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首页> 外文期刊>Minerals Engineering >IDENTIFICATION AND OPTIMIZING CONTROL OF A ROUGHER FLOTATION CIRCUIT USING AN ADAPTABLE HYBRID-NEURAL MODEL
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IDENTIFICATION AND OPTIMIZING CONTROL OF A ROUGHER FLOTATION CIRCUIT USING AN ADAPTABLE HYBRID-NEURAL MODEL

机译:自适应混合神经网络对粗浮选电路的识别和优化控制

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In this paper the identification and control of a rougher flotation process is studied using an adaptable hybrid-neural model The model is based on first principles and a PCA neural network is used for flotation kinetics estimation. Initially, the hybrid model is used for the identification, from input/output data obtained with a realistic phenomenological model, of a series of four flotation cells. Then, different regulatory and optimizing multivariable control alternatives are developed and tested on the process. The control problem is adaptively solved as an optimization problem, using predictions for the steady state obtained using the hybrid model Results obtained for different input perturbations, setpoint changes and optimization tests show satisfactory performance, satisfying all required objectives without off-set or oscillation. Based on these results, the hybrid model can be considered an excellent option for the identification and control of flotation plants, from the point of view of flexibility and robustness.
机译:在本文中,使用自适应的混合神经模型研究了粗浮选过程的识别和控制。该模型基于第一原理,并使用PCA神经网络进行浮选动力学估算。最初,混合模型用于从使用实际现象学模型获得的输入/输出数据中识别一系列四个浮选单元。然后,在流程上开发并测试了不同的监管和优化多变量控制替代方案。通过使用混合模型获得的稳态预测,可以将控制问题作为优化问题自适应地解决。针对不同的输入扰动,设定值变化和优化测试获得的结果显示出令人满意的性能,满足了所有要求的目标而没有偏移或振荡。基于这些结果,从灵活性和鲁棒性的角度来看,混合模型可以被视为识别和控制浮选植物的极佳选择。

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