致密油多缝水平井产能混合预测新模型

Liang Tao, Jianchun Guo, Xiaofeng Zhou, A. Kitaeva, Jie Zeng
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引用次数: 5

摘要

生产力分析既涉及对个体成员因素的定量评价,也涉及其综合影响。描述各种因素之间的非线性关系是很困难的。为了解决这一问题,本文提出了一种新颖新颖的灰色关联分析(GRA)和模糊逻辑生产力预测混合模型。首先,根据已建成井的参数,选取几个要素作为评价因子。建立了多层次评价体系,描述了各因素之间的非线性关系。然后,利用GRA计算权重因子,确定影响多缝水平井压裂效果的主要因素。最后,将GRA与模糊逻辑相结合,计算综合评价分数(CES),用于预测产能,确定储层的分类值,对储层质量进行评价。该混合预测模型已成功应用于东北致密油田的18口井。实际应用结果表明,所测初始产量与混合模型的产量吻合较好。该模型可用于快速、经济地预测MFHWs的产量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Productivity Prediction Hybrid Model for Multi-Fractured Horizontal Wells in Tight Oil Reservoirs
Productivity analysis relates to the quantitative evaluation of factors for individual members as well as to their comprehensive influence. It is difficult to describe the nonlinear relationship of various factors. A novel and original combination of grey relation analysis (GRA) and fuzzy logic productivity prediction hybrid model is proposed in this study to solve the problem. First, based on the parameters of the constructed wells, several elements were chosen as appraisal factors. The multi-level appraisal system was established to describe the nonlinear relationship of various factors. Then, GRA was used to calculate the weight factor and determine the main factors that influence the result of multi-fractured horizontal wells (MFHWs). Finally, coupling GRA with fuzzy logic to calculate the comprehensive evaluation score (CES), which is used to predict productivity and determine the classification value of the reservoir to evaluate the reservoir quality. The hybrid prediction model has been successfully applied to 18 wells of the tight oil field in Northeast China. Practical application results demonstrated a good agreement between the measured initial production and the output of the hybrid model. The new model can be used to predict production for MFHWs quickly and economically.
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