Amaya Luis, Inga Esteban
Master of Electricity Program, Universidad Politécnica Salesiana, Quito 170525, Ecuador.
Master in ICT for Education, Smart Grid Research Group (GIREI), Universidad Politécnica Salesiana, Quito 170525, Ecuador.
Sensors (Basel). 2022 Aug 26;22(17):6434. doi: 10.3390/s22176434.
The present work proposes to locate harmonic frequencies that distort the fundamental voltage and current waves in electrical systems using the compressed sensing (CS) technique. With the compressed sensing algorithm, data compression is revolutionized, a few samples are taken randomly, a measurement matrix is formed, and according to a linear transformation, the signal is taken from the time domain to the frequency domain in a compressed form. Then, the inverse linear transformation is used to reconstruct the signal with a few sensed samples of an electrical signal. Therefore, to demonstrate the benefits of CS in the detection of harmonics in the electrical network of this work, power quality analyzer equipment (commercial) is used. It measures the current of a nonlinear load and issues its results of harmonic current distortion (THD-I) on its screen and the number of harmonics detected in the network; this equipment acquires the data based on the Shannon-Nyquist theorem taken as a standard of measurement. At the same time, an electronic prototype senses the current signal of the nonlinear load. The prototype takes data from the current signal of the nonlinear load randomly and incoherently, so it takes fewer samples than the power quality analyzer equipment used as a measurement standard. The data taken by the prototype are entered into the Matlab software via USB, and the CS algorithm run and delivers, as a result, the harmonic distortions of the current signal THD-I and the number of harmonics. The results obtained with the compressed sensing algorithm versus the standard measurement equipment are analyzed, the error is calculated, and the number of samples taken by the standard equipment and the prototype, the machine time, and the maximum sampling frequency are analyzed.
本工作旨在利用压缩感知(CS)技术来定位电力系统中使基波电压和电流波形失真的谐波频率。借助压缩感知算法,数据压缩发生了变革,随机采集少量样本,形成测量矩阵,并根据线性变换,将信号以压缩形式从时域转换到频域。然后,利用逆线性变换,通过电信号的少量感知样本重建信号。因此,为了证明CS在本工作的电网谐波检测中的优势,使用了电能质量分析仪设备(商用)。它测量非线性负载的电流,并在其屏幕上显示谐波电流失真(THD-I)结果以及电网中检测到的谐波数量;该设备基于作为测量标准的香农 - 奈奎斯特定理获取数据。同时,一个电子原型感知非线性负载的电流信号。该原型随机且非相干地从非线性负载的电流信号中获取数据,所以它采集的样本比用作测量标准的电能质量分析仪设备更少。原型采集的数据通过USB输入到Matlab软件中,运行CS算法并得出电流信号的谐波失真THD-I以及谐波数量的结果。分析了压缩感知算法与标准测量设备所得的结果,计算了误差,并分析了标准设备和原型采集的样本数量、机器时间以及最大采样频率。