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Complex System Modeling with General Differential Equations Solved by Means of Polynomial Networks

机译:多项式网络解决的一般微分方程复杂系统建模

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Differential equations can describe physical and natural systems, which behavior only explicit exact functions are not able to model. Complex dynamic systems are characterized by a high variability of time-fluctuating data relations of a great number of state variables. Systems of differential equations can describe them but they are too unstable to be modeled unambiguously by means of standard soft computing techniques. In some cases the correct form of a differential equation might absent or it is difficult to express. Differential polynomial neural network is a new neural network type, which forms and solves an unknown general partial differential equation of an approximation of a searched function, described by discrete data observations. It generates convergent sum series of relative partial polynomial derivative terms, which can substitute for a partial or/and ordinary differential equation solution. This type of non-linear regression decomposes a system model, described by the general differential equation, into low order composite partial polynomial fractions in an additive series solution. The differential network can model the dynamics of the complex weather system, using only several input variables in some cases. Comparisons were done with the recurrent neural network, often applied for simple and solid time-series models.
机译:微分方程可以描述物理和自然系统,该行为只有明确的确切函数无法模拟。复杂的动态系统的特征在于大量状态变量的时间波动数据关系的高变化。微分方程的系统可以描述它们,但是通过标准软计算技术明确地建模,它们太不稳定。在某些情况下,可能不存在的差分方程的正确形式或难以表达。差分多项式神经网络是一种新的神经网络类型,其形成并解决了由离散数据观察描述的搜索功能的近似的未知一般局部微分方程。它生成收敛和系列的相对部分多项式衍生术语,其可以替代部分或/和常规方程解决方案。这种类型的非线性回归分解了一种由一般微分方程描述的系统模型,进入添加剂系列解决方案中的低阶复合部分多项式分数。差分网络可以在某些情况下使用几种输入变量来模拟复杂天气系统的动态。使用经常性神经网络进行比较,通常应用于简单和实心的时序序列模型。

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