Paper
25 September 2023 Repair method for abnormal loss of electrical low voltage measurement data
Yi Ding, Fei Teng, Chao Pang, Pan Zhang, Pei Chen, Xianxu Huo
Author Affiliations +
Abstract
At present, the transmission of information from the terminals in the low-voltage station area is generally through power line carrier communication, and the working environment of the collection terminals is complicated, which is prone to missing data due to interference in the channel and abnormal collection equipment. In this paper, we propose a method to repair the abnormal missing data of distribution and low-voltage measurement data for the service middle station, which constructs the electricity consumption data matrix through the massive user data in the data middle station and records the set of missing data in the electricity consumption data matrix; constructs a pre-population model with the objective function of minimizing the kernel parametrization of the matrix, and applies the singular value threshold algorithm to pre-populate the missing data in the middle electricity consumption data matrix; clusters the pre-populated The pre-populated electricity consumption data matrix is clustered, and a low-rank repair model of electricity consumption data with joint optimization of matrix kernel parametrization and L1 parametrization is established; by solving the low-rank repair model of electricity consumption data with joint optimization of matrix kernel parametrization and L1 parametrization, the secondary repaired electricity consumption data matrix is obtained. Finally, comparing this method with the traditional interpolation restoration method, this method can obtain higher accuracy restored data by low-rank matrix restoration and effectively improve the data quality of the information collection system in the distribution business middle station.
(2023) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Yi Ding, Fei Teng, Chao Pang, Pan Zhang, Pei Chen, and Xianxu Huo "Repair method for abnormal loss of electrical low voltage measurement data", Proc. SPIE 12788, Second International Conference on Energy, Power, and Electrical Technology (ICEPET 2023), 127882D (25 September 2023); https://doi.org/10.1117/12.3004409
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Matrices

Data modeling

Power consumption

Data acquisition

Interpolation

Mathematical optimization

Power grids

Back to Top