Earthquake Magnitude Prediction using Spatia-temporal Features Learning Based on Hybrid CNN- BiLSTM Model

Parisa Kavianpour, M. Kavianpour, E. Jahani, Amin Ramezani
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引用次数: 4

Abstract

Earthquakes are a very catastrophic natural event that occurs due to sudden changes in the earth's crust, leading to human, financial, and environmental losses in society. Therefore, employing an efficient and dependable method for earthquake prediction can significantly reduce casualties. In this regard, we proposed a deep neural network called the hybrid convolutional neural network and bi-directional long-short-term memory (HC-BiLSTM) to predict the mean magnitude of the future earthquake in a specific area of Japan. To achieve this goal, we suggest a strategy based on four key steps: the division of areas, the preprocessing, the spatial and temporal feature learning, and the prediction. In the division of areas step, The part of Japan is divided into 49 smaller areas to better predict the next earthquake's location. The preprocessing step uses the zero-order hold method in the time series of the mean magnitude of the earthquake. In the next step, the learning spatial and temporal characteristics between earthquake data include three layers of CNN and pooling and two layers of LSTM. Finally, the prediction step has two fully connected layers that combine information supplied by HC-BiLSTMs to predict the mean magnitude for the earthquake next month. As a result, using a comparative method, this study demonstrates the superiority of the proposed method over other common earthquake prediction methods.
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基于CNN- BiLSTM混合模型的时空特征学习地震震级预测
地震是一种非常灾难性的自然事件,由于地壳的突然变化而发生,导致人类、经济和社会环境的损失。因此,采用一种高效、可靠的地震预报方法可以显著减少人员伤亡。在这方面,我们提出了一种称为混合卷积神经网络和双向长短期记忆(HC-BiLSTM)的深度神经网络来预测日本特定地区未来地震的平均震级。为了实现这一目标,我们提出了一个基于四个关键步骤的策略:区域划分、预处理、时空特征学习和预测。在区域划分步骤中,日本部分被划分为49个较小的区域,以便更好地预测下一次地震的位置。预处理步骤采用地震平均震级时间序列的零阶保持方法。下一步,地震数据间的时空特征学习包括三层CNN和pooling以及两层LSTM。最后,预测步骤有两个完全相连的层,结合HC-BiLSTMs提供的信息来预测下个月地震的平均震级。结果表明,本文提出的方法与其他常用的地震预报方法相比,具有一定的优越性。
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