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Explicit MPC in the form of Sparse Neural Networks

机译:以稀疏神经网络的形式明确的MPC

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This paper discusses the construction of a neural network that approximates the behavior of a model predictive control strategy. The aim is to train a neural network that has very similar closed-loop behavior compared to the model predictive control. Furthermore, the paper presents methods to decrease the memory footprint of the neural network-based controller. To achieve the goal, we utilize a genetic algorithm in the training phase, that not only searches for the right weights of the individual neurons, but also for the structural properties of the network. Moreover, the algorithm determines which type of activation function should be considered in which neurons and which neurons should be connected together. The efficacy of the proposed control method is demonstrated on a laboratory scale device Flexy. Moreover, we will show, that presented approaches drastically reduce memory footprint even for simple control problems.
机译:本文讨论了一个近似于模型预测控制策略的行为的神经网络的构造。 目标是培训与模型预测控制相比具有非常相似闭环行为的神经网络。 此外,本文提出了减少基于神经网络的控制器的存储空间的方法。 为了实现目标,我们利用训练阶段的遗传算法,不仅搜索各个神经元的右重,而且还用于网络的结构特性。 此外,该算法确定应考虑哪种类型的激活功能,其中神经元以及哪个神经元应该连接在一起。 在实验室测量装置弯曲上证明了所提出的控制方法的功效。 此外,我们将展示,即使对于简单的控制问题,呈现的方法也急剧减少内存占用空间。

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