Innovative Method for Earthquake Prediction System using Hybrid Convolutional Neural Network and SVM

N. Rajkumar, N. Kanimozhi, P. Saravanakumar, Sireesha Koneru, Puneet K Sapra, Ravi Rastogi
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引用次数: 1

Abstract

The ability to estimate casualties from earthquakes is crucial for effective disaster response. Conventional forecasting techniques have stringent sample data requirements and several parameters that must be manually specified, which can lead to subpar outcomes with prediction accuracy as low and a slow rate of learning. In the suggested hybrid model, CNN is employed as an automatic feature extractor, while SVM is used as a binary classifier. Traditional CNN’s completely linked layers are swapped out for a support vector machine in this model to improve prediction accuracy. This proposed approach employs CNN for automatic feature extraction, and an SVM classifier for automatic classification. The experimental findings showed that compared to the CNN model (89%), our hybrid model was significantly more accurate at 98.5%
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基于卷积神经网络和支持向量机的地震预测系统创新方法
估计地震伤亡的能力对于有效的灾害反应至关重要。传统的预测技术有严格的样本数据要求和几个必须手动指定的参数,这可能导致预测精度低且学习速度慢的次优结果。在本文提出的混合模型中,CNN作为自动特征提取器,SVM作为二值分类器。在这个模型中,传统CNN的完全链接层被替换为支持向量机,以提高预测精度。该方法采用CNN进行自动特征提取,使用SVM分类器进行自动分类。实验结果表明,与CNN模型(89%)相比,我们的混合模型的准确率显著提高,达到98.5%
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