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首页> 外文期刊>IEEE Transactions on Fuzzy Systems >First break refraction event picking using fuzzy logic systems
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First break refraction event picking using fuzzy logic systems

机译:使用模糊逻辑系统的初次屈光事件选择

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摘要

First break picking is a pattern recognition problem in seismic signal processing, one that requires much human effort and is difficult to automate. The authors' goal is to reduce the manual effort in the picking process and accurately perform the picking. Feedforward neural network first break pickers have been developed using backpropagation training algorithms applied either to an encoded version of the raw data or to derived seismic attributes which are extracted from the raw data. The authors summarize a study in which they applied a backpropagation fuzzy logic system (BPFLS) to first break picking. The authors use derived seismic attributes as features, and take lateral variations into account by using the distance to a piecewise linear guiding function as a new feature. Experimental results indicate that the BPFLS achieves about the same picking accuracy as a feedforward neural network that is also trained using a backpropagation algorithm; however, the BPFLS is trained in a much shorter time, because there is a systematic way in which the initial parameters of the BPFLS can be chosen, versus the random way in which the weights of the neural network are chosen.
机译:初次拾取是地震信号处理中的模式识别问题,这需要大量的人工并且难以自动化。作者的目标是减少拣配过程中的人工工作,并准确地执行拣配。使用反向传播训练算法开发了前馈神经网络首发拾取器,该算法适用于原始数据的编码版本或从原始数据中提取的派生地震属性。作者总结了一项研究,在该研究中,他们将反向传播模糊逻辑系统(BPFLS)应用于初次采摘。作者将导出的地震属性用作特征,并通过将与分段线性导向函数的距离作为新特征来考虑横向变化。实验结果表明,BPLFS的拾取精度与前馈神经网络相同,后者也使用反向传播算法进行训练。但是,BPFLS的训练时间要短得多,因为有一种系统的方法可以选择BPFLS的初始参数,而不是选择随机方法来选择神经网络的权重。

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