分形分析及其在核爆炸地震模式识别中的应用

L. Dai-zhi, R. Star, Wei Yinkang, Zhao Ke, Su Juan, Jiang Weimin
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引用次数: 2

摘要

通过对地下核爆炸和自然地震地震信号的处理和分析,说明地震信号在时域上具有统计自仿射分形特征,而对数功率谱得到的分形维数D不能作为地震模式识别的有效特征。此外,发现小波分解各尺度上的信号“能量”与尺度密切相关,并且在细节信号的“能谱”上出现一个顶点,因此,所提倡的两种特征很有可能在地震模式识别应用中得到利用。提供的识别结果表明,所提出的特征提取和选择方法取得了改进和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fractal analysis with applications to seismic pattern recognition of nuclear explosion
Based on the processing and analysis of seismic signals originating from underground nuclear explosions and natural earthquakes, it is illustrated that the seismic signals in the time domain possess the characteristics of statistical self-affine fractals, whilst the fractal dimension D yielded from logarithmic power spectrum does not serve as an effective feature for seismic pattern recognition. Moreover, it is found that the signal "energy" at each scale of the wavelet decomposition relates closely to the scale, and that an apex appeared on the "energy spectrum" of the detail signal, hence, the two kinds of features advocated are very likely to be utilized in seismic pattern recognition applications. The provided recognition results show the improvement and performance achieved by the proposed feature extraction and selection methods.
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