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Improved ant colony algorithm for parameter estimation on the BISQ model

机译:BISQ模型参数估计的改进蚁群算法

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摘要

In this paper, based on the Biot/Squirt model including the Biot-flow and squirt-flow mechanism simultaneously, we estimated reservoir parameters using the improved ant colony algorithm, that is, the niche ant colony algorithm (NACA) based on fitness sharing principle. We used the improved ACA in a multi-modal function optimization problem and verified the effectiveness of the NACA. We then estimated reservoir parameters, such as porosity and permeability using the improved ACA based on the unsaturated porous media Biot/Squirt model. The numerical results indicate that the relative error of the inversion of a single parameter can be maintained at less than 0.08%, similar to that of the inversion of two parameters (porosity and saturation). In addition, the effect of the inversion of three parameters (porosity, solid density and fluid density) was found to be slightly weak, but the relative error can still be maintained at less than 4%. Moreover, we compared the inversion results with those obtained using the niche genetic algorithm. The comparison shows that the former has higher precision over the latter. The results of the numerical simulation demonstrate that the proposed approach is an effective convergent optimization method.
机译:本文基于同时包含Biot流动和喷水流动机制的Biot / Squirt模型,我们使用改进的蚁群算法,即基于适应度共享原理的小生境蚁群算法(NACA)来估计储层参数。 。我们在多模式函数优化问题中使用了改进的ACA,并验证了NACA的有效性。然后,我们基于不饱和多孔介质Biot / Squirt模型,使用改进的ACA估算了储层参数,例如孔隙度和渗透率。数值结果表明,单个参数反演的相对误差可以保持在0.08%以下,类似于两个参数(孔隙度和饱和度)反演的相对误差。此外,发现三个参数(孔隙度,固体密度和流体密度)的反演效果略弱,但相对误差仍可保持在4%以下。此外,我们将反演结果与使用小生境遗传算法获得的结果进行了比较。比较表明,前者比后者具有更高的精度。数值仿真结果表明,该方法是一种有效的收敛优化方法。

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