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A multiscale method for distributed parameter estimation with application to reservoir history matching

机译:分布式参数估计的多尺度方法及其在油藏历史拟合中的应用

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摘要

A method for multiscale parameter estimation with application to reservoir history matching is presented. Starting from a given fine-scale model, coarser models are generated using a global upscaling technique where the coarse models are tuned to match the solution of the fine model. Conditioning to dynamic data is done by history-matching the coarse model. Using consistently the same resolution both for the forward and inverse problems, this model is successively refined using a combination of downscaling and history matching until model-matching dynamic data are obtained at the finest scale. Large-scale corrections are obtained using fast models, which, combined with a downscaling procedure, provide a better initial model for the final adjustment on the fine scale. The result is thus a series of models with different resolution, all matching history as good as possible with this grid. Numerical examples show that this method may significantly reduce the computational effort and/or improve the quality of the solution when achieving a fine-scale match as compared to history-matching directly on the fine scale.
机译:提出了一种多尺度参数估计方法及其在储层历史拟合中的应用。从给定的精细模型开始,使用全局升级技术生成粗略模型,在粗调模型中调整粗略模型以匹配精细模型的解。通过对粗略模型进行历史匹配来对动态数据进行条件处理。对正向和逆向问题使用一致的分辨率,通过降尺度和历史匹配的组合来逐步完善此模型,直到以最佳规模获得模型匹配的动态数据。使用快速模型可以进行大规模校正,该模型与缩小程序结合在一起,可以为精细调整的最终调整提供更好的初始模型。因此,结果是一系列具有不同分辨率的模型,所有匹配历史记录都与此网格尽可能匹配。数值示例表明,与直接在精细规模上进行历史匹配相比,该方法在实现精细规模匹配时可以显着减少计算量和/或提高解决方案的质量。

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