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首页> 外文期刊>Journal of Process Control >Artificial neural network based system identification and model predictive control of a flotation column
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Artificial neural network based system identification and model predictive control of a flotation column

机译:基于人工神经网络的浮选塔系统辨识与模型预测控制

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The paper describes the design of a neural network based model predictive controller for controlling the interface level in a flotation column. For the system identification, the tailings valve opening is subjected to a pseudo-random ternary signal and response of the interface level is recorded over a period of time. The data so generated is used to develop a dynamic feed forward neural network model. The model uses two past values and one present value of the tailings valve opening as well as interface level as inputs and predicts the future interface level. This model is used for the design of a model predictive controller to control the interface level. The controller was tested both for liquid-gas system as well as liquid-gas-solid system and was found to perform very satisfactorily. The performance of the controller was compared with that of a conventional PI controller for a two-phase system and was found to be better.
机译:本文介绍了一种基于神经网络的模型预测控制器的设计,该模型用于控制浮选塔中的界面液位。为了进行系统识别,尾阀的开度受到伪随机三元信号的影响,并在一段时间内记录界面液位的响应。如此生成的数据用于开发动态前馈神经网络模型。该模型使用尾矿阀开度的两个过去值和一个当前值以及界面水平作为输入,并预测将来的界面水平。该模型用于设计模型预测控制器以控制接口级别。对控制器进行了液-气系统和液-气-固系统的测试,发现其性能非常令人满意。将该控制器的性能与用于两相系统的常规PI控制器的性能进行了比较,发现它的性能更好。

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