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Method for steady-state identification based upon identified dynamics

机译:基于识别动力学的稳态识别方法

摘要

A method for modeling a steady-state network in the absence of steady- state historical data. A steady-state neural network can be tied by impressing the dynamics of the system onto the input data during the training operation by first determining the dynamics in a local region of the input space, this providing a set of dynamic training data. This dynamic training data is then utilized to train a dynamic model, gain thereof then set equal to unity such that the dynamic model is now valid over the entire input space. This is a linear model, and the historical data over the entire input space is then processed through this model prior to input to the neural network during training thereof to remove the dynamic component from the data, leaving the steady-state component for the purpose of training. This provides a valid model in the presence of historical data that has a large content of dynamic behavior. A single dynamic model is required for each output variable in a multi- input multi-output steady-state model such that for each output there is a separate dynamic model required for pre-filtering. They are combined in a single network made up of multiple individual steady-state models for each output. The dynamic model can be identified utilizing a weighting factor for the gain to force the dynamic gain of the dynamic model to the steady-state gain by weighting the difference thereof during optimization of the dynamic model. The steady-state model is optimized utilizing gain constraints during the optimization procedure such that the gain of the network is prevented from exceeding the gain constraints.
机译:一种在没有稳态历史数据的情况下对稳态网络建模的方法。可以通过在训练操作期间首先确定输入空间局部区域中的动力学,从而将系统的动力学特性压在输入数据上,从而束缚稳态神经网络。然后,利用该动态训练数据来训练动态模型,然后将其增益设置为等于1,以使该动态模型现在在整个输入空间上有效。这是一个线性模型,在训练过程中输入到神经网络之前,通过该模型处理整个输入空间上的历史数据,以便从数据中删除动态分量,从而保留稳态分量以用于以下目的:训练。这在存在大量动态行为的历史数据的情况下提供了有效的模型。多输入多输出稳态模型中的每个输出变量都需要一个动态模型,因此对于每个输出,都需要一个单独的动态模型来进行预滤波。它们被组合在一个由每个输出的多个单独的稳态模型组成的网络中。可以利用用于增益的加权因子来识别动态模型,以通过在动态模型的优化期间对动态模型的动态增益进行加权来将动态模型的动态增益强制为稳态增益。在优化过程中利用增益约束对稳态模型进行优化,以防止网络增益超过增益约束。

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