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Issue title: Selected papers from the 9th International Multi-Conference on Engineering and Technology Innovation 2019 (IMETI2019)
Guest editors: Wen-Hsiang Hsieh
Article type: Research Article
Authors: Pan, Nana; * | Shen, Xinb; c | Guo, Xiaojued | Cao, Minb | Pan, Dilind
Affiliations: [a] Faculty of Civil Aviation and Aeronautical, Kunming University of Science & Technology, Kunming, P.R. China | [b] Metrology Center of Yunnan Power Grid Co., Ltd., Kunming, P.R. China | [c] Faculty of Mechanical and Electrical Engineering, Kunming University of Science & Technology, Kunming, P.R. China | [d] Kunming ZhiYuan Measurement & Control Technology Co., Ltd., Kunming, P.R. China
Correspondence: [*] Corresponding author. Nan Pan, Faculty of Civil Aviation and Aeronautical,Kunming University of Science & Technology, Kunming 650500, P.R. China. E-mail: 15808867407@163.com.
Abstract: In recent years, electricity stealing has been repeatedly prohibited, and as the methods of stealing electricity have become more intelligent and concealed, it is growing increasingly difficult to extract high-dimensional data features of power consumption. In order to solve this problem, a correlation model of power-consumption data based on convolutional neural networks (CNN) is established. First, the original user signal is preprocessed to remove the noise. The user signal with a fixed signal length is then intercepted and the parallel class labelled. The segmented user signals and corresponding labels are input into the convolutional neural network for training, and the trained convolutional neural network is then used to detect and classify the test user signals. Finally, the actual steal leak dataset is used to verify the effectiveness of this algorithm, which proves that the algorithm can effectively carry out anti–-electricity stealing by warning of abnormal power consumption behavior. There are lots of line traces on the surface of the broken ends which left in the cable cutting case crime scene along the high-speed railway in China. The line traces usually present nonlinear morphological features and has strong randomness. It is not very effective when using existing image-processing and three-dimensional scanning methods to do the trace comparison, therefore, a fast algorithm based on wavelet domain feature aiming at the nonlinear line traces is put forward to make fast trace analysis and infer the criminal tools. The proposed algorithm first applies wavelet decomposition to the 1-D signals which picked up by single point laser displacement sensor to partially reduce noises. After that, the dynamic time warping is employed to do trace feature similarity matching. Finally, using linear regression machine learning algorithm based on gradient descent method to do constant iteration. The experiment results of cutting line traces sample data comparison demonstrate the accuracy and reliability of the proposed algorithm.
Keywords: Anti–electricity stealing, high-dimensional data features, convolutional neural network, early warning
DOI: 10.3233/JIFS-189621
Journal: Journal of Intelligent & Fuzzy Systems, vol. 40, no. 4, pp. 7993-7999, 2021
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