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Shear wave velocity prediction using Elman artificial neural network

机译:埃尔曼人工神经网络剪切波速预测

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Shear wave velocity (V-s) is one of the most important features in seismic exploration, reservoir development and characterization. Conventionally, V-s is obtained from core analysis which is an expensive and time-consuming process, and dipole sonic imager (DSI) tools are not available in all wells. Therefore, developing a fast, cheap, and reliable alternative way to V-s prediction with continuous values makes a great contribution in reservoir characterization. In this study, a new method as an alternative way is proposed based on Elman artificial neural network to predict V-s using well log data including gamma ray (GR), resistivity (LLD), neutron porosity (NPHI), bulk density (RHOB), compression wave velocity (V-p), and water saturation (S-w). Elman network is a memorized network and has a feedback from each hidden layer to the former one, and the subsequent behavior can be shaped by the previous responses. Levenberg-Marquardt training algorithm is used to optimize the weight and bias values, and fivefold cross-validation is also used to ensure that the developed ANN is not prone to over fitting. In order to compare the ability of the proposed method with the other common methods, three empirical relations including Castagna, Brocher, and Carroll, and also three other ANNs with such topology including MLP and Elman and such training algorithms as particle swarm optimization are used. Eventually, based on the training time, and based on the best measured mean squared error (MSE) and R-2 for our test data, the proposed Elman network is more accurate, efficient, reliable, and robust than the other three empirical relations and three ANNs. Our experimental results demonstrate a successful adapting for V-s prediction using Elman ANN. The proposed method could be applied in important applications such as geomechanical and AVO modeling.
机译:剪切波速度(V-S)是地震勘探,水库发展和表征中最重要的特征之一。传统上,V-S是从核心分析获得的,这是一种昂贵且耗时的过程,并且在所有孔中不可用偶极声成像器(DSI)工具。因此,开发快速,便宜,可靠的方式,以连续值对V-S预测进行了预测,这在储层表征方面具有巨大贡献。在本研究中,基于ELMAN人工神经网络提出了一种作为一种替代方式的新方法,以使用包括伽马射线(GR),电阻率(LLD),中子孔隙度(NPHI),堆积密度(RHOB),压缩波速度(VP)和水饱和度(SW)。 ELMAN网络是一个记忆网络,并且从每个隐藏层到前一个的反馈,后续行为可以由先前的响应塑造。 Levenberg-Marquardt训练算法用于优化重量和偏置值,并且还使用五倍交叉验证来确保发达的ANN不易过度拟合。为了比较所提出的方法与其他常见方法的能力,使用包括Castagna,冰川和卡罗尔等三个经验关系,以及具有如MLP和ELMAN等拓扑的三个具有与粒子群优化的拓扑的拓扑的ANN。最终,基于培训时间,并基于最佳测量的平均平方误差(MSE)和R-2用于我们的测试数据,所提出的Elman网络比其他三个经验关系更准确,高效,可靠,鲁棒三个Anns。我们的实验结果表明,使用Elman Ann的V-S预测成功地适应了V-S预测。所提出的方法可以应用于地磁和AVO建模等重要应用。

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