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Bayesian Network-based Technical Index Estimation for Industrial Flotation Process under Incomplete Data

机译:不完全数据下基于贝叶斯网络的工业浮选工艺技术指标估算

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摘要

Due to the lack of detection instruments or long measurement cycles in the industrial flotation process, accurate and real-time estimation of the technical index is of great significance for optimizing flotation performance and operational adjustment. In the real-world flotation process, incomplete data is a widespread phenomenon owing to hardware sensor failures and other reasons. To this end, this paper proposes a Bayesian network (BN)-based concentrate grade estimation method under incomplete data. The real-time froth image information and the concentrate grades of the previous periods are taken as the input of the BN model, and the current concentrate grade is the output of the BN model. The expectation maximum (EM) algorithm is used to estimate the model parameters. The application results show the proposed method can accurately estimate the concentrate grade even if some data are missing.
机译:由于工业浮选过程中缺少检测仪器或测量周期长,因此准确,实时地估算技术指标对于优化浮选性能和操作调整具有重要意义。在实际的浮动过程中,由于硬件传感器故障和其他原因,数据不完整是一种普遍现象。为此,本文提出了一种基于贝叶斯网络(BN)的不完备数据下精矿品位估算方法。实时泡沫图像信息和前一时期的精矿品位被作为BN模型的输入,而当前的精矿品位是BN模型的输出。期望最大值(EM)算法用于估计模型参数。应用结果表明,即使缺少一些数据,该方法也能准确估算出精矿品位。

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