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A Case of Adaptive Nonlinear System Identification with Third Order Tensors in TensorFlow

机译:TensorFlow中具有三阶张量的自适应非线性系统辨识的一种情况

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Non-linear system identification is a challenging problem with a plethora of engineering applications including digital telecommunications, adaptive control of biological systems, assessing integrity of mechanical constructs, and geological surveys. Various approaches have been proposed in the scientific literature, including Volterra and multivariate Taylor series, fuzzy neural networks, state space models, and wavelets. This conference paper proposes a succinct model of a non-linear system with memory based on a third order tensor whose coefficients are trained in an LMS-like way. Moreover, two variants deriving from sign LMS and batch LMS algorithms respectively are also implemented in TensorFlow. The results of applying the three training algorithms to this system are compared in terms of the mean square error in validation phase, the convergence rate of the coefficients, and the convergence rate of the Euclidean norm of the local gradients of the system model.
机译:非线性系统识别是具有众多工程应用的挑战性问题,包括数字电信,生物系统的自适应控制,评估机械构造的完整性以及地质勘测等。科学文献中已经提出了各种方法,包括Volterra和多元泰勒级数,模糊神经网络,状态空间模型和小波。该会议论文提出了一个基于三阶张量的带有记忆的非线性系统的简洁模型,该张量的系数以类似LMS的方式进行训练。此外,在TensorFlow中还实现了分别来自符号LMS和批处理LMS算法的两个变体。根据验证阶段的均方误差,系数的收敛速度以及系统模型局部梯度的欧几里得范数的收敛速度,比较了将三种训练算法应用于该系统的结果。

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