首页> 外国专利> Adaptive network for automated first break picking of seismic refraction events and method of operating the same

Adaptive network for automated first break picking of seismic refraction events and method of operating the same

机译:用于自动选择地震折射事件的第一手资料的自适应网络及其操作方法

摘要

An adaptive, or neural, network and a method of operating the same is disclosed which is particularly adapted for performing first break analysis for seismic shot records. The adaptive network is first trained according to the generalized delta rule. The disclosed training method includes selection of the seismic trace with the highest error, where the backpropagation is performed according to the error of this worst trace. The learning and momentum factors in the generalized delta rule are adjusted according to the value of the worst error, so that the learning and momentum factors increase as the error decreases. The training method further includes detection of slow convergence regions, and methods for escaping such regions including restoration of previously trimmed dormant links, renormalization of the weighting factor values, and the addition of new layers to the network. The network, after the addition of a new layer, includes links between nodes which skip the hidden layer. The error value used in the backpropagation is reduced from that actually calculated, by adjusting the desired output value, in order to reduce the growth of the weighting factors. After the training of the network, data corresponding to an average of the graphical display of a portion of the shot record, including multiple traces over a period of time, is provided to the network. The time of interest of the data is incremented until such time as the network indicates that the time of interest equals the first break time. The analysis may be repeated for all of the traces in the shot record.
机译:公开了一种自适应或神经网络及其操作方法,其特别适于执行地震记录的首次断裂分析。首先根据广义增量规则训练自适应网络。所公开的训练方法包括选择具有最高误差的地震轨迹,其中根据该最坏轨迹的误差执行反向传播。根据最差误差的值来调整广义增量规则中的学习和动量因子,从而随着误差减小,学习和动量因子会增加。训练方法还包括检测慢速收敛区域,以及用于逃避这种区域的方法,包括恢复先前修剪的休眠链接,对加权因子值进行重新归一化以及向网络添加新层。在添加新层之后,网络包括跳过隐藏层的节点之间的链接。通过调整所需的输出值,可以将反向传播中使用的误差值从实际计算的值中减少,以减少加权因子的增长。在训练了网络之后,将与镜头记录的一部分的图形显示的平均值相对应的数据(包括一段时间内的多个轨迹)提供给网络。数据的关注时间会增加,直到网络指示关注时间等于第一个中断时间为止。可以对镜头记录中的所有迹线重复进行分析。

著录项

  • 公开/公告号US5181171A

    专利类型

  • 公开/公告日1993-01-19

    原文格式PDF

  • 申请/专利权人 ATLANTIC RICHFIELD COMPANY;

    申请/专利号US19900585967

  • 发明设计人 MICHAEL D. MCCORMACK;ALAN D. ROCK;

    申请日1990-09-20

  • 分类号G06F15/18;

  • 国家 US

  • 入库时间 2022-08-22 04:58:50

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