Seismic swarm intelligence inversion with sparse probability distribution of reflectivity

Zhiguo Wang , Bing Zhang , Zhaoqi Gao , Jinghuai Gao
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引用次数: 1

Abstract

Seismic inversion, such as velocity and impedance, is an ill-posed problem. To solve this problem, swarm intelligence (SI) algorithms have been increasingly applied as the global optimization approach, such as differential evolution (DE) and particle swarm optimization (PSO). Based on the well logs, the sparse probability distribution (PD) of the reflectivity distribution is spatial stationarity. Therefore, we proposed a general SI scheme with constrained by a priori sparse distribution of the reflectivity, which helps to provide more accurate potential solutions for the seismic inversion. In the proposed scheme, as two key operations, the creating of probability density function library and probability transformation are inserted into standard SI algorithms. In particular, two targeted DE-PD and PSO-PD algorithms are implemented. Numerical example of Marmousi2 model and field example of gas hydrates show that the DE-PD and PSO-PD estimate better inversion solutions than the results of the original DE and PSO. In particular, the DE-PD is the best performer both in terms of mean error and fitness value of velocity and impendence inversion. Overall, the proposed SI with sparse distribution scheme is feasible and effective for seismic inversion.

反射率稀疏概率分布的地震群智能反演
地震反演,如速度和阻抗,是一个不适定问题。为了解决这一问题,群智能(SI)算法作为全局优化方法得到了越来越多的应用,如微分进化(DE)和粒子群优化(PSO)。基于测井资料,反射率分布的稀疏概率分布为空间平稳性。因此,我们提出了一种受反射率先验稀疏分布约束的通用SI格式,这有助于为地震反演提供更准确的潜在解。在该方案中,作为两个关键操作,概率密度函数库的创建和概率变换被插入到标准SI算法中。特别地,实现了两种有针对性的DE-PD和PSO-PD算法。Marmousi2模型的数值例子和天然气水合物的现场例子表明,DE-PD和PSO-PD比原始DE和PSO的结果估计出更好的反演解。特别是,无论是在速度和阻抗反演的平均误差还是适应度值方面,DE-PD都是表现最好的。总体而言,所提出的稀疏分布SI格式在地震反演中是可行和有效的。
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