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首页> 外文期刊>Journal of Petroleum Science & Engineering >Connectionist model predicts the porosity and permeability of petroleum reservoirs by means of petro-physical logs: Application of artificial intelligence
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Connectionist model predicts the porosity and permeability of petroleum reservoirs by means of petro-physical logs: Application of artificial intelligence

机译:Connectionist模型通过石油物理测井预测石油储层的孔隙度和渗透率:人工智能的应用

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摘要

In this paper, a new approach based on artificial intelligence concept is evolved to monitor the permeability and porosity of petroleum reservoirs by means of petro-physical logs at various conditions. To address the referred issue, different artificial intelligence techniques including fuzzy logic (FL) and least square support vector machine (LSSVM) were carried out. Potential application of LSSVM and FL optimized by genetic algorithm (GA) is proposed to estimate the permeability and porosity of petroleum reservoirs. The developed intelligent approaches are examined by implementing extensive real field data from northern Persian Gulf oil fields. The results obtained from the developed intelligent approaches are compared with the corresponding real petro-physical data and gained outcomes of the other conventional models. The correlation coefficient between the model estimations and the relevant actual data is found to be greater than 0.96 for the GA-FL approach and 0.97 for GA-LSSVM. The results from this research indicate that implication of GA-LSSVM and GA-FL in prediction can lead to more reliable porosity/permeability predictions, which can lead to the design of more efficient reservoir simulation schemes.
机译:本文提出了一种基于人工智能概念的新方法,通过各种条件下的石油物理测井监测石油储层的渗透率和孔隙度。为了解决所提到的问题,已实施了包括模糊逻辑(FL)和最小二乘支持向量机(LSSVM)在内的各种人工智能技术。提出了利用遗传算法优化遗传算法对LSSVM和FL的潜在应用来估算油气藏的渗透率和孔隙度。通过实施波斯湾北部北部油田的大量实地数据,对开发的智能方法进行了检验。从开发的智能方法获得的结果与相应的实际石油物理数据进行比较,并获得其他常规模型的结果。发现GA-FL方法的模型估计与相关实际数据之间的相关系数大于0.96,GA-LSSVM的相关系数大于0.97。这项研究的结果表明,GA-LSSVM和GA-FL在预测中的意义可以导致更可靠的孔隙度/渗透率预测,从而可以设计出更有效的储层模拟方案。

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