论文标题
2D混合方法:地震附近时间附近的VLF信号振幅变化的情况
2D Hybrid method:Case of VLF signal amplitude variations in the time vicinity of an earthquake
论文作者
论文摘要
从自然现象的嘈杂数据中提取信息,例如声音,地震,电离层和大脑活动,以及宇宙物体的各种排放非常困难。作为在此类具有挑战性的数据集中找到周期性的一种方法,提出了采用小波的2D混合方法。我们的技术在两个独立周期轴定义的时期平面上产生一个小波变换相关强度轮廓图。值得注意的是,通过将峰扩散到第二维,我们的方法改善了周期平面中检测到的振荡的明显分辨率,并使用相关系数识别信号变化的方向。我们证明了2D混合技术在意大利发出的非常低频率(VLF)信号的性能,并在塞尔维亚在2010年11月3日发生地震的时间附近记录在塞尔维亚Kraljevo附近。我们在120-130 s的范围内确定了一个明显的信号,该信号仅与被考虑的地震相关。将来的分析将采用其他可能检测快速瞬态振荡的小波,例如超级程序。
Extraction of information in the form of oscillations from noisy data of natural phenomena such as sounds, earthquakes, ionospheric and brain activity, and various emissions from cosmic objects is extremely difficult. As a method for finding periodicity in such challenging data sets, the 2D Hybrid approach, which employs wavelets, is presented. Our technique produces a wavelet transform correlation intensity contour map for two (or one) time series on a period plane defined by two independent period axes. Notably, by spreading peaks across the second dimension, our method improves apparent resolution of detected oscillations in the period plane and identifies the direction of signal changes using correlation coefficients. We demonstrate the performance of the 2D Hybrid technique on a very low frequency (VLF) signal emitted in Italy and recorded in Serbia in time vicinity of the occurrence of an earthquake on November 3, 2010, near Kraljevo, Serbia. We identified a distinct signal in the range 120-130 s that appears only in association with the considered earthquake. Other wavelets, such as Superlets, which may detect fast transient oscillations, will be employed in the future analysis.