Time Series and Data Science Preprocessing Approaches for Earthquake Analysis

Mustafa Kanber, Yunus Santur
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Abstract

Time series are frequently used today to analyze data that changes over time and to predict future trends. Usage areas of time series data include many applications such as financial market forecasts, weather forecasts, sales forecasts, medical diagnostics and stock management. Among the methods, there are techniques such as autoregressive integration, moving average, long-short-term memory neural network, time series condensation, wavelet transform and Frequency Domain. These techniques are chosen depending on the characteristics of the time series data and their intended use. For example, the ARIMA model is used for variable variance and non-stationary time series, while the LSTM model may be more suitable for capturing long-term dependencies. In this article, it has been tried to prove that time series based artificial intelligence systems can be built on fault movements, which are very difficult to predict on earthquake time series data, and it is quite possible to get useful results. In particular, deep learning methods are among the prominent methods in the article. Deep learning methods are used to detect complex structures and analyze large datasets to produce accurate results. These methods include multilayer perceptrons, long-short-term memory neural network, and radial-based function network. It is also emphasized that factors such as the selection of features used in earthquake prediction, data preprocessing, feature engineering and correct model selection are also important. As a result, the use of artificial intelligence techniques on earthquake time series data has great potential in estimating earthquake risk. Deep learning methods perform better, especially for large datasets, and more accurate results can be obtained with the right model selection. However, factors such as data preprocessing and feature selection also need to be considered.
地震分析的时间序列和数据科学预处理方法
如今,时间序列经常用于分析随时间变化的数据并预测未来趋势。时间序列数据的使用领域包括许多应用程序,如金融市场预测、天气预报、销售预测、医疗诊断和库存管理。其中有自回归积分、移动平均、长短期记忆神经网络、时间序列压缩、小波变换和频域等技术。这些技术的选择取决于时间序列数据的特征及其预期用途。例如,ARIMA模型用于可变方差和非平稳时间序列,而LSTM模型可能更适合于捕获长期依赖关系。本文试图证明基于时间序列的人工智能系统可以建立在断层运动上,这是地震时间序列数据很难预测的,并且很有可能得到有用的结果。特别是,深度学习方法是文章中突出的方法之一。深度学习方法用于检测复杂结构和分析大型数据集以产生准确的结果。这些方法包括多层感知器、长短期记忆神经网络和基于径向的函数网络。并强调了地震预测中特征的选择、数据预处理、特征工程和正确的模型选择等因素的重要性。因此,利用人工智能技术对地震时间序列数据进行地震风险估计具有很大的潜力。深度学习方法表现更好,特别是对于大型数据集,通过正确的模型选择可以获得更准确的结果。然而,数据预处理和特征选择等因素也需要考虑。
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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