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Multiple Bilinear Models Based Soft-Sensor for Rare Earth Cascade Extraction Processes

机译:基于多个双线性模型的稀土级联萃取过程软传感器

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In rare earth cascade extraction processes, element component content (ECC) is an important quality measure to assess the control effect. In this paper, a multiple models-based soft-sensor is developed to predict ECC in order to solve the difficulty with on-line measurement. First, the subtraction clustering algorithm is used to locate the operating points and calculate the model number, then around the multiple operating points a set of multiple bilinear models are established. At every sample instant, the parameters of the multiple models are identified by the least square algorithm, and an optimal model is determined according a switching law. The application results show that the proposed soft-sensor is effective and the prediction accuracy is relatively high by comparing with data collected method from industries
机译:在稀土级联萃取过程中,元素成分含量(ECC)是评估控制效果的重要质量指标。在本文中,为了解决在线测量的困难,开发了一种基于多模型的软传感器来预测ECC。首先,将减法聚类算法用于定位工作点并计算模型编号,然后围绕多个工作点建立一组多个双线性模型。在每个采样时刻,通过最小二乘算法识别多个模型的参数,并根据切换定律确定最佳模型。应用结果表明,与行业数据采集方法相比,所提出的软传感器是有效的,并且预测精度较高。

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