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首页> 外文期刊>IEEE transactions on industrial informatics >A Spatiotemporal Neural Network Modeling Method for Nonlinear Distributed Parameter Systems
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A Spatiotemporal Neural Network Modeling Method for Nonlinear Distributed Parameter Systems

机译:用于非线性分布式参数系统的时空神经网络建模方法

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摘要

Neural network (NN) has been widely used in the field of modeling of lumped parameter systems. However, an NN approach cannot be used to model complex nonlinear distributed parameter systems (DPSs) because it does not account for this type of system's relationship with space. In this article, we propose a novel spatiotemporal NN (SNN) method to model nonlinear DPSs, which considers not only nonlinear dynamics regarding time, but also a nonlinear relationship with space. A temporal NN model was first constructed to represent the nonlinear temporal dynamics of each sensor's position. A spatial distribution function was then developed to represent the nonlinear relationship between spatial points. This strategy results in inherent consideration of any spatial dynamics. Finally, by integrating both the temporal NN model and the spatial distribution function, a novel SNN model was created to represent the spatiotemporal dynamics of the nonlinear DPSs. A two-step solving approach was further developed to learn the model. Additional analysis and proof of concept showed the effectiveness of this proposed method. This proposed method is different from traditional data-driven modeling methods in that it uses full information from all sensors and does not require model reduction technology. Case studies not only demonstrate the effectiveness of this proposed method, but also its superior modeling performance as compared with several commonly used methods.
机译:神经网络(NN)已广泛用于集总参数系统的建模领域。然而,NN方法不能用于建模复杂的非线性分布式参数系统(DPS),因为它不会考虑这种类型的系统与空间的关系。在本文中,我们提出了一种新的时空NN(SNN)方法来模拟非线性DPS,这不仅考虑了关于时间的非线性动力学,而且认为与空间的非线性关系。首先构造一个时间NN模型以表示每个传感器位置的非线性时间动态。然后开发了空间分布函数以表示空间点之间的非线性关系。该策略导致对任何空间动态的固有考虑。最后,通过集成时间Nn模型和空间分布函数,创建了一种新的SNN模型来表示非线性DPS的时空动态。进一步开发了一种两步的解决方法来学习模型。额外的分析和概念证明显示了这种方法的有效性。该提出的方法与传统的数据驱动建模方法不同,因为它使用来自所有传感器的完整信息,并且不需要模型减少技术。案例研究不仅证明了这种方法的有效性,而且与几种常用方法相比,其卓越的建模性能。

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