A new methodology of nonlinear parameter approximation used for rheological model of drilling fluids

Jisen Yin, Jian Li, You Xiao
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引用次数: 1

Abstract

This paper proposes an effective way of searching for initial value, which is based on Gauss-Newton iteration and combined with the common features of nonlinear rheological equation of drilling fluids. With this method, we can find a fine initial value, which can be applied to the parameter estimation of nonlinear rheological model of drilling fluids. This method overcomes the shortcomings of Gauss-Newton method which strongly depends on the initial value and the iteration may not be convergent in practical application and fully exerts the advantages of Gauss-Newton method which has smaller workload in each step and faster pace of convergence. Large quantities of measured drilling fluids examples show that the rheological parameters estimated by this method have a fine statistical characteristic, that is, fitting residual is nearly unbiased and variance is almost minimum. Besides, the fitting residual is smaller than the one of traditional linear regression and has excellent statistical properties.
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一种用于钻井液流变模型的非线性参数近似新方法
本文提出了一种基于高斯-牛顿迭代并结合钻井液非线性流变方程的共同特点的求初值的有效方法。该方法可以找到一个较好的初始值,用于钻井液非线性流变模型的参数估计。该方法克服了高斯-牛顿法在实际应用中对初值依赖性强、迭代不收敛的缺点,充分发挥了高斯-牛顿法每步工作量小、收敛速度快的优点。大量实测钻井液实例表明,该方法估计的流变参数具有良好的统计特性,即拟合残差几乎无偏,方差几乎最小。与传统的线性回归相比,拟合残差较小,具有良好的统计性能。
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