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Learning behavioral models by recurrent neural networks with discrete latent representations with application to a flexible industrial conveyor

机译:通过具有离散的神经网络与应用于柔性工业输送机的离散潜在表示学习行为模型

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Recurrent neural networks (RNN) are being extensively exploited in industry to address complex predictive tasks by leveraging on the increased availability of data from processes. However, the rationale behind model response is encoded in an implicit way, which is difficult to be explained by practitioners. If revealed, such mechanisms could provide deeper insights into RNN execution, enhancing conventional performance evaluations. We propose a new approach based on the introduction of a model-based clustering layer, constraining the network to operate on a discrete latent state representation. By processing context-input conditioned transitions between clusters, a Moore Machine characterizing the RNN computations is extracted. The proposed approach is demonstrated on both synthetic experiments from an open benchmark problem and via the application to a pilot industrial plant, by the behavior cloning of the flexible conveyor of a Remanufacturing process. The finite-state RNN attains the prediction accuracy of RNN with continuous state, providing in addition a more interpretable structure. (c) 2020 Elsevier B.V. All rights reserved.
机译:经常性的神经网络(RNN)在工业中被广泛利用,以解决复杂的预测任务,通过利用来自流程的数据的可用性增加来解决复杂的预测任务。然而,模型响应背后的理由以隐含的方式编码,从业者难以解释。如果揭示,这种机制可以向RNN执行提供更深入的见解,增强传统的性能评估。我们提出了一种基于引入基于模型的聚类层的新方法,限制网络以在离散潜在的状态表示上运行。通过处理簇之间的上下文输入的条件转换,提取表征RNN计算的摩尔计算机。通过开放基准问题的合成实验和通过应用于试验工业设备的合成实验证明了所提出的方法,通过对再制造过程的柔性输送机的行为克隆。有限状态RNN达到RNN具有连续状态的预测精度,另外提供更可接定的结构。 (c)2020 Elsevier B.V.保留所有权利。

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