STA-APSNFIS: STA-Optimized Adaptive Pre-Sparse Neuro-Fuzzy Inference System for Online Soft Sensor Modeling
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Jinping Liu | Jiezhou He | Yongfang Xie | Pengfei Xu | Zhaohui Tang | Churong Jiang | Yongfang Xie | Jinping Liu | Zhaohui Tang | Pengfei Xu | Jiezhou He | Churong Jiang
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