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Research on Non-Intrusive Load Monitoring Based on Random Forest Algorithm

机译:基于随机森林算法的非侵入式负荷监测研究

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It is of great significance for load monitoring to monitor illegal use of electricity. Load monitoring can provide supervision for government and improve residents' awareness of safety. Compared with the intrusive load monitoring, non-intrusive load monitoring has the advantages of good economy, high reliability, and quickly realizing the electricity decomposition. Many scholars have carried out this research, but there still exists the problems: it is difficult to obtain key information from big data and the diagnostic results are inaccuracy. Therefore, load monitoring is conducted in this paper. To overcome the above shortcomings, firstly this paper obtains key information of sample based on harmonic analysis. Secondly, random forest based on multiple decision trees has better accuracy in recognition. So the random forest algorithm is applied to machine learning and pattern recognition. Finally, the proposed method is identified and analyzed. The results show that the accuracy of the online electrical detection based on the harmonic analysis and random forest algorithm is greater than 86%, which shows the effectiveness of the method.
机译:对于负载监视而言,监视非法用电具有重要意义。负荷监控可以为政府提供监督,并提高居民的安全意识。与侵入式负荷监控相比,非侵入式负荷监控具有经济性好,可靠性高,快速实现电分解的优点。许多学者进行了这项研究,但是仍然存在问题:难以从大数据中获取关键信息,并且诊断结果不准确。因此,本文进行了负载监控。为了克服上述缺点,本文首先基于谐波分析获得了样本的关键信息。其次,基于多个决策树的随机森林具有更好的识别精度。因此,将随机森林算法应用于机器学习和模式识别。最后,对提出的方法进行了识别和分析。结果表明,基于谐波分析和随机森林算法的在线电气检测精度大于86%,表明了该方法的有效性。

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