基于数据驱动的直流微电网并网电压源电源变换器智能控制设计

A. Soliman, M. Amin, F. El-Sousy, O. Mohammad
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引用次数: 2

摘要

本文介绍了一种带储能系统的并网变流器的控制和运行。对所研制的变换器及其控制系统建立了完整的数学模型。所研究的系统是一个由交流电网组成的小型微电网,该电网通过变流器为直流负载供电。转换器通过一个R-L滤波器连接到交流电网。经典线性控制器的暂态性能较慢,对参数变化和负载扰动的鲁棒性较低,存在一定的局限性。本文采用机器学习控制器来解决传统控制器的缺点。首先,对外环PI-PI控制器和内环PI-PI控制器的传统嵌套环比例积分(PI)进行了研究。提出了一种数据驱动在线学习(DDOL)控制器。该控制器是一个比例积分神经网络(PI-NN),从动态和稳态响应方面提高了系统的性能。在不同的操作场景下,对传统的PI-PI控制器和DDOL控制器进行了比较。在各种工况下对变流器控制进行了测试,分析了其动态和稳态行为。通过MATLAB Simulink对电网在不同负载扰动和交流输入电压下并网模式下的正常运行进行了仿真。然后,在硬件环境下对系统进行了设计、制作和实现,并对测试结果进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Control Design for Grid-Connected Voltage Source Power Converters Based on Data- Driven Approach for DC Microgrid Applications
This paper introduces the control and operation of a grid-connected converter with an energy storage system. A complete mathematical model was presented for the developed converter and its control system. The system under study was a small microgrid comprising an AC grid that is feeding a DC load through a converter. The converter was connected to the AC grid through an R-L filter. The classical linear controllers have limitations due to their slow transient performance and low robustness against parameter variations and load disturbances. In this paper, machine-learned controllers were used to dealing with those drawbacks of the traditional controller. First, a study for conventional nested loop Proportional Integral (PI) was introduced for both outer and inner loops PI-PI controller. A Data-Driven Online Learning (DDOL) controller was then proposed. This controller was a Proportional Integral Neural Network (PI-NN) that enhanced the system performance in terms of dynamic and steady-state responses. A comparison between the normal traditional PI-PI controller and the proposed DDOL ones was made under different operating scenarios. The converter control was tested under various operational conditions, and its dynamic and steady-state behavior was analyzed. The model was done through a MATLAB Simulink to check the normal operation of the network in a grid-connected mode under different load disturbances and AC input voltage. Then, the system was designed, fabricated, and implemented in a hardware environment in our testbed, and the test results were verified.
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