence. Finally, the dilated causal convolutional layer was used to replace the Self-attention distilling of Informer, which expanded the receptive field of Informer information extraction and ensured the causality of time series prediction. To verify the effectiveness of the model, this paper uses the dataset of a photovoltaic power plant in Jilin Province in 2021 to conduct a large number of experiments. The results show that the VMD-Informer-DCC model has high prediction accuracy and wide applicability.

  • FCAN: Flash Crowds Alleviation Network Using Adaptive P2P Overlay of Cache Proxies

    Chenyu PAN  Merdan ATAJANOV  Mohammad BELAYET HOSSAIN  Toshihiko SHIMOKAWA  Norihiko YOSHIDA  

     
    PAPER

      Vol:
    E89-B No:4
      Page(s):
    1119-1126

    With the rapid spread of information and ubiquitous access of browsers, flash crowds, a sudden, unanticipated surge in the volume of request rates, have become the bane of many Internet websites. This paper models and presents FCAN, an adaptive network that dynamically optimizes the system structure between peer-to-peer (P2P) and client-server (C/S) configurations to alleviate flash crowds effect. FCAN constructs P2P overlay on cache proxy server layer to distribute the flash traffic from origin server. It uses policy-configured DNS redirection to route the client requests in balance, and adopts strategy load detection to monitor and react the load changes. Our preliminary simulation results showed that the system is overall well behaved, which validates the correctness of our design.

  • Gender Attribute Mining with Hand-Dorsa Vein Image Based on Unsupervised Sparse Feature Learning

    Jun WANG  Guoqing WANG  Zaiyu PAN  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2017/10/12
      Vol:
    E101-D No:1
      Page(s):
    257-260

    Gender classification with hand-dorsa vein information, a new soft biometric trait, is solved with the proposed unsupervised sparse feature learning model, state-of-the-art accuracy demonstrates the effectiveness of the proposed model. Besides, we also argue that the proposed data reconstruction model is also applicable to age estimation when comprehensive database differing in age is accessible.

  • Secure Communication Using Scramble Phase Assisting WFRFT

    Yuan LIANG  Xinyu DA  Ruiyang XU  Lei NI  Dong ZHAI  Yu PAN  

     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2018/10/03
      Vol:
    E102-B No:4
      Page(s):
    779-789

    In this paper, a scramble phase assisting weighted-type fractional Fourier transform (SPA-WFRFT) based system is proposed to guarantee the communication's security. The original transmitting signal is divided into two parts. The first part is modulated by WFRFT and subsequently makes up the constellation beguiling. The other part is used to generate the scramble phase and also to assist in the encryption of the WFRFT modulated signal dynamically. The novel constellation optimal model is built and solved through the genetic algorithm (GA) for the constellation beguiling. And the double pseudo scheme is implemented for the scramble phase generation. Theoretical analyses show that excellent security performances and high spectral efficiency can be attained. Final simulations are carried out to evaluate the performances of the SPA-WFRFT based system, and demonstrate that the proposed system can effectively degrade the unauthorized receivers' bit error rate (BER) performance while maintaining its own communication quality.

  • Hand-Dorsa Vein Recognition Based on Selective Deep Convolutional Feature

    Zaiyu PAN  Jun WANG  

     
    LETTER-Pattern Recognition

      Pubricized:
    2020/03/04
      Vol:
    E103-D No:6
      Page(s):
    1423-1426

    A pre-trained deep convolutional neural network (DCNN) is adopted as a feature extractor to extract the feature representation of vein images for hand-dorsa vein recognition. In specific, a novel selective deep convolutional feature is proposed to obtain more representative and discriminative feature representation. Extensive experiments on the lab-made database obtain the state-of-the-art recognition result, which demonstrates the effectiveness of the proposed model.

  • Hand-Dorsa Vein Recognition Based on Task-Specific Cross-Convolutional-Layer Pooling Open Access

    Jun WANG  Yulian LI  Zaiyu PAN  

     
    LETTER-Pattern Recognition

      Pubricized:
    2019/09/09
      Vol:
    E102-D No:12
      Page(s):
    2628-2631

    Hand-dorsa vein recognition is solved based on the convolutional activations of the pre-trained deep convolutional neural network (DCNN). In specific, a novel task-specific cross-convolutional-layer pooling is proposed to obtain the more representative and discriminative feature representation. Rigorous experiments on the self-established database achieves the state-of-the-art recognition result, which demonstrates the effectiveness of the proposed model.

  • An Evolutionary Approach Based on Symmetric Nonnegative Matrix Factorization for Community Detection in Dynamic Networks

    Yu PAN  Guyu HU  Zhisong PAN  Shuaihui WANG  Dongsheng SHAO  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2019/09/02
      Vol:
    E102-D No:12
      Page(s):
    2619-2623

    Detecting community structures and analyzing temporal evolution in dynamic networks are challenging tasks to explore the inherent characteristics of the complex networks. In this paper, we propose a semi-supervised evolutionary clustering model based on symmetric nonnegative matrix factorization to detect communities in dynamic networks, named sEC-SNMF. We use the results of community partition at the previous time step as the priori information to modify the current network topology, then smooth-out the evolution of the communities and reduce the impact of noise. Furthermore, we introduce a community transition probability matrix to track and analyze the temporal evolutions. Different from previous algorithms, our approach does not need to know the number of communities in advance and can deal with the situation in which the number of communities and nodes varies over time. Extensive experiments on synthetic datasets demonstrate that the proposed method is competitive and has a superior performance.

  • Frequency-Domain Iterative Block DFE Using Erasure Zones and Improved Parameter Estimation

    Jian-Yu PAN  Kuei-Chiang LAI  Yi-Ting LI  Szu-Lin SU  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2021/03/22
      Vol:
    E104-B No:9
      Page(s):
    1159-1171

    Iterative block decision feedback equalization with hard-decision feedback (HD-IBDFE) was proposed for single-carrier transmission with frequency-domain equalization (SC-FDE). The detection performance hinges upon not only error propagation, but also the accuracy of estimating the parameters used to re-compute the equalizer coefficients at each iteration. In this paper, we use the erasure zone (EZ) to de-emphasize the feedback values when the hard decisions are not reliable. EZ use also enables a more accurate, and yet computationally more efficient, parameter estimation method than HD-IBDFE. We show that the resulting equalizer coefficients share the same mathematical form as that of the HD-IBDFE, thereby preserving the merit of not requiring matrix inverse operations in calculating the equalizer coefficients. Simulations show that, by using the EZ and the proposed parameter estimation method, a significant performance improvement over the conventional HD-IBDFE can be achieved, but with lower complexity.

  • A TDMA-Based Hybrid Transmission MAC Protocol for Heterogeneous Vehicular Network

    Tianjiao ZHANG  Qi ZHU  Guangjun LIANG  Jianfang XIN  Ziyu PAN  

     
    PAPER-Terrestrial Wireless Communication/Broadcasting Technologies

      Pubricized:
    2017/10/06
      Vol:
    E101-B No:4
      Page(s):
    1142-1151

    Vehicular Ad hoc Network (VANET) is an important part of the Intelligent Transportation System (ITS). VANETs can realize communication between moving vehicles, infrastructures and other intelligent mobile terminals, which can greatly improve the road safety and traffic efficiency effectively. Existing studies of vehicular ad hoc network usually consider only one data transmission model, while the increasing density of traffic data sources means that the vehicular ad hoc network is evolving into Heterogeneous Vehicular Network (HetVNET) which needs hybrid data transmission scheme. Considering the Heterogeneous Vehicular Network, this paper presents a hybrid transmission MAC protocol including vehicle to vehicle communication (V2V) and vehicle to infrastructure communication (V2I/I2V). In this protocol, the data are identified according to timeliness, on the base of the traditional V2V and V2I/I2V communication. If the time-sensitive data (V2V data) fail in transmission, the node transmits the data to the base station and let the base station cooperatively transmit the data with higher priority. This transmission scheme uses the large transmission range of base station in an effective manner. In this paper, the queueing models of the vehicles and base station are analyzed respectively by one-dimensional and two-dimensional Markov Chain, and the expressions of throughput, packet drop rate and delay are also derived. The simulation results show that this MAC protocol can improve the transmission efficiency of V2V communication and reduce the delay of V2V data without losing the system performance.

  • Bimodal Vein Recognition Based on Task-Specific Transfer Learning

    Guoqing WANG  Jun WANG  Zaiyu PAN  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2017/04/17
      Vol:
    E100-D No:7
      Page(s):
    1538-1541

    Both gender and identity recognition task with hand vein information is solved based on the proposed cross-selected-domain transfer learning model. State-of-the-art recognition results demonstrate the effectiveness of the proposed model for pattern recognition task, and the capability to avoid over-fitting of fine-tuning DCNN with small-scaled database.