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第 8 期              刘  杰,等: 不均衡样本下轴承故障的 LSGAN-Swin Transformer 诊断方法                        1787

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                   HUANG Nantian, YANG Xuehang, CAI Guowei, et   通信作者: 刘  杰(1980—),女,博士,副教授。
                   al. A deep adversarial diagnosis method for wind turbine   E-mail: starliujie@126.com
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