A Normalized ANN Model for Earthquake Estimation

Dibyendu Mehta, Priti Priya Das, Sagnik Ghosh, Sushruta Mishra, A. Alkhayyat, Vandana Sharma
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Abstract

Earthquake is one of the most devastating natural catastrophes, mainly because there is rarely any advance notice and hence little opportunity to react. This makes the issue of earthquake prediction highly crucial for human safety. This paper offers a technique for predicting earthquakes by using normalized artificial neural network (ANN). Exploratory Data Analysis (EDA) is applied on the raw dataset to find outliers and the co-relationship between input features. Then, Feature Engineering is performed to normalize the data and remove all unnecessary features. The training data is fed into the neural network model, which generates certain output. Error is calculated based on actual and generated output. Backpropagation algorithm is applied to minimize the error, after which this data is used to train the model. Finally, the Testing data is fed into the model to calculate accuracy and other performance metrics. The outcomes of several experiments are promising. Accuracy of prediction obtained was 94.3%. Also, the training and testing delay recorded were 2.12 seconds and 3.14 seconds respectively.
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一种归一化神经网络地震估计模型
地震是最具破坏性的自然灾害之一,主要是因为很少有任何提前通知,因此几乎没有机会作出反应。这使得地震预测问题对人类安全至关重要。本文提出了一种利用归一化人工神经网络(ANN)预测地震的方法。在原始数据集上应用探索性数据分析(EDA)来发现异常值和输入特征之间的相互关系。然后,进行特征工程,对数据进行规范化,去除所有不需要的特征。将训练数据输入到神经网络模型中,产生一定的输出。误差是根据实际和生成的输出来计算的。采用反向传播算法使误差最小,然后利用该数据对模型进行训练。最后,将测试数据输入模型以计算精度和其他性能指标。几个实验的结果很有希望。预测准确率为94.3%。训练和测试延迟分别为2.12秒和3.14秒。
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