liuzy0708 / MCC5-THU-Gearbox-Benchmark-DatasetsLinks
A benchmark fault diagnosis dataset comprises vibration data collected from a gearbox under variable working conditions with intentionally induced faults, encompassing diverse fault severities and types, and various compound faults.
☆48Updated 3 months ago
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