This paper presents a novel algorithm to obtain the closed-form anti-derivative of a function using Deep Neural Network architecture. In the past, mathematicians have developed several numerical techniques to approximate the values of definite integrals, but primitives or indefinite integrals are often non-elementary. Anti-derivatives are necessarily required when there are several parameters in an integrand and the integral obtained is a function of those parameters. There is no theoretical method that can do this for any given function. Some existing ways to get around this are primarily based on either curve fitting or infinite series approximation of the integrand, which is then integrated theoretically. Curve fitting approximations are inaccurate for highly non-linear functions and require a different approach for every problem. On the other hand, the infinite series approach does not give a closed-form solution, and their truncated forms are often inaccurate. We claim that using a single method for all integrals, our algorithm can approximate anti-derivatives to any required accuracy. We have used this algorithm to obtain the anti-derivatives of several functions, including non-elementary and oscillatory integrals. This paper also shows the applications of our method to get the closed-form expressions of elliptic integrals, Fermi-Dirac integrals, and cumulative distribution functions and decrease the computation time of the Galerkin method for differential equations.
翻译:本文展示了使用深神经网络架构获得功能的封闭式反衍生法的新奇算法。 过去,数学家开发了几种数字技术,以近似固定整体体的值, 但原始或无限期整体体往往是非元素的。 当一个元素中存在数个参数, 而获得的组合体是这些参数的一个函数函数时, 必然需要反衍生法。 对于任何给定函数, 没有任何可以做到这一点的理论方法。 一些现有的方法可以绕过它。 某些现有的方法主要基于对整形的曲线安装或无限序列近似, 后者在理论上是整合的。 曲线匹配近似对于高度非线性函数来说是不准确的, 要求对每个问题都采取不同的方法。 另一方面, 无限序列方法不会给出一个封闭式的解决方案, 它们的变异形式往往是这些参数的函数。 我们声称, 对所有组合体使用单一的方法, 我们的算法可以比得任何要求的精确度。 我们使用这种算法来获取数个函数的反诊断性, 包括非元素、 缩式的缩略法, 也显示我们整体的递化计算法的缩缩缩化法 。