Citation: | HUANG Fu-xing, ZHOU Guang-shan, DING Hong, ZHANG Luo-ping, QIAN Shu-yun, YUAN Pei-sen. Electric energy abnormal data detection based on Isolation Forests[J]. Journal of East China Normal University (Natural Sciences), 2019, (5): 123-132. doi: 10.3969/j.issn.1000-5641.2019.05.010 |
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