载波模块检测数据分类的LSTM网络

Yue Xuejun, Zhu Yiqun, Sun Shuxian, Teng Yongxing, L. Jinyu
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引用次数: 0

摘要

随时互联网的普及,城市的智能电网得到了迅速的发展。与此同时,智能电表的数量也逐年增加。对电源模块载波模块数据的有效挖掘也提升到一个新的水平。但是,由于现有的运营商模块数据分析方案还不够成熟,市场上急需一套完整的运营商模块数据分析方案。通过最先进的检测技术和数据分析方法,实现对载波模块的数据挖掘,提高数据的使用价值。过去使用的是传统的统计学习方法,如朴素贝叶斯、支持向量机等,但随着时代的进步,这些技术已经不能满足人们的需求。与以往不同,本文提出了一种基于深度学习网络的载波模块检测数据挖掘算法。利用LSTM深度神经网络对载波模块检测数据进行建模,自动识别不同的噪声环境,然后根据识别结果对载波模块进行动态调整。实验表明,该模型具有很好的效果。此外,该技术解决方案不会影响现有的业务流程。据我们所知,这是首次将深度学习方法应用到载波模块检测数据的分析中,对未来电力系统数据处理有很大的启发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LSTM Network for Carrier Module Detection Data Classification
At any time the popularity of the Internet, the city's smart grid has been developing rapidly. At the same time, the number of smart meters has increased year by year. The effective mining of the power module carrier module data has also been upgraded to a new level. However, due to the fact that the existing carrier module data analysis scheme is not mature enough, a complete set of data analysis schemes for carrier module is urgently needed in the market. Through the most advanced detection technology and data analysis method, we can realize the data mining of carrier module and improve the use value of data. In the past, traditional statistical learning methods are used, such as naive Bayes and support vector machines, but with the progress of the times, these technologies can not meet the needs of people. Different from the past, this paper proposes a deep learning network based algorithm for data mining of carrier module detection. The carrier module detection data is modeled by LSTM deep neural network to automatically identify the different noise environment, and then the carrier module is dynamically adjusted according to the recognition results. Experiments show that the model has very good results. In addition, the technology solution will not affect the existing business processes. As far as we know, this is the first time to apply the deep learning method to the analysis of the carrier module detection data, which has a great inspiration for the future power system data processing.
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