乘法微积分中阿多米分解技术的修正及在非线性方程中的应用

Farooq Ahmed Shah , Muhammad Waseem , Alexey Mikhaylov , Gabor Pinter
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引用次数: 0

摘要

乘法微积分是一种数学体系,是传统微积分的替代方案。它不像传统微积分那样使用加法和减法来衡量变化,而是使用乘法和除法。非线性方程的框架是一个非常强大的工具,在推动我们对各种应用科学现象的理解方面,它已被证明是无价之宝。这一框架使研究人员能够深入了解大量科学问题。利用乘法微积分对非线性方程的迭代方法进行物理解释,为求解此类方程提供了独特的视角,并为各个科学学科的应用提供了可能。乘法微积分与以指数增长或衰减为特征的过程天然吻合。在许多物理、生物和经济系统中,量的变化与其当前状态成正比。与传统的加法相比,乘法微积分能更准确地模拟这些过程。例如,人口增长、放射性衰变和复利都能更好地用乘法来描述。这项工作的主要目的是在乘法微积分框架内修改和实施阿多米分解法,并开发一类有效的乘法数值算法,以获得非线性方程解的最佳近似值。我们建立了乘法迭代法的收敛标准。为了证明这些新递推关系的应用和有效性,我们考虑了一些数值示例。我们将乘法迭代法与类似的现有普通方法进行了比较。我们还通过绘制残差对数提供了图形比较。构建新算法的目的是展示乘法微积分的实施和有效性。
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Modification of Adomian decomposition technique in multiplicative calculus and application for nonlinear equations

Multiplicative calculus is a mathematical system that offers an alternative to traditional calculus. Instead of using addition and subtraction to measure change, as in traditional calculus, it uses multiplication and division. The framework of nonlinear equations is an incredibly powerful tool that has proven invaluable in advancing our understanding of various phenomena across a wide range of applied sciences. This framework has enabled researchers to gain deeper insights into a vast array of scientific problems. The physical interpretation of iterative methods for nonlinear equations using multiplicative calculus offers a unique perspective on solving such equations and opens up potential applications across various scientific disciplines. Multiplicative calculus naturally aligns with processes characterized by exponential growth or decay. In many physical, biological, and economic systems, quantities change in a manner proportional to their current state. Multiplicative calculus models these processes more accurately than traditional additive approaches. For example, population growth, radioactive decay, and compound interest are all better described multiplicatively. The primary objective of this work is to modify and implement the Adomian decomposition method within the multiplicative calculus framework and to develop an effective class of multiplicative numerical algorithms for obtaining the best approximation of the solution of nonlinear equations. We build up the convergence criteria of the multiplicative iterative methods. To demonstrate the application and effectiveness of these new recurrence relations, we consider some numerical examples. Comparison of the multiplicative iterative methods with the similar ordinary existing methods is presented. Graphical comparison is also provided by plotting log of residuals. The purpose in constructing new algorithms is to show the implementation and effectiveness of multiplicative calculus.

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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
138
审稿时长
14 weeks
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