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Auto recognition of carbonate microfacies based on an improved back propagation neural network
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作者 王玉玺 刘波 +4 位作者 高计县 张学丰 李顺利 刘建强 田泽普 《Journal of Central South University》 SCIE EI CAS CSCD 2015年第9期3521-3535,共15页
Though traditional methods could recognize some facies, e.g. lagoon facies, backshoal facies and foreshoal facies, they couldn't recognize reef facies and shoal facies well. To solve this problem, back propagation... Though traditional methods could recognize some facies, e.g. lagoon facies, backshoal facies and foreshoal facies, they couldn't recognize reef facies and shoal facies well. To solve this problem, back propagation neural network(BP-ANN) and an improved BP-ANN with better stability and suitability, optimized by a particle swarm optimizer(PSO) algorithm(PSO-BP-ANN) were proposed to solve the microfacies' auto discrimination of M formation from the R oil field in Iraq. Fourteen wells with complete core, borehole and log data were chosen as the standard wells and 120 microfacies samples were inferred from these 14 wells. Besides, the average value of gamma, neutron and density logs as well as the sum of squares of deviations of gamma were extracted as key parameters to build log facies(facies from log measurements)-microfacies transforming model. The total 120 log facies samples were divided into 12 kinds of log facies and 6 kinds of microfacies, e.g. lagoon bioclasts micrite limestone microfacies, shoal bioclasts grainstone microfacies, backshoal bioclasts packstone microfacies, foreshoal bioclasts micrite limestone microfacies, shallow continental micrite limestone microfacies and reef limestone microfacies. Furthermore, 68 samples of these 120 log facies samples were chosen as training samples and another 52 samples were gotten as testing samples to test the predicting ability of the discrimination template. Compared with conventional methods, like Bayes stepwise discrimination, both the BP-ANN and PSO-BP-ANN can integrate more log details with a correct rate higher than 85%. Furthermore, PSO-BP-ANN has more simple structure, smaller amount of weight and threshold and less iteration time. 展开更多
关键词 carbonate microfacies quantitative recognition bayes stepwise discrimination backward propagation neural network particle swarm optimizer
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细分沉积微相研究剩余油分布规律 被引量:7
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作者 刘伟 罗小刚 《科学技术与工程》 2011年第27期6705-6709,6716,共6页
通过细分沉积微相,揭示出不同沉积微相砂体,其岩石组成、储层物性、沉积构造及非均质特征等各方面都存在明显的不同,这是造成储层非均质性的关键因素。兴隆台油田马19井区东营组油藏是典型的河流—沼泽沉积相,其中包含着多种沉积微相,... 通过细分沉积微相,揭示出不同沉积微相砂体,其岩石组成、储层物性、沉积构造及非均质特征等各方面都存在明显的不同,这是造成储层非均质性的关键因素。兴隆台油田马19井区东营组油藏是典型的河流—沼泽沉积相,其中包含着多种沉积微相,使储集层结构非常复杂。通过对沉积微相的研究,了解了储层砂体的分布状况和油气集聚特点,明确了剩余油的分布规律,从而采取有效挖潜措施,为老油田的进一步挖潜、提高最终采收率奠定了基础。 展开更多
关键词 沉积微相 储层 非均质性 东营组 剩余油 最终采收率
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