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首页> 外文期刊>Advances in Engineering Software >Self-organized maps based neural networks for detection of possible earthquake precursory electric field patterns
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Self-organized maps based neural networks for detection of possible earthquake precursory electric field patterns

机译:基于自组织图的神经网络,用于检测可能的地震前兆电场模式

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摘要

Some physical parameters of the nature are known to have precursory correlation to the preceding earthquakes. Unfortunately, due to several uncertainties and structural variations of the geophysical faults a definite relationship that repetitively indicates occurrence time, magnitude and epicenter of a probable earthquake could not been constructed yet. Some recent investigations focus on distinction of earthquake precursory anomalous geo-electric field patterns. Highly sensitive monopolar electric field probes are used in measurement of them for more than four years, within a network of 15 stations located in Northwestern Anatolia. In this study, a neural network approach is proposed for detection of hazard precursory anomalous signal patterns. Correlation between the spatio-temporal electric field data measured by different stations and the regional seismicity is processed before being applied into the model for classification purposes. Main concern of this study is solving the classification problem of acquired signal patterns where time scale variation of the pattern window is high.
机译:已知一些自然界的物理参数与先前的地震具有先验相关性。不幸的是,由于地球物理断层的一些不确定性和结构变化,一种确定的关系不能重复地表明可能发生地震的发生时间,震级和震中。最近的一些研究集中在区分地震前兆异常地电场模式。在位于安纳托利亚西北部的15个站点组成的网络中,高度敏感的单极电场探头用于测量它们已有四年多了。在这项研究中,提出了一种用于检测危险先兆异常信号模式的神经网络方法。在将不同站点测量的时空电场数据与区域地震活动性之间的相关性进行处理之前,将其应用到模型中进行分类。这项研究的主要关注点是解决模式窗口时标变化较大的获取信号模式的分类问题。

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