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Dimensionality Reduction Applied to Time Response of Linear Systems Using Autoencoders

机译:使用自动编码器将降维应用于线性系统的时间响应

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An Autoencoder is a multilayer neural network that is used as a powerful tool to perform dimensionality reduction. Due to its structure, is possible to find low-dimensional representations of high-dimensional data in its most hidden layer. In this paper, a deep autoencoder is used to perform a compact representation of the time response of linear systems. The parameters of deep autoencoder are trained using gradient descent and backpropagation. The proposed method is validated with five different first-order systems and six of second order. Results show that is possible to use a deep autoencoder to capture the dynamical behavior of a dynamical system in its latent layer.
机译:自动编码器是一种多层神经网络,可用作执行降维的强大工具。由于其结构,有可能在其最隐藏的层中找到高维数据的低维表示形式。在本文中,深度自动编码器用于执行线性系统时间响应的紧凑表示。深度自动编码器的参数使用梯度下降和反向传播进行训练。所提出的方法在五个不同的一阶系统和六个二阶系统中得到了验证。结果表明,可以使用深层自动编码器捕获动态系统在其潜在层中的动态行为。

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