现有未知突发信号检测算法是基于噪声加单一突发信号的简单假设的,在实际复杂信号环境会产生大量虚警而失效。针对实际非合作突发通信信号的检测环境除噪声外还包含多个连续信号和一些短突发干扰信号,建立了复杂信号环境模型,提出了适...现有未知突发信号检测算法是基于噪声加单一突发信号的简单假设的,在实际复杂信号环境会产生大量虚警而失效。针对实际非合作突发通信信号的检测环境除噪声外还包含多个连续信号和一些短突发干扰信号,建立了复杂信号环境模型,提出了适用于此环境的基于短时傅里叶变换(short time Fourier transform,STFT)的时序检测器。该检测器利用突发通信信号时间上短持续的特点剔除连续信号和短突发干扰造成的虚警。对该检测器的检测性能进行了分析和仿真,结果表明在复杂信号环境中当常规检测器由于虚警概率很高失效时,该检测器可以同时获得较低的虚警概率和较高的检测概率,因而适用于复杂信号环境中非合作突发信号检测。该检测器运算量小,易于实时实现。展开更多
Failure detection module is one of important components in fault-tolerant distributed systems,especially cloud platform.However,to achieve fast and accurate detection of failure becomes more and more difficult especia...Failure detection module is one of important components in fault-tolerant distributed systems,especially cloud platform.However,to achieve fast and accurate detection of failure becomes more and more difficult especially when network and other resources' status keep changing.This study presented an efficient adaptive failure detection mechanism based on volterra series,which can use a small amount of data for predicting.The mechanism uses a volterra filter for time series prediction and a decision tree for decision making.Major contributions are applying volterra filter in cloud failure prediction,and introducing a user factor for different QoS requirements in different modules and levels of IaaS.Detailed implementation is proposed,and an evaluation is performed in Beijing and Guangzhou experiment environment.展开更多
文摘现有未知突发信号检测算法是基于噪声加单一突发信号的简单假设的,在实际复杂信号环境会产生大量虚警而失效。针对实际非合作突发通信信号的检测环境除噪声外还包含多个连续信号和一些短突发干扰信号,建立了复杂信号环境模型,提出了适用于此环境的基于短时傅里叶变换(short time Fourier transform,STFT)的时序检测器。该检测器利用突发通信信号时间上短持续的特点剔除连续信号和短突发干扰造成的虚警。对该检测器的检测性能进行了分析和仿真,结果表明在复杂信号环境中当常规检测器由于虚警概率很高失效时,该检测器可以同时获得较低的虚警概率和较高的检测概率,因而适用于复杂信号环境中非合作突发信号检测。该检测器运算量小,易于实时实现。
基金supported by the National High-tech Research and Development Program(863) of China under Grant No. 2011AA01A102
文摘Failure detection module is one of important components in fault-tolerant distributed systems,especially cloud platform.However,to achieve fast and accurate detection of failure becomes more and more difficult especially when network and other resources' status keep changing.This study presented an efficient adaptive failure detection mechanism based on volterra series,which can use a small amount of data for predicting.The mechanism uses a volterra filter for time series prediction and a decision tree for decision making.Major contributions are applying volterra filter in cloud failure prediction,and introducing a user factor for different QoS requirements in different modules and levels of IaaS.Detailed implementation is proposed,and an evaluation is performed in Beijing and Guangzhou experiment environment.