首页> 外文期刊>Journal of industrial and management optimization >NONLINEAR DYNAMICAL SYSTEM MODELING VIA RECURRENT NEURAL NETWORKS AND A WEIGHTED STATE SPACE SEARCH ALGORITHM
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NONLINEAR DYNAMICAL SYSTEM MODELING VIA RECURRENT NEURAL NETWORKS AND A WEIGHTED STATE SPACE SEARCH ALGORITHM

机译:基于递归神经网络和加权状态空间搜索算法的非线性动力学系统建模

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摘要

Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box nonlinear regression model for tracking unknown dynamic systems. An error function is used to measure the difference between the system outputs and the desired trajectory that formulates a nonlinear least square problem with dynamical constraints. With the dynamical constraints, classical gradient type methods are difficult and time consuming due to the involving of the computation of the partial derivatives along the trajectory. We develop an alternative learning algorithm, namely the weighted state space search algorithm, which searches the neighborhood of the target trajectory in the state space instead of the parameter space. Since there is no computation of partial derivatives involved, our algorithm is simple and fast. We demonstrate our approach by modeling the short-term foreign exchange rates. The empirical results show that the weighted state space search method is very promising and effective in solving least square problems with dynamical constraints. Numerical costs between the gradient method and our the proposed method are provided.
机译:给定跟踪轨迹的任务,可以将循环神经网络视为用于跟踪未知动态系统的黑匣子非线性回归模型。误差函数用于测量系统输出与所需轨迹之间的差异,该差异公式化了具有动态约束的非线性最小二乘问题。由于存在动力学约束,传统的梯度类型方法由于涉及沿轨迹的偏导数的计算而困难且耗时。我们开发了另一种学习算法,即加权状态空间搜索算法,该算法在状态空间而不是参数空间中搜索目标轨迹的邻域。由于不涉及偏导数的计算,因此我们的算法既简单又快速。我们通过对短期外汇汇率建模来证明我们的方法。实验结果表明,加权状态空间搜索方法在解决具有动态约束的最小二乘问题方面非常有前途且有效。提供了梯度方法与我们提出的方法之间的数值成本。

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