多电平逆变器实时谐波降低的智能优化技术

J. George, A. Benny
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引用次数: 2

摘要

本文提出了一种计算连接不同直流电源的多电平级联h桥变换器开关角的方法。这里需要的电压是由连接到级联多电平逆变器的每个串联桥的单独直流源合成的。这是通过产生合适的开关角来实现的,从而达到所需的基频和低谐波可以最小化。采用粒子群优化算法求解输入电压为已知变量、开关角度为未知变量的方程组,并训练人工神经网络在不需要过多内存存储的情况下存储解。为h桥设计了开关脉冲逻辑。通过MATLAB/Simulink仿真验证了该系统的有效性。
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Intelligent optimization techniques for real-time harmonics reduction in multilevel inverters
The current paper proposes a methodology for calculating switching angles for a multilevel cascaded H-bridge converter connected to varying DC sources. Here desired voltage is synthesized from separate DC sources connected to each series-connected bridges of the cascaded multilevel inverter. This is obtained by generating the suitable switching angles and thereby achieving the required fundamental frequency and the lower harmonics can be minimized. Particle Swarm Optimization (PSO) algorithm is used to find the solution for the set of equations where the input voltages are the known variables and the switching angles are the unknown variables and the Artificial Neural Networks (ANN) is trained to store solutions without excessive memory storage requirements. Switching pulse logic is designed for H-bridge. The effectiveness of the proposed system is validated by simulation using MATLAB/Simulink.
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