IoT-Fog-Cloud Centric Earthquake Monitoring and Prediction

Kanika Saini, S. Kalra, S. Sood
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引用次数: 3

Abstract

Earthquakes are among the most inevitable natural catastrophes. The uncertainty about the severity of the earthquake has a profound effect on the burden of disaster and causes massive economic and societal losses. Although unpredictable, it can be expected to ameliorate damage and fatalities, such as monitoring and predicting earthquakes using the Internet of Things (IoT). With the resurgence of the IoT, an emerging innovative approach is to integrate IoT technology with Fog and Cloud Computing to augment the effectiveness and accuracy of earthquake monitoring and prediction. In this study, the integrated IoT-Fog-Cloud layered framework is proposed to predict earthquakes using seismic signal information. The proposed model is composed of three layers: (i) at sensor layer, seismic data are acquired, (ii) fog layer incorporates pre-processing, feature extraction using fast Walsh–Hadamard transform (FWHT), selection of relevant features by applying High Order Spectral Analysis (HOSA) to FWHT coefficients, and seismic event classification by K-means accompanied by real-time alert generation, (iii) at cloud layer, an artificial neural network (ANN) is employed to forecast the magnitude of an earthquake. For performance evaluation, K-means classification algorithm is collated with other well-known classification algorithms from the perspective of accuracy and execution duration. Implementation statistics indicate that with chosen HOS features, we have been able to attain high accuracy, precision, specificity, and sensitivity values of 93.30%, 96.65%, 90.54%, and 92.75%, respectively. In addition, the ANN provides an average correct magnitude prediction of 75%. The findings ensured that the proposed framework has the potency to classify seismic signals and predict earthquakes and could therefore further enhance the detection of seismic activities. Moreover, the generation of real-time alerts further amplifies the effectiveness of the proposed model and makes it more real-time compatible.
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以物联网雾云为中心的地震监测与预报
地震是最不可避免的自然灾害之一。地震严重程度的不确定性对灾害负担产生了深远的影响,并造成了巨大的经济和社会损失。虽然不可预测,但它可以减少损失和死亡,例如使用物联网(IoT)监测和预测地震。随着物联网的复苏,一种新兴的创新方法是将物联网技术与雾和云计算相结合,以提高地震监测和预测的有效性和准确性。本文提出了利用地震信号信息进行地震预测的物联网-雾-云综合分层框架。提出的模型由三层组成:(i)在传感器层,采集地震数据;(ii)雾层进行预处理,利用快速Walsh-Hadamard变换(FWHT)提取特征,利用高阶谱分析(HOSA)对FWHT系数进行相关特征选择,并通过K-means对地震事件进行分类,并实时生成警报;(iii)在云层,采用人工神经网络(ANN)预测地震震级。在性能评价方面,将K-means分类算法从准确率和执行时间两方面与其他知名分类算法进行比较。实施统计表明,选择HOS特征,我们能够获得较高的准确度、精密度、特异性和灵敏度值,分别为93.30%、96.65%、90.54%和92.75%。此外,人工神经网络提供了75%的平均正确震级预测。研究结果确保了拟议的框架具有对地震信号进行分类和预测地震的潜力,因此可以进一步加强对地震活动的探测。此外,实时警报的生成进一步放大了所提模型的有效性,使其更具实时兼容性。
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