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基于人工神经网络控制器的通用变换器的设计与实现。

Design and Implementation of universal converter using ANN controller.

作者信息

Suresh K, Parimalasundar E, Arunraja A, Ellappan V, Ware Eshetu Tessema

机构信息

Department of EEE(1), Department of ECE (3), Christ University, Bangalore, India.

Department of EEE, Mohanbabu University, Tirupati, India.

出版信息

Sci Rep. 2025 Jan 28;15(1):3501. doi: 10.1038/s41598-024-83318-2.

DOI:10.1038/s41598-024-83318-2
PMID:39875422
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11775323/
Abstract

This paper details the hardware implementation of a Universal Converter controlled by an Artificial Neural Network (ANN), utilizing key components such as six Insulated Gate Bipolar Transistors (IGBTs), two inductors, and two capacitors for energy storage and voltage smoothing. A Digital Signal Processor (DSP) serves as the core controller, processing real-time input and feedback signals, including voltage and current measurements, to dynamically manage five operational modes: rectifier buck, inverter boost, DC-DC buck, DC-DC boost, and AC voltage control. The pre-trained ANN algorithm generates pulse-width modulation (PWM) signals to control the switching of the IGBTs, optimizing timing and duty cycles for efficient operation. The system effectively accommodates both AC and DC inputs, ensuring stable outputs with minimal ripple by dynamically selecting the appropriate mode based on load requirements. Experimental results demonstrated that the ANN controller maintained total harmonic distortion (THD) below 5% in rectifier and inverter modes while achieving an overall efficiency of 94-96% in DC-DC modes. The controller's capability to adapt to real-time feedback significantly improved power conversion quality and reduced switching losses. This study confirms the efficacy of the ANN-controlled Universal Converter in meeting the demands of modern power systems through versatile and adaptive control.

摘要

本文详细介绍了一种由人工神经网络(ANN)控制的通用转换器的硬件实现,该转换器利用六个绝缘栅双极晶体管(IGBT)、两个电感器和两个电容器等关键组件进行能量存储和电压平滑。数字信号处理器(DSP)作为核心控制器,处理实时输入和反馈信号,包括电压和电流测量,以动态管理五种运行模式:整流降压、逆变升压、DC-DC降压、DC-DC升压和交流电压控制。预训练的ANN算法生成脉宽调制(PWM)信号来控制IGBT的开关,优化定时和占空比以实现高效运行。该系统有效地适应交流和直流输入,通过根据负载要求动态选择合适的模式,确保输出稳定且纹波最小。实验结果表明,ANN控制器在整流和逆变模式下将总谐波失真(THD)保持在5%以下,而在DC-DC模式下实现了94-96%的整体效率。控制器适应实时反馈的能力显著提高了功率转换质量并降低了开关损耗。本研究证实了ANN控制的通用转换器通过通用和自适应控制满足现代电力系统需求的有效性。

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