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Pattern Recognition for Flank Eruption Forecasting: An Application at Mount Etna Volcano (Sicily, Italy)

机译:侧面爆发预报的模式识别:在埃特纳火山(意大利西西里岛)上的应用

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A volcano can be defined as a complex system, not least for the hidden clues related to its internal nature. Innovative models grounded in the Artificial Sciences, have been proposed for a novel pattern recognition analysis at Mt. Etna volcano. The reference monitoring dataset dealt with real data of 28 parameters collected between January 2001 and April 2005, during which the volcano underwent the July-August 2001, October 2002-January 2003 and September 2004-April 2005 flank eruptions. There were 301 eruptive days out of an overall number of 1581 investigated days. The analysis involved successive steps. First, the TWIST algorithm was used to select the most predictive attributes associated with the flank eruption target. During his work, the algorithm TWIST selected 11 characteristics of the input vector: among them SO2 and CO2 emissions, and also many other attributes whose linear correlation with the target was very low. A 5 × 2 Cross Validation protocol estimated the sensitivity and specificity of pattern recognition algorithms. Finally, different classification algorithms have been compared to understand if this pattern recognition task may have suitable results and which algorithm performs best. Best results (higher than 97% accuracy) have been obtained after performing advanced Artificial Neural Networks, with a sensitivity and specificity estimates over 97% and 98%, respectively. The present analysis highlights that a suitable monitoring dataset inferred hidden information about volcanic phenomena, whose highly non-linear processes are enhanced.
机译:火山可以定义为一个复杂的系统,尤其是对于与其内部性质有关的隐藏线索。已经提出了基于人工科学的创新模型,用于在Mt.进行新颖的模式识别分析。埃特纳火山。参考监测数据集处理了2001年1月至2005年4月收集的28个参数的真实数据,在此期间,火山经历了2001年7月至2001年8月,2002年10月至2003年1月以及2004年9月至2005年4月的侧翼爆发。在被调查的1581天中,总共有301天爆发。分析涉及连续步骤。首先,TWIST算法用于选择与侧面爆发目标相关的最具预测性的属性。在他的工作期间,TWIST算法选择了输入矢量的11个特征:其中包括SO2和CO2排放,以及许多其他属性,这些属性与目标的线性相关性非常低。 5×2交叉验证协议估计了模式识别算法的敏感性和特异性。最后,已比较了不同的分类算法,以了解此模式识别任务是否可能具有合适的结果以及哪种算法效果最佳。进行先进的人工神经网络后,可获得最佳结果(高于97%的准确度),其灵敏度和特异性估计分别超过97%和98%。本分析强调,一个合适的监测数据集可以推断出有关火山现象的隐藏信息,从而增强了其高度非线性的过程。

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