Optimization of coal-fired boiler SCRs based on modified support vector machine models and genetic algorithms
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Eugenio Schuster | Fengqi Si | Zhigao Xu | Carlos E. Romero | Barry N. Liebowitz | Zheng Yao | C. Romero | E. Schuster | Fengqi Si | Zhigao Xu | Z. Yao | R. Morey | Robert L. Morey
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