Department of Electrical and Information Engineering, Politecnico di Bari, Via E. Orabona 4, 70125 Bari, Italy.
Sensors (Basel). 2021 Dec 1;21(23):8032. doi: 10.3390/s21238032.
In this paper, a convolutional neural network for the detection and characterization of impedance discontinuity points in cables is presented. The neural network analyzes time-domain reflectometry signals and produces a set of estimated discontinuity points, each of them characterized by a class describing the type of discontinuity, a position, and a value quantifying the entity of the impedance discontinuity. The neural network was trained using a great number of simulated signals, obtained with a transmission line simulator. The transmission line model used in simulations was calibrated using data obtained from stepped-frequency waveform reflectometry measurements, following a novel procedure presented in the paper. After the training process, the neural network model was tested on both simulated signals and measured signals, and its detection and accuracy performances were assessed. In experimental tests, where the discontinuity points were capacitive faults, the proposed method was able to correctly identify 100% of the discontinuity points, and to estimate their position and entity with a root-mean-squared error of 13 cm and 14 pF, respectively.
本文提出了一种用于检测和描述电缆中阻抗不连续点的卷积神经网络。该神经网络分析时域反射计信号,并生成一组估计的不连续点,每个不连续点都由一个描述不连续类型的类别、一个位置和一个量化阻抗不连续程度的数值来特征化。神经网络使用大量使用传输线模拟器获得的模拟信号进行训练。在模拟中使用的传输线模型是使用从阶跃频率波形反射计测量中获得的数据,按照本文提出的新程序进行校准的。在训练过程之后,神经网络模型在模拟信号和测量信号上进行了测试,并评估了其检测和准确性性能。在实验测试中,不连续点为电容故障,所提出的方法能够正确识别 100%的不连续点,并以 13 厘米和 14 皮法的均方根误差分别估计它们的位置和程度。