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Model order reduction using artificial neural networks

机译:使用人工神经网络减少模型顺序

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In this paper, we present a new technique for model order reduction (MOR) that is based on an artificial neural network (ANN) prediction. The ANN-based MOR can be applied for different scale systems with substructure preservation. In the proposed technique, the ANN is implemented for predicting the unknown elements of the reduced order model. Prediction of the ANN architecture is based on minimizing the cost function obtained by the difference between the actual and desired system behavior. The ANN prediction process is pursued while maintaining the full order substructure in the reduced model. The proposed ANN-based model order reduction method is compared to recently published work on MOR techniques. Simulation results verify the validity of the new MOR technique.
机译:在本文中,我们提出了一种基于人工神经网络(ANN)预测的模型顺序减少(MOR)的新技术。可以应用于具有子结构保存的不同刻度系统。在所提出的技术中,实施ANN用于预测减少订单模型的未知元件。 ANN架构的预测是基于最小化通过实际和期望的系统行为之间的差异获得的成本函数。在减少模型中保持完整阶子结构的同时追求ANN预测过程。将拟议的基于ANN的模型顺序减少方法进行了比较,最近公布了MOR技术的工作。仿真结果验证了新的MOR技术的有效性。

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