Solving First-Order Nonlinear Fuzzy Initial Value Problems Using Two-Step Block Method with Presence of Higher Derivatives

Kashif Hussain, O. Adeyeye, N. Ahmad
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Abstract

Fuzzy differential equation models are suitable where uncertainty exists for real-world phenomena. Numerical techniques are used to provide an approximate solution to these models in the absence of an exact solution. However, existing studies that have developed numerical techniques for solving FIVPs possess an absolute error accuracy that could be improved. This is as a result of the low order and non-self-starting properties of the developed numerical techniques by previous studies. For this reason, this study, develops an Obrechkoff-type two-step implicit block method with the presence of second and third derivative for the numerical solution of first-order nonlinear fuzzy initial value problems. The convergence properties for the proposed block method are described in detail. Then the proposed method is adopted to solve first-order nonlinear fuzzy initial value problems with triangular and trapezoidal fuzzy numbers. The obtained results indicates that the proposed method effectively solves first-order nonlinear fuzzy initial value problems with better accuracy.
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用两步分块法求解一阶非线性模糊初值问题
模糊微分方程模型适用于存在不确定性的现实世界现象。在没有精确解的情况下,使用数值技术来提供这些模型的近似解。然而,现有的研究已经开发了求解FIVPs的数值技术,具有可以改进的绝对误差精度。这是由于以往研究开发的数值技术具有低阶和非自启动特性。为此,本研究针对一阶非线性模糊初值问题的数值解,提出了一种二阶导数和三阶导数存在的obrechkoff型两步隐式块法。详细描述了该方法的收敛性。然后将该方法应用于具有三角形和梯形模糊数的一阶非线性模糊初值问题的求解。结果表明,该方法能有效地求解一阶非线性模糊初值问题,且精度较高。
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