基于分布式多传感器DCNN和多元时间序列分类的地震预警技术

Ritik Masand, Saveen Kumar, Ishita Choudhary, Syed Md Furquan, Naqeeb Ahmed
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引用次数: 1

摘要

地震早期预警系统可以挽救很多人的生命。它还可以用于跟踪关键的基础设施和资产。近年来的地震预报研究主要是基于地震波的到达和地震活动性指数的发展,EEWS可以分为两类。第一种方法可以在几秒钟内生成警报。利用深度卷积神经网络,建立了一种新的基于地震活动性指标的EEWS模型。在本研究中,神经EEWS (NEEWS)被描述为一种在地震发生前预测地震大小和位置的方法。当地震被发现得足够早时,人们可以更快地逃离不安全的地区。EEW系统会在地震发生前发出警报。地震的震级必须确定。受益于EEW系统的人数取决于他们离此类强大事件的距离。因此,确定这些地震的确切地点对居民的安心至关重要。因此,本文使用地震震级,建议震级、位置和涉及的各种参数。震级预测算法已经被创建并训练为典型的震级范围,利用可用的记录作为一个全面的数据集提供所需的值。该技术基于深度卷积神经网络(DCNN),该网络可以从提取的波形中提取重要特征,使分类器能够在地震的基本框架中实现可靠的性能以及多传感器功能。建议的方法增强了分类和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Distributed Multi-Sensor DCNN & Multivariate Time Series Classification Based technique for Earthquake early warning
An early warning system for earthquakes could save a lot of lives. It can also be used to keep track of critical infrastructure and assets. Recent earthquake prediction research aimed at developing based on the arrival of P waves and seismicity indices, an EEWS can be categorised into two groups.The first method can generate alerts in a matter of seconds. Using Deep convolutional neural networks, a novel seismicity indicator-based EEWS model. In this study, neural EEWS (NEEWS) is described as a method for predicting earthquake size and location before they happen. When an earthquake is discovered early enough, people can flee unsafe areas sooner.EEW system generates an alarm before it generates an earthquake. the magnitude of the earthquake must be determined. The number of people who benefit from EEW systems is determined by how far they are from such powerful incidents. As a result, pinpointing the exact site of these tremors is crucial for inhabitants' peace of mind.As a result, using earthquake Ml magnitudes, this article suggests a magnitude, location, and various parameters involved. Magnitude prediction algorithms have been created and trained for typical magnitude ranges that provide desired values utilising available records as a comprehensive data set. The suggested technique is pinned on a Deep convolutional neural network (DCNN) that can extract significant characteristics from extracted waveforms, allowing the classifier to achieve a reliable performance in the essential frameworks of the earthquake along with multisensor functioning. The suggested approach has enhanced classification and accuracies.
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