Long-Short Term Memory (LSTM) Networks with Time Series and Spatio-Temporal Approaches Applied in Forecasting Earthquakes in the Philippines

A. C. Fabregas, Patrick Arellano, Andrea Nicole D. Pinili
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引用次数: 4

Abstract

A series of large earthquakes has been observed in different places in the Philippines in the year of 2019. These earthquake events led to destruction of infrastructures, households, heritage sites, and even multiple number of human lives. Earthquakes are hard to predict or forecast, which is why it is considered as a big challenge in the field of seismology. In this work, Rule Based Algorithm was used to classify the regions based on the latitude and longitude values, while Long Short-Term Memory (LSTM) Networks was used to forecast the following variables: frequency, maximum magnitude, and average depth of earthquake events in a specific region in a given year. The developed system was able to produce satisfactory results in the classification of regions, as well as in forecasting the maximum magnitude of earthquake events. The obtained results showed an improved prediction for the maximum magnitude, by considering both time series and spatiotemporal analysis, compared to previous prediction studies.
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基于时间序列和时空方法的长短期记忆网络在菲律宾地震预报中的应用
2019年,菲律宾不同地区发生了一系列大地震。这些地震事件导致了基础设施、家庭、遗产遗址的破坏,甚至导致了许多人的生命。地震是难以预测或预测的,这就是为什么它被认为是地震学领域的一个巨大挑战。在这项工作中,使用基于规则的算法根据纬度和经度值对区域进行分类,而使用长短期记忆网络(LSTM)预测以下变量:特定地区在给定年份的地震事件频率,最大震级和平均深度。开发的系统能够在区域分类以及预测地震事件的最大震级方面产生令人满意的结果。结果表明,综合考虑时间序列和时空分析,对最大震级的预测比以往的预测有所改进。
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