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Simulation of industrial knowledge mining algorithms using recurrent inference networks

机译:基于递归推理网络的工业知识挖掘算法仿真

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摘要

Nodes in recurrent inference networks exhibit oscillatory characteristics even when the inputs are constant. This paper deals with estimating the causal parameters of such nodes. Hybrid recurrent nets combine arithmetic nodes and special integrator nodes to represent intelligent systems with oscillatory behaviour. Layers of hybrid nodes are arranged in hierarchies to model the complex output of such systems. Causal parameters are estimated from behaviour trajectories in a two stage process: time derivatives are determined first, followed by parameters. First order hybrid recurrent nets are employed to compute time derivates continuously as the behaviour is monitored. Further layers of arithmetic and hybrid nets then estimate the causal parameters of the complete model. Example applications are given to illustrate the techniques.
机译:即使输入恒定,递归推理网络中的节点也表现出振荡特性。本文涉及估计此类节点的因果参数。混合循环网络结合了算术节点和特殊积分器节点,以代表具有振荡行为的智能系统。混合节点的层按层次结构排列,以对此类系统的复杂输出进行建模。因果参数是通过两阶段过程中的行为轨迹估算的:首先确定时间导数,然后确定参数。一阶混合递归网络用于监测行为时连续计算时间导数。然后,算术和混合网络的其他层将估算完整模型的因果参数。给出了示例应用程序来说明这些技术。

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