This paper introduces a novel method for the automatic detection and handling of nonlinearities in a generic transformation. A nonlinearity index that exploits second order Taylor expansions and polynomial bounding techniques is first introduced to rigorously estimate the Jacobian variation of a nonlinear transformation. This index is then embedded into a low-order automatic domain splitting algorithm that accurately describes the mapping of an initial uncertainty set through a generic nonlinear transformation by splitting the domain whenever some imposed linearity constraints are non met. The algorithm is illustrated in the critical case of orbital uncertainty propagation, and it is coupled with a tailored merging algorithm that limits the growth of the domains in time by recombining them when nonlinearities decrease. The low-order automatic domain splitting algorithm is then combined with Gaussian mixtures models to accurately describe the propagation of a probability density function. A detailed analysis of the proposed method is presented, and the impact of the different available degrees of freedom on the accuracy and performance of the method is studied.
翻译:本文介绍了在通用变换中自动检测和处理非线性非线性的新方法。 首次采用了非线性指数,利用第二顺序泰勒扩张和多线性捆绑技术,严格估计非线性变换的雅各克变异。 然后,将这一指数嵌入低顺序自动域分割算法中,该算法准确描述通过非线性变换确定的初步不确定性的映射,在不满足某些强加的线性限制时将域分割成平流。 算法在轨道不确定性扩散的关键案例中作了说明,并配有专门设计的合并算法,在非线性变异时通过重新组合限制域的生长。 低顺序自动域分割算法随后与高斯的混合物模型合并,以准确描述概率密度函数的传播。 对拟议方法进行了详细分析,并研究了不同自由程度对方法的准确性和性的影响。</s>