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确定性信号分解与平稳随机信号分解的统一研究 被引量:8

Unified study on the decomposition for deterministic signals and stationary random signals
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摘要 对确定性信号分解与平稳随机信号分解进行了深入统一的研究。首先根据线性系统稳定性理论,分别给出正则稳定情况下与边界稳定情况下2种信号分解的统一研究结果。然后根据线性空间投影理论,分别给出正交投影情况下与自投影情况下2种信号分解的统一研究结果。前一种研究明确具体且物理意义清晰,后一种研究数学意义与几何意义清晰,将两者合在一起研究,相得益彰。 The unified decomposition theories and methods for deterministic signals and stationary random signals were deeply studied. According to the stability theory of linear systems, the unified results of signal decomposition under both regular stable and boundary stable conditions were given respectively. The unified results of signal decomposition under both orthogonal projection and self projection conditions were also provided based on the linear space projection theory. The former is clear and definite in its physical meaning, and the latter is clear in its mathematical and geometrical meanings. They are both complement with each other.
出处 《通信学报》 EI CSCD 北大核心 2016年第10期1-8,共8页 Journal on Communications
基金 国家自然科学基金资助项目(No.61172108,No.61139001,No.81241059,No.61671105)
关键词 信号分解 线性系统 正则稳定 边界稳定 线性空间 正交投影 自投影 signal decomposition, linear system, regular stability, boundary stability, linear space, orthogonal projection, self projection
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参考文献11

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