A Novel Approach to Sand Volume Prediction Using Machine Learning Algorithms

Ainash Shabdirova, A. Kozhagulova, Minh Nguyen, Yong Zhao
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Abstract

The objective of the paper is to discuss the application of different Machine Learning (ML) algorithms to predict sand volume during oil production from a weak sandstone reservoir in Kazakhstan. The field data consists of the data set from 10 wells comprising such parameters as fluid flow rate, water cut value, depth of the reservoir, and thickness of the producing zone. Six different algorithms were applied and root-mean-square error (RMSE) was used to compare different algorithms. The algorithms were trained with the data from 8 wells and tested on the data from the other two wells. Variable selection methods were used to identify the most important input parameters. The results show that the KNN algorithm has the best performance. The analysis suggests that the ML algorithm can be successfully used for the prediction of transient and non-transient sand production behavior. The algorithm is especially useful for transient sand production, where sand burst is followed by abrupt decline and finally stops. The results show that the algorithm can fairly predict the peak sand volumes which is useful for sand management measures. The variable selection studies suggest that water cut value and fluid flow rate are the most important parameters both for the sand volume amount and accuracy of the algorithm. The novelty of the paper is an attempt to predict sand volume using ML algorithms while existing studies focused only on sanding onset prediction.
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一种利用机器学习算法预测砂粒体积的新方法
本文的目的是讨论不同的机器学习(ML)算法在预测哈萨克斯坦弱砂岩油藏采油过程中的砂量方面的应用。现场数据由10口井的数据集组成,包括流体流速、含水值、储层深度和产层厚度等参数。采用了6种不同的算法,并用均方根误差(RMSE)对不同算法进行比较。算法使用了8口井的数据进行训练,并在另外2口井的数据上进行了测试。采用变量选择方法确定最重要的输入参数。结果表明,KNN算法具有最好的性能。分析表明,ML算法可以成功地用于瞬态和非瞬态出砂行为的预测。该算法特别适用于瞬态出砂,即突发性出砂后突然下降并最终停止。结果表明,该算法能较好地预测沙粒峰值量,为沙粒治理提供参考。变量选择研究表明,含水值和流体流量是影响砂粒量和算法精度的最重要参数。本文的新颖之处在于尝试使用ML算法预测出砂量,而现有的研究仅集中在出砂开始预测上。
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