级联h桥STATCOM高效有限控制集MPC的神经网络方法

Francesco Simonetti, G. D. D. Girolamo, A. D’innocenzo, Carlo Cecati
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引用次数: 1

摘要

有限控制集模型预测控制以其快速的动态响应和不需要调制而受到近年来的广泛关注。然而,当应用于多电平转换器时,它需要大量的计算,这可能会影响可实现性。另一方面,神经网络是众所周知的机器学习技术,由于其巨大的并行能力,可以在实时应用中有效地实现。本文提出了一种基于神经网络的有限控制集模型预测控制方法,降低了级联h桥静态同步补偿器的计算时间复杂度。最后给出了一个九级系统的仿真结果,并将该方法与经典的FCS方法进行了仿真比较,结果表明,在大大降低计算复杂度的情况下,可以获得非常相似的性能。
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A Neural Network Approach for Efficient Finite Control Set MPC of Cascaded H-Bridge STATCOM
Finite Control Set Model Predictive Control is an effective technique which attracted attention in the latest years thanks to its fast dynamic response and the fact that it does not require a modulation. However, when applied to multilevel converters, it requires a large amount of calculations that may affect implementability. On the other hand, Neural Networks are well known Machine Learning techniques that can be efficiently implemented in real-time applications thanks to their massive parallelism capability. This work proposes a novel Finite Control Set Model Predictive Control approach based on Neural Networks with reduced computational time complexity for a Cascaded H-Bridge Static Synchronous Compensator. Simulation results for a nine-level system are presented and a simulative comparison between our approach and classical methods for FCS is provided, showing that very similar performance can be achieved with strong reduction of the computational complexity.
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