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A Noniterative Blind Deconvolution Approach to Unveil Early Time Behavior of Well Testings Contaminated by Wellbore Storage Effects

机译:一种非迭代盲解卷积方法,揭示受井筒存储效应污染的试井的早期行为

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Deconvolution method is generally used to eliminate wellbore storage dominant period of well testing. Common Deconvolution techniques require knowledge of both pressure and rate variations within test duration. Unfortunately, accurate rate data are not always available. In this case, blind deconvolution method is used. In this work, we present a new approach to improve the ability of blind deconvolution method in well testing. We examined the behavior of rate data by comparing it with a special class of images and employed their common properties to represent gross behavior of extracted rate data. Results of examinations show ability of our developed algorithm to remove the effect of wellbore storage from pressure data. Our Algorithm can deal with different cases where wellbore storage has made two different reservoirs behave identical in pressure response. Even if there is no wellbore effect or after wellbore storage period is passed, proposed algorithm can work routinely without any problem.
机译:反卷积法通常用于消除试井中井筒存储的主导时期。常见的反卷积技术需要了解测试持续时间内的压力和速率变化。不幸的是,并非总是可以获得准确的费率数据。在这种情况下,使用盲反卷积方法。在这项工作中,我们提出了一种新的方法来提高试井中盲反卷积方法的能力。我们通过将比率数据与一类特殊的图像进行比较来检查比率数据的行为,并利用它们的共同属性来代表提取的比率数据的总体行为。检查结果表明,我们开发的算法能够从压力数据中消除井筒存储的影响。我们的算法可以处理井筒存储使两个不同的油藏在压力响应方面表现相同的不同情况。即使没有井眼影响,或者经过井眼存储期后,该算法也可以正常工作,不会出现任何问题。

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