一种利用FFNN预测油藏位置的新方法

N. Jaber, A. Hussein, H. Almalikee
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摘要

在石油工业中,数据管理对石油项目的成功至关重要。特别是,数据采集、存储和分类是油气公司的主要关注点。因此,本研究的重点是利用测井仪在井内不同深度传播的一组传感器产生的数据来预测石油点(可能的油藏)的问题。利用LevenbergMarquardt (LM)算法对前馈神经网络(FFNN)模型进行训练,需要在多个epoch上随机分配权重/偏置值,以减小测试数据与训练数据之间的方差。随机权重分配会降低模型的性能,因为测试数据和训练数据之间的方差仍然是不确定的。本文提出了一种修正前馈神经网络(MFFNN)的新方法,通过冻结权重/偏置系数来实现最小误差的油藏预测。MFFNN优于现有的传统模型和机器学习算法。
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A New Approach to Predict the Location of Petroleum Reservoirs Using FFNN
In the petroleum industry, data management reis is crucial to the success of petroleum projects. In particular, data acquisition, storage, and classification are major concerns of oil and gas companies. This study therefore focuses on the problem of predicting a petroleum point (a possible oil reservoir) using the data generated by well loggers from the propagation of a set of sensors at different depths within a well. The training of a feedforward neural network (FFNN) model by the LevenbergMarquardt (LM) algorithm involves a random allotment of weight/bias values over multiple epochs to reduce the variance between testing and training data. Random weight assignment degrades the performance of the model, as the variance between testing and training data will remain uncertain. In this paper, a novel method, called modified feedforward neural network (MFFNN) is proposed by freezing the weight/bias coefficients to predict petrol reservoirs with minimal error. The MFFNN outperforms existing conventional models and machine learning algorithms.
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