Data-Driven Robust RVFLNs Modeling of a Blast Furnace Iron-Making Process Using Cauchy Distribution Weighted M-Estimation
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Tianyou Chai | Hong Wang | Ping Zhou | Youbin Lv | T. Chai | Hong Wang | P. Zhou | H. Wang | Youbin Lv
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