来自超混沌金融系统的数据。通过Koopman操作器和EDMD进行控制

J. Leventides, E. Melas, C. Poulios, A. Vardulakis
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引用次数: 0

摘要

提出了一种金融混沌系统的线性化控制与镇定方法。该方法考虑系统的某些轨迹与理想或期望轨道的偏差。利用库普曼算子和EDMD,我们将这种偏差建模为一个线性动力系统。线性系统必须定义在某个维数大于原状态空间维数的增广状态空间中。然后,线性系统可以用于控制和稳定特性。也就是说,可以应用反馈控制将偏差驱动为零,这意味着轨迹接近期望轨迹。这种方法也可以应用于一个以上的轨迹。然而,为了保持良好的近似性质,我们考虑的轨迹越多,线性系统的维数就越大,在某些阶段,该方法在计算上就不有效了。出于这个原因,我们不考虑整个轨迹集,而是从一个较小的轨道集开始。这是一个现实的情况,因为在经济研究中,宏观经济变量(如国内生产总值)不是任意的数字,而是取决于经济的数据。
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Data arising from hyperchaotic financial systems. Control through Koopman operators and EDMD
We present a method for linearizing control and stabilization of chaotic systems in finance. This method considers the deviation of some trajectory of the system from an ideal or desirable orbit. Using Koopman operators and EDMD, we model this deviation as a linear dynamical system. The linear system is necessarily defined in some augmented state space whose dimension is bigger than the dimension of the original state space. The linear system can then be used for control and stabilization properties. Namely, one may apply feedback control to drive the deviation to zero, which means that the trajectory is close to the desired one. This approach can also be applied to more than one trajectories. However, in order to maintain good approximation properties, the more trajectories we consider the larger the dimensions of the linear system will become and at some stage the method will not be computationally effective. For this reason, we do not take into consideration the whole set of trajectories, but we start with a smaller set of orbits. This is a realistic scenario, since in economic studies the macroeconomic variables (such as the gross domestic product) are not arbitrary numbers but depend on the data of the economy.
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