烟花算法优化DBN-ELM的故障诊断(PSO-MCKD )(matlab代码)

上传者: wq6qeg88 | 上传时间: 2022-05-06 18:05:59 | 文件大小: 24KB | 文件类型: ZIP
这是基于改进Fireworks优化的深度信念网络的极限学习机的滚动轴承亚健康识别的Matlab版本的部分实现 Rolling Bearing Sub-Health Recognition via Extreme Learning Machine Based on Deep Belief Network Optimized by Improved Fireworks 算法: PSO-MCKD FWA-MCKD

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