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A comparison of classical and intelligent methods to detect potential thermal anomalies before the 11 August 2012 Varzeghan, Iran, earthquake (M _w 6.4)

机译:比较经典和智能方法以检测2012年8月11日伊朗Varzeghan地震前潜在的热异常(M _w 6.4)

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In this paper, a number of classical and intelligent methods, including interquartile, autoregressive integrated moving average (ARIMA), artificial neural network (ANN) and support vector machine (SVM), have been proposed to quantify potential thermal anomalies around the time of the 11 August 2012 Varzeghan, Iran, earthquake (M_w 6.4). The duration of the data set, which is comprised of Aqua-MODIS land surface temperature (LST) night-time snapshot images, is 62 days. In order to quantify variations of LST data obtained from satellite images, the air temperature (AT) data derived from the meteorological station close to the earthquake epicenter has been taken into account. For the models examined here, results indicate the following: (i) ARIMA models, which are the most widely used in the time series community for short-term forecasting, are quickly and easily implemented, and can efficiently act through linear solutions. (ii) A multilayer perceptron (MLP) feed-forward neural network can be a suitable non-parametric method to detect the anomalous changes of a non-linear time series such as variations of LST. (iii) Since SVMs are often used due to their many advantages for classification and regression tasks, it can be shown that, if the difference between the predicted value using the SVM method and the observed value exceeds the pre-defined threshold value, then the observed value could be regarded as an anomaly. (iv) ANN and SVM methods could be powerful tools in modeling complex phenomena such as earthquake precursor time series where we may not know what the underlying data generating process is. There is good agreement in the results obtained from the different methods for quantifying potential anomalies in a given LST time series. This paper indicates that the detection of the potential thermal anomalies derive credibility from the overall efficiencies and potentialities of the four integrated methods.
机译:本文提出了许多经典和智能的方法,包括四分位数,自回归综合移动平均值(ARIMA),人工神经网络(ANN)和支持向量机(SVM),以量化潜在的热异常。 2012年8月11日,伊朗Varzeghan,地震(M_w 6.4)。数据集的持续时间为62天,其中包括Aqua-MODIS地表温度(LST)夜间快照图像。为了量化从卫星图像获得的LST数据的变化,已经考虑了从靠近地震震中的气象站获得的气温(AT)数据。对于此处检查的模型,结果表明:(i)ARIMA模型是时间序列社区中用于短期预测的最广泛使用的模型,可以快速,轻松地实施,并且可以通过线性解决方案有效地发挥作用。 (ii)多层感知器(MLP)前馈神经网络可以是一种合适的非参数方法,用于检测非线性时间序列的异常变化(例如LST的变化)。 (iii)由于支持向量机由于其在分类和回归任务中的许多优势而经常被使用,因此可以证明,如果使用支持向量机方法的预测值与观测值之间的差值超过预定阈值,则观测值可被视为异常。 (iv)神经网络和支持向量机方法可能是建模复杂现象(如地震前兆时间序列)的有力工具,在这些现象中我们可能不知道底层的数据生成过程是什么。从不同方法量化给定LST时间序列中的潜在异常所获得的结果具有良好的一致性。本文表明,潜在的热异常的检测从四种集成方法的整体效率和潜力中获得了可信度。

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