Application of Artificial Neural Network to Estimate Rate of Penetration for Geothermal Well Drilling in South Sumatera

M. T. Fathaddin, S. Irawan, T. Marhaendrajana, Pri Agung Rakhmanto, Marmora Titi Malinda, A. Nugrahanti, O. Ridaliani
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Abstract

In order to plan an optimum geothermal well drilling scheme, a proper identification of drilling parameters should be well known. Information of the parameters consists of weight on bit (WOB), true vertical depth (TVD), rate of penetration (ROP), foam flowrate (FF), and rotary speed (N). The valuable information can be provided by the drilled geothermal wells. Correlation of the drilling parameters is then obtained based on the information. The application of Artificial Neural (ANN) Network is needed since the relationships among the parameters are very complex and nonlinear. Moreover, the relationships are not easily known. In this paper, Artificial Neural Network was promoted to estimate penetration rate. Data were obtained from three wells at a field in South Sumatera, Indonesia. Three ANN models were generated. Each model includes different input parameters. Based on the comparison results, the ANN-3 model has the best level of accuracy with the average values of the parameters MAE, MARE, MSE, ARMSE, and the correlation coefficients are 0.8883, 9.54%, 1.1878, 1.0825, and 0.9938 respectively. ANN models can play a role in identifying parameters that affect the characteristics of penetration rate. Keywords—Drilling, WOB, Geothermal, ROP, ANN.
人工神经网络在南苏门答腊地热井钻井渗透率估算中的应用
为了制定最优的地热井钻井方案,必须正确识别钻井参数。这些参数的信息包括钻压(WOB)、真垂深(TVD)、钻速(ROP)、泡沫流量(FF)和转速(N),钻出的地热井可以提供有价值的信息。然后根据这些信息获得钻井参数的相关性。由于参数之间的关系是非常复杂和非线性的,因此需要人工神经网络的应用。此外,它们之间的关系并不容易了解。本文将人工神经网络引入到渗透率估计中。数据来自印度尼西亚南苏门答腊一个油田的三口井。生成了三个人工神经网络模型。每个模型包含不同的输入参数。对比结果表明,ANN-3模型的MAE、MARE、MSE、ARMSE的均值最高,相关系数分别为0.8883、9.54%、1.1878、1.0825、0.9938。人工神经网络模型可以在识别影响渗透率特征的参数方面发挥作用。关键词:钻井,钻压,地热,机械钻速,人工神经网络
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