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Cognitive seismic data modelling based successive differential evolution algorithm for effective exploration of oil-gas reservoirs

机译:基于认知地震数据建模的延续差分演化算法,用于油气藏有效探索

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摘要

A cognitive modelling based new inversion method, the successive differential evolution (DE-S) algorithm, is proposed to estimate the Q factor and velocity from the zero-offset vertical seismic profile (VSP) record for oil-gas reservoir exploration. The DE algorithm seeks optimal solutions by simulating the natural species evolution processes and makes the individuals become optimal. This algorithm is suitable for the high-dimensional nonseparable model space where the inversion leads to recognition and prediction of hydrocarbon reservoirs. The viscoelastic medium is split into layers whose thicknesses equal to the space between two successive VSP geophones, and the estimated parameters of each layer span the related subspace. All estimated parameters span to a high dimensional nonseparable model space. We develop bottom-up workflow, in which the Q factor and the velocity are estimated using the DE algorithm layer by layer. In order to improve the inversion precision, the crossover strategy is discarded and we derive the weighted mutation strategy. Additionally, two kinds of stopping criteria for effective iteration are proposed to speed up the computation. The new method has fast speed, good convergence and is no longer dependent on the initial values of model parameters. Experimental results on both synthetic and real zero-offset VSP data indicate that this method is noise robust and has great potential to derive reliable seismic attenuation and velocity, which is an important diagnostic tool for reservoir characterization.
机译:提出了一种基于认知建模的新反演方法,逐次差分演化(DE-S)算法,估计来自零偏移垂直地震型材(VSP)记录的Q因子和速度用于油气储层勘探。 DE算法通过模拟自然物种演化过程来寻求最佳解决方案,使个人变得最佳。该算法适用于逆转导致烃储层的识别和预测的高维不可分子模型空间。粘弹性介质被分成其厚度等于两个连续VSP地震检波器之间的空间的层,并且每个层的估计参数跨越相关子空间。所有估计的参数跨度跨度到高维不可密定的模型空间。我们开发自下而上的工作流程,其中Q因子和速度逐层使用DE算法层估算。为了提高反演精度,丢弃交叉策略,我们得出了加权突变策略。另外,提出了两种停止标准,用于加速计算。新方法具有快速,收敛良好,不再依赖于模型参数的初始值。合成和实际零偏移VSP数据的实验结果表明该方法是噪声鲁棒,具有巨大的潜力,可以获得可靠的地震衰减和速度,这是储层表征的重要诊断工具。

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