An Investigation on the Selection of Filter Topologies for Passive Filter Applications by Neural Network

C. Boonseng, N. Nilnimitr, K. Kularbphettong
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引用次数: 1

Abstract

This project presents an alternative way in designing 5th, 7th and 11th harmonic filters by creating a neural network program that can calculate harmonics which are generated in the system by ac or dc drives and it can verify the result using the simulation in verification program. Our program can choose the right harmonic filter and help designing harmonic filter faster, easier and more accurate by concerning the cause of other factors that exclude the formulas such as limitation of the devices in a suitable cost. It will be more and more accurate every time the users use this program. Our program will train itself after inputting new data. The more we use the program, the more accurate it will be. We created the program with easy understandable user interface to facilitate any harmonic filter designers with low experiences to have an ability as an expert harmonic filter designer because our program has a memory of an experienced designer and ability to train itself. Furthermore, our program will help supporting the development in harmonic filter designing for any kinds of future research.
基于神经网络的无源滤波器拓扑选择研究
本课题提出了一种设计5、7、11次谐波滤波器的替代方法,通过建立一个神经网络程序来计算系统中交流或直流驱动产生的谐波,并通过验证程序中的仿真来验证结果。通过在合适的成本下考虑除器件限制等公式外的其他因素的原因,可以更快、更容易、更准确地选择合适的谐波滤波器,帮助设计谐波滤波器。用户每次使用该程序,其准确性会越来越高。我们的程序将在输入新数据后进行自我训练。我们使用这个程序越多,它就越准确。我们创建了易于理解的用户界面的程序,以方便任何谐波滤波器设计师低经验有能力作为一个专家谐波滤波器设计师,因为我们的程序有一个经验丰富的设计师和训练自己的能力的记忆。此外,我们的程序将有助于支持谐波滤波器设计的发展,为任何类型的未来研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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