利用扩展多项式网络组成和求解一般微分方程

L. Zjavka, V. Snás̃el
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引用次数: 0

摘要

多变量数据关系可以用相似模型分析方法定义一个偏微分方程,它描述了一个基于离散观测的未知复函数。时间序列可以形成一个常微分方程,类似地可以用同类型随时间变化的观测值的偏导数来代替。多项式神经网络可以通过低阶复合多变量导数分数构成和求解搜索函数或模式模型的未知一般偏微分方程。由多项式网络产生的相关项收敛和级数,描述了某些输入变量的多项式组合的偏相关导数变化,可以代替一般的微分方程。这种非线性回归类型基于学习到的广义偏初等数据关系,分解成多项式网络导数结构,它能够定义和创建比标准软计算技术允许的更复杂和变化的间接模型形式。s型函数是人工神经元中常用的激活函数,它可以提高多项式和替换导数项序列的能力来近似复杂的周期多变量或时间序列函数,并对系统行为进行建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Composing and Solving General Differential Equations Using Extended Polynomial Networks
Multi-variable data relations can define a partial differential equation, which describes an unknown complex function on a basis of discrete observations, using the similarity model analysis methods. Time-series can form an ordinary differential equation, which is analogously possible to replace by partial derivatives of the same type time-dependent observations. Polynomial neural networks can compose and solve an unknown general partial differential equation of a searched function or pattern model by means of low order composite multi-variable derivative fractions. Convergent sum series of relative terms, produced by polynomial networks, describe partial dependent derivative changes of some polynomial combinations of input variables and can substitute for the general differential equation. This non-linear regression type is based on learned generalized partial elementary data relations, decomposed into a polynomial network derivative structure, which is able to define and create more complex and varied indirect model forms than standard soft computing techniques allow. The sigmoidal function, commonly used as an activation function in artificial neurons, may improve the polynomials and substituting derivative term series abilities to approximate complicated periodic multi-variable or time-series functions and model a system behaviour.
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