Research on Model of Seismic Anomaly Data Mining Based on Neural Network

Yancheng Long, J. Rong
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Abstract

Data mining in the seismic anomaly database will be affected by the instability of the seismic monitoring system signal and the environment, so in the development of practice should be based on the existing technology to comprehensively explore, pay attention to gradually break through the limitations of traditional mining methods, in order to effectively solve the problems existing in the previous data mining. Under the background of new era, the neural network as a machine learning algorithm is the most common way of mining, need according to the related theory had a clear standard equation of the minimum mean square error values, thus to build optimized mining model, and then using the calculation data of database, the feature vector to construct the corresponding to the monitoring data are accurate judgment. On the basis of understanding the current development of seismic monitoring technology, this paper proposes a new optimization model based on the constructed seismic anomaly database, and verifies its application effect in practice.
基于神经网络的地震异常数据挖掘模型研究
地震异常数据库中的数据挖掘会受到地震监测系统信号的不稳定性和环境的影响,因此在开发实践中应在现有技术的基础上进行全面探索,注意逐步突破传统挖掘方法的局限性,以有效解决以往数据挖掘中存在的问题。在新时代背景下,神经网络作为一种机器学习算法是最常用的挖掘方式,需要根据相关理论有一个明确的均方误差最小值的标准方程,从而构建优化的挖掘模型,然后利用数据库的计算数据、特征向量构建相应的对监测数据进行准确判断。在了解地震监测技术发展现状的基础上,基于已构建的地震异常数据库,提出了一种新的优化模型,并在实践中验证了其应用效果。
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