In this paper, our objective is primarily to use adaptive inverse-quadratic (IQ) and inverse-multi-quadratic (IMQ) radial basis function (RBF) interpolation techniques to develop an enhanced Adam-Bashforth and Adam-Moulton methods. By utilizing a free parameter involved in the radial basis function, the local convergence of the numerical solution is enhanced by making the local truncation error vanish. Consistency and stability analysis is presented along with some numerical results to back up our assertions. The accuracy and rate of convergence of each proposed technique are equal to or better than the original Adam-Bashforth and Adam-Moulton methods by eliminating the local truncation error thus, the proposed adaptive methods are optimal. We conclude that both IQ and IMQ-RBF methods yield an improved order of convergence than classical methods, while the superiority of one method depends on the method and the problem considered.
翻译:在本文中,我们的目标主要是利用适应性的反赤道(IQ)和反多赤道(IMQ)的弧基功能(RBF)的内插技术来开发增强的亚当-巴什福思和亚当-穆尔顿方法。通过使用半径基函数所涉及的自由参数,数字解决办法在当地的趋同通过使当地脱轨错误消失而得到加强。对一致性和稳定性的分析与一些数字结果一起支持我们的说法。通过消除原亚当-巴什福思和亚当-穆尔顿方法的准确性和趋同率等于或优于原有的亚当-巴什福思和亚当-穆尔顿方法,因此拟议的适应方法是最佳的。我们的结论是,IQ和IMQ-RBF方法的趋同程度比经典方法都更高,而一种方法的优越性取决于所考虑的方法和问题。