Earthquake Prediction using Long Short Term Memory on Spatio-Temporally Segmented Data

Ankit Sonthalia, S. Pasari, Sonu Devi
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Abstract

This paper describes a machine learning model for predicting earthquakes on the basis of past earthquake data. In particular, this study uses the Long Short Term Memory (LSTM) model, a neural network model designed to operate on time-series data with long-term dependencies. Here, the instrumental earthquake data is considered from three selected locations in Indonesia. First, the dataset is pre-processed by segmenting it into time intervals and space grids. The multi-dimensional time-series data is then fed into the network to output the probability of an earthquake in the next interval. This method was originally introduced by Wang et al. [1] and achieved an accuracy close to 85% on a dataset from Mainland China (1966–2016). To the best of our knowledge, no subsequent works have attempted to reproduce their results on different datasets, or introduce enhancements. This research work has implemented the same model on three different datasets. Further, the softmax activation function is replaced with the sigmoid activation function. This ensures that the probability values of earthquakes occurring in the segmented grids are independent of each other and are not rendered mutually exhaustive or exclusive events. Finally, a failure mode of this model is mentioned by showing that it performs poorly to predict large earthquakes.
基于时空分段数据的长短期记忆地震预报
本文描述了一种基于过去地震数据的地震预测机器学习模型。特别地,本研究使用了长短期记忆(LSTM)模型,这是一种设计用于处理具有长期依赖性的时间序列数据的神经网络模型。这里,仪器地震数据考虑来自印度尼西亚三个选定地点。首先,对数据集进行预处理,将其分割为时间间隔和空间网格。然后将多维时间序列数据输入到网络中,以输出下一个间隔发生地震的概率。该方法最初由Wang等人[1]提出,在中国大陆(1966-2016)的数据集上实现了接近85%的准确率。据我们所知,没有后续的作品试图在不同的数据集上重现他们的结果,或者引入增强功能。本研究工作在三个不同的数据集上实现了相同的模型。将softmax激活函数替换为sigmoid激活函数。这确保了在分割网格中发生地震的概率值彼此独立,并且不会呈现相互详尽或排他性事件。最后,提出了该模型的失效模式,表明该模型在预测大地震时表现不佳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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