With the development of communication systems, modulation methods are becoming more and more diverse. Among them, quadrature spatial modulation(QSM) is considered as one method with less capacity and high efficiency. ...With the development of communication systems, modulation methods are becoming more and more diverse. Among them, quadrature spatial modulation(QSM) is considered as one method with less capacity and high efficiency. In QSM, the traditional signal detection methods sometimes are unable to meet the actual requirement of low complexity of the system. Therefore, this paper proposes a signal detection scheme for QSM systems using deep learning to solve the complexity problem. Results from the simulations show that the bit error rate performance of the proposed deep learning-based detector is better than that of the zero-forcing(ZF) and minimum mean square error(MMSE) detectors, and similar to the maximum likelihood(ML) detector. Moreover, the proposed method requires less processing time than ZF, MMSE,and ML.展开更多
异常流量检测现有方法大都是基于有监督的学习,在现实生活中获取并标记异常流量数据样本是极为困难的,存在诸多限制.此外,由于网络异常数据的多样性和复杂性,各种检测方法的自适应性较差,对新出现的异常流量难以判断.针对上述问题,本文...异常流量检测现有方法大都是基于有监督的学习,在现实生活中获取并标记异常流量数据样本是极为困难的,存在诸多限制.此外,由于网络异常数据的多样性和复杂性,各种检测方法的自适应性较差,对新出现的异常流量难以判断.针对上述问题,本文设计了一个基于生成对抗网络和记忆增强模块的半监督异常流量检测框架MeAEG-Net(Memory Augment Based on Generative Adversarial Network),通过只训练正常流量样本数据,比较生成器模块输入流量底层特征的重构误差来达到检测异常的目的 .在模型中使用生成对抗网络来更好地训练生成器,生成器采用自编码器加解码器的结构来解决自编码器易受噪声影响的问题,并在自编码器子网络中添加记忆增强模块来削弱生成器模块的泛化能力,增大异常流量的重构误差.实验证明,本文提出的方法能在只学习正常流量数据样本的前提下达到很好的异常流量检测效果.展开更多
基金supported in part by The Science and Technology Development Fund, Macao SAR, China (0108/2020/A3)in part by The Science and Technology Development Fund, Macao SAR, China (0005/2021/ITP)the Deanship of Scientific Research at Taif University for funding this work。
文摘With the development of communication systems, modulation methods are becoming more and more diverse. Among them, quadrature spatial modulation(QSM) is considered as one method with less capacity and high efficiency. In QSM, the traditional signal detection methods sometimes are unable to meet the actual requirement of low complexity of the system. Therefore, this paper proposes a signal detection scheme for QSM systems using deep learning to solve the complexity problem. Results from the simulations show that the bit error rate performance of the proposed deep learning-based detector is better than that of the zero-forcing(ZF) and minimum mean square error(MMSE) detectors, and similar to the maximum likelihood(ML) detector. Moreover, the proposed method requires less processing time than ZF, MMSE,and ML.
文摘异常流量检测现有方法大都是基于有监督的学习,在现实生活中获取并标记异常流量数据样本是极为困难的,存在诸多限制.此外,由于网络异常数据的多样性和复杂性,各种检测方法的自适应性较差,对新出现的异常流量难以判断.针对上述问题,本文设计了一个基于生成对抗网络和记忆增强模块的半监督异常流量检测框架MeAEG-Net(Memory Augment Based on Generative Adversarial Network),通过只训练正常流量样本数据,比较生成器模块输入流量底层特征的重构误差来达到检测异常的目的 .在模型中使用生成对抗网络来更好地训练生成器,生成器采用自编码器加解码器的结构来解决自编码器易受噪声影响的问题,并在自编码器子网络中添加记忆增强模块来削弱生成器模块的泛化能力,增大异常流量的重构误差.实验证明,本文提出的方法能在只学习正常流量数据样本的前提下达到很好的异常流量检测效果.