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Memory effects description by neural networks with delayed feedback connections

机译:内存效果描述通过延迟反馈连接的神经网络

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For the purpose of dynamical systems modelling it was proposed to include feedback connections or delay elements in the classical feedforward neural network structure so that the present output of the neural network depends on its previous values. These delay elements can be connected to the hidden and/or output neurons of the main neural network. Each delay element gets a value of a state variable at a past time instant and keeps this value during a single sampling period. The groups of delay elements record the values of the state variables for a given time period in the past. Changing the number of the delay elements, which belongs to one group, a shorter or a longer time period in the past can be accounted for. Thus, the connection weights determine the influence of the past process states on the present state in a similar way as it is in the time delay kernel or CER-MF models. Specific feedforward neural networks with time delay connections are employed to solve the problem of neural network chemostat modelling as well as specific kinetic rates modelling. The obtained during models training weights of the feedback connections are discussed as the points of a time delay kernel or as the strength levels in a CER model (the points in the CER-MF). The corresponding changes in these weights with changing of the time period in the past that is accounted for are shown.
机译:用于动力系统模型化有人提议包括在经典的前馈神经网络结构的反馈连接或延迟元件,使得神经网络的当前输出取决于其先前的值的目的。这些延迟元件可被连接到主神经网络的隐藏和/或输出神经元。每个延迟元件在一个过去时刻得到的状态变量的值,并在一个单一采样周期保持此值。延迟元件组记录状态变量的值,在过去的一个给定的时间段。改变延迟元件的数量,属于一组,更短或在过去较长的时间周期可占。因此,连接权值确定过去的过程状态对当前状态以类似的方式的影响,因为它是在时间延迟内核或CER-MF模型。具体的前馈与时间延迟连接神经网络被用来解决神经网络建模恒化以及具体的动力学速率建模的问题。期间模型训练反馈连接的权重的时间延迟内核的点或如在CER模型中的强度水平(在CER-MF的点)所讨论的获得。在这些权重对应的变化与被占示于过去的时间段的变化。

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