Compression of electrical code violation recognition data using the improved swinging door trending algorithm
Author:
Yang Yingchun1, Zhao Xu1, Han Tianxi1, Li Zhe2, Pan Fei2
Affiliation:
1. Yunnan Electric Power Research Institute Co., Ltd , Kunming , Yunnan , , China . 2. Department of Electrical Engineering , Shanghai Jiaotong University , Shanghai , , China .
Abstract
Abstract
Aiming at the challenge of storing massive power grid data, this paper proposes an improved swing gate trend algorithm to effectively compress 5G data. The algorithm first performs least squares smoothing on the original data to reduce noise interference on the SDT algorithm, which enables the data compression process to more accurately determine the data trend. Further, the shortcomings of the original SDT algorithm are improved, including adaptive frequency conversion data processing, dynamic threshold adjustment, and anomaly recording strategy, to enhance the practicality and efficiency of the algorithm. Through simulation analysis and example data validation, the study shows that the data compression ratio can be stabilized at about 23.98 when the data compression time reaches 1.6 minutes, and the actual error is very close to the desired error. The time overhead of the improved SDT algorithm is only 0.225 seconds, indicating that the algorithm is efficient and reliable. Combined with different data compression storage strategies, the algorithm can further reduce the data compression time. This study provides an adequate data compression method for electric code violation identification, which offers a practical solution for processing and storing large-scale grid data.
Publisher
Walter de Gruyter GmbH
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