Spatial Localization of Transformer Inspection Robot Based on Adaptive Denoising and SCOT-β Generalized Cross-Correlation
Author:
Ji Hongxin1, Zheng Chao1ORCID, Tang Zijian1, Liu Xinghua2ORCID, Liu Liqing3
Affiliation:
1. School of Electrical Engineering, China University of Mining and Technology, Xuzhou 221116, China 2. College of Mechanical and Electronic Engineering, Shandong Agricultural University, Tai’an 271018, China 3. State Grid Tianjin Electric Power Research Institute, Tianjin 300180, China
Abstract
In the detection process of the internal defects of large oil-immersed transformers, due to the huge size of large transformers and metal-enclosed structures, the positional localization of miniature inspection robots inside the transformer faces great difficulties. To address this problem, this paper proposes a three-dimensional positional localization method based on adaptive denoising and the SCOT weighting function with the addition of the exponent β (SCOT-β) generalized cross-correlation for L-type ultrasonic arrays of transformer internal inspection robots. Aiming at the strong noise interference in the field, the original signal is decomposed by an improved Empirical Mode Decomposition (EMD) method, and the optimal center frequency and bandwidth of each mode are adaptively searched. By extracting the modes in the frequency band of the positional localization signal, suppressing the modes in the noise frequency band, and reconstructing the Intrinsic Mode Function (IMF) of the independently selected superior modal components, a signal with a high signal-to-noise ratio is obtained. In addition, for the traditional mutual correlation algorithm with a large delay estimation error at a low signal-to-noise ratio, this paper adopts an improved generalized joint weighting function, SCOT-β, which improves the anti-jamming ability of the generalized mutual correlation method at a low signal-to-noise ratio by adding an exponential function to the denominator term of the SCOT weighting function’s generalized cross-correlation. Finally, the accurate positional localization of the transformer internal inspection robot is realized based on the quadratic L-array and search-based maximum likelihood estimation method. Simulation and experimental results show the following: the improved EMD denoising method better improves the signal-to-noise ratio of the positional localization signal with a lower distortion rate; in the transformer test tank, which is 120 cm in length, 100 cm in width, and 100 cm in height, based on the positional localization method in this paper, the average relative positional localization error of the transformer internal inspection robot in three-dimensional space is 2.27%, and the maximum positional localization error is less than 2 cm, which meets the requirements of engineering positional localization.
Funder
National Natural Science Foundation of China
Reference22 articles.
1. Comparison of PD detection methods for power transformers-their sensitivity and characteristics in time and frequency domain;Xu;IEEE Trans. Dielectr. Electr. Insul.,2016 2. A new testing method for the diagnosis of winding faults in transformer;Wu;IEEE Trans. Instrum. Meas.,2020 3. Acoustic localization of partial discharge sources in power transformers using a particle-swarm-optimization-route-searching algorithm;Wang;IEEE Trans. Dielectr. Electr. Insul.,2017 4. Jiang, R., Zhang, L., Yang, J., Zheng, C., Duan, X., Xue, J., Li, W., Chan, Q., and Guo, T. (2022, January 7–8). Fault Diagnosis and Treatment of a Newly Put into Operation 220kV Transformer. Proceedings of the 2022 China International Conference on Electricity Distribution (CICED 2022), Changsha, China. 5. Cheng, J., Wang, S., Huang, K., Bao, L., La, Y., and Guo, T. (2020, January 2–3). Analysis of discharge phenomenon in an UHV converter transformer during factory test. Proceedings of the 16th IET International Conference on AC and DC Power Transmission (ACDC 2020), Online Conference.
|
|