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Unsupervised kernel least mean square algorithm for solving ordinary differential equations

机译:求解常微分方程的无监督核最小均方算法

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摘要

In this paper a novel method is introduced based on the use of an unsupervised version of kernel least mean square (KLMS) algorithm for solving ordinary differential equations (ODEs). The algorithm is unsupervised because here no desired signal needs to be determined by user and the output of the model is generated by iterating the algorithm progressively. However, there are several new approaches in literature to solve ODEs but the new approach has more advantages such as simple implementation, fast convergence and also little error. Furthermore, it is also a KLMS with obvious characteristics. In this paper the ability of KLMS is used to estimate the answer of ODE. First a trial solution of ODE is written as a sum of two parts, the first part satisfies the initial condition and the second part is trained using the KLMS algorithm so as the trial solution solves the ODE. The accuracy of the method is illustrated by solving several problems. Also the sensitivity of the convergence is analyzed by changing the step size parameters and kernel functions. Finally, the proposed method is compared with neuro-fuzzy[21] approach.
机译:在本文中,基于无监督版本的核最小均方(KLMS)算法的使用,提出了一种求解常微分方程(ODE)的新方法。该算法不受监督,因为在此无需用户确定所需信号,并且通过逐步迭代算法来生成模型的输出。但是,文献中有几种解决ODE的新方法,但是新方法具有更多优点,例如实现简单,收敛速度快,错误少。此外,它也是具有明显特征的KLMS。本文使用KLMS的能力来估计ODE的答案。首先将ODE的试验解决方案写成两部分的总和,第一部分满足初始条件,第二部分使用KLMS算法训练,以便该试验解决方案解决ODE。通过解决几个问题说明了该方法的准确性。还通过更改步长参数和内核函数来分析收敛的敏感性。最后,将该方法与神经模糊[21]方法进行了比较。

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