Prediction of rock fracture pressure in hydraulic fracturing with interpretable machine learning and mechanical specific energy theory

Xiaoying Zhuang , Yuhang Liu , Yuwen Hu , Hongwei Guo , Binh Huy Nguyen
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引用次数: 0

Abstract

Hydraulic fracturing stimulation technology is essential in the oil and gas industry. However, current techniques for predicting rock fracture pressure in hydraulic fracturing face significant challenges in precision and reliability. Traditional approaches often result in inadequate accuracy due to the complex and diverse nature of underground formations. However, recent advances in computational power and optimization techniques have enabled the application of machine learning in mining operations, resulting in improved prediction and feedback. In this study, various machine learning techniques are employed to predict hydraulic fracturing pressure based on the concept of mechanical specific energy. Additionally, the study interprets the models through feature importance analysis. The findings suggest that most machine learning models deliver highly accurate predictions. Feature importance analysis indicates that for an approximate assessment of fracture pressure, the characteristics of well depth and torque are sufficient. For more precise predictions, incorporating additional characteristics from the mechanical specific energy framework into the machine learning model is essential. The study emphasizes the feasibility of employing machine learning methods to predict fracture pressure and their usefulness in determining optimal engineering sites.
基于可解释机器学习和机械比能理论的水力压裂岩石破裂压力预测
水力压裂增产技术是油气行业必不可少的技术。然而,目前的水力压裂岩石破裂压力预测技术在精度和可靠性方面面临着重大挑战。由于地下构造的复杂性和多样性,传统的方法往往导致精度不足。然而,最近计算能力和优化技术的进步使机器学习在采矿作业中的应用成为可能,从而改进了预测和反馈。在本研究中,基于机械比能的概念,采用各种机器学习技术来预测水力压裂压力。此外,本文还通过特征重要性分析对模型进行了解释。研究结果表明,大多数机器学习模型都能提供高度准确的预测。特征重要性分析表明,对于裂缝压力的近似估计,井深和扭矩特征就足够了。为了获得更精确的预测,将机械比能框架中的附加特征纳入机器学习模型是必不可少的。该研究强调了采用机器学习方法预测破裂压力的可行性及其在确定最佳工程地点方面的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.40
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