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The casualty prediction of earthquake disaster based on Extreme Learning Machine method

机译:基于极端学习机方法的地震灾害伤亡预测

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In the prediction of casualties of earthquake disaster, the traditional prediction method requires strict sample data, and it is necessary to manually set a large number of parameters, resulting in poor prediction accuracy and slow learning speed. This paper introduces the Extreme Learning Machine (ELM) into the earthquake casualty prediction, aiming to improve the prediction accuracy. Through the data training, the ELM network structure of earthquake victims' casualty prediction is established, and the number of hidden layer nodes and the excitation function are determined, which ensures the reliability of the ELM network prediction results. Based on the data of 84 groups of earthquake victims from China in 1970-2017, the ELM algorithm, BP neural network, SVM and modified partial Gaussian curve were compared and verified. The results show that the average relative error of ELM algorithm for earthquake disaster prediction is 3.37%, the coefficient of determination R-square is 0.96, the average relative error of injury prediction is 1.04%, and the coefficient of determination R-square is 0.97, which indicates that the ELM algorithm has good robustness and generalization ability.
机译:在预测地震灾害的伤亡中,传统的预测方法需要严格的样本数据,有必要手动设置大量参数,导致预测精度差和学习速度较慢。本文介绍了极端学习机(ELM)进入地震伤亡预测,旨在提高预测准确性。通过数据培训,建立了地震受害者的ELM网络结构,确定了隐藏层节点的数量和激励功能,这确保了ELM网络预测结果的可靠性。基于1970 - 2017年中国84群地震受害者的数据,比较了ELM算法,BP神经网络,SVM和改进的部分高斯曲线。结果表明,地震灾害预测的ELM算法的平均相对误差为3.37%,测定系数R-Square为0.96,损伤预测的平均相对误差为1.04%,测定系数R-Square为0.97 ,这表明ELM算法具有良好的鲁棒性和泛化能力。

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