论文标题
将多项式分离方法应用于多项式NARX模型
Applying Polynomial Decoupling Methods to the Polynomial NARX Model
论文作者
论文摘要
系统标识使用动态系统的输入和输出的测量来重建该系统的数学模型。这些可以是机械,电气,生理等。由于我们周围的大多数系统都表现出某种形式的非线性行为,因此非线性系统识别技术是可以帮助我们更好地了解周围环境的工具,并可能让我们提高其性能。一种通常用于表示非线性系统的模型是多项式NARX模型,这是一个方程误差模型,其中输出是过去输入和输出的多项式函数。也就是说,多项式NARX模型的主要缺点是,参数的数量随着多项式的增加而迅速增加。此外,多项式NARX模型是一个黑盒模型,因此很难解释。本文讨论了多项式NARX模型的解耦算法,该算法将多元多项式替换为转换矩阵,然后是单变量多项式的库。这大大减少了模型参数的数量,并在黑盒Narx模型上施加了结构。由于此识别技术需要非凸优化,因此初始化是要考虑的重要因素。在本文中,解耦算法与几种不同的初始化技术共同开发。所得算法应用于两个非线性基准问题:来自银盒中的测量数据和来自Bouc-wen摩擦模型的仿真数据,并评估了在模拟和预测中的不同验证信号的性能。
System identification uses measurements of a dynamic system's input and output to reconstruct a mathematical model for that system. These can be mechanical, electrical, physiological, among others. Since most of the systems around us exhibit some form of nonlinear behavior, nonlinear system identification techniques are the tools that will help us gain a better understanding of our surroundings and potentially let us improve their performance. One model that is often used to represent nonlinear systems is the polynomial NARX model, an equation error model where the output is a polynomial function of the past inputs and outputs. That said, a major disadvantage with the polynomial NARX model is that the number of parameters increases rapidly with increasing polynomial order. Furthermore, the polynomial NARX model is a black-box model, and is therefore difficult to interpret. This paper discusses a decoupling algorithm for the polynomial NARX model that substitutes the multivariate polynomial with a transformation matrix followed by a bank of univariate polynomials. This decreases the number of model parameters significantly and also imposes structure on the black-box NARX model. Since a non-convex optimization is required for this identification technique, initialization is an important factor to consider. In this paper the decoupling algorithm is developed in conjunction with several different initialization techniques. The resulting algorithms are applied to two nonlinear benchmark problems: measurement data from the Silver-Box and simulation data from the Bouc-Wen friction model, and the performance is evaluated for different validation signals in both simulation and prediction.