Recognition of flooding and sinking conditions in flotation process using soft measurement of froth surface level and QTA
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Recognition of flooding and sinking conditions in flotation process using soft measurement of froth surface level and QTA

机译:使用泡沫表面级和QTA的软测量识别浮选过程中的浮动过程中的沉降条件

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AbstractAccurate recognition of abnormal conditions is crucial for control and optimization of the running of flotation process. In this paper, a novel method using soft measurement of froth surface level and modified qualitative trend analysis (QTA) is proposed for flooding and sinking conditions recognition. First, the soft measurement method based on defocus depth recovery is used to derive the froth surface level from the 2D froth image. Then, a modified interval-halving QTA is developed to extract the trend information from the froth surface level. Finally, the flooding and sinking conditions can be recognized by the classification decision tree combining the froth surface level and its trend. Offline and online experiments show that the proposed recognition method works effectively and accurately even at the early stage of the abnormal conditions.Highlights?Froth surface level is derived by defocus depth recovery based soft measurement.?An improved interval-halving QTA is proposed to extract trend information.?Flotation conditions are classified by the froth surface level and its trend.?The method can recognize the flooding and sinking conditions even at the early stage.]]>
机译:<![CDATA [ 抽象 准确识别异常情况对于控制和优化浮选过程的运行至关重要。本文提出了一种新的方法,采用泡沫表面水平的软测量和改性定性趋势分析(QTA)进行洪水和下沉条件识别。首先,基于散焦深度恢复的软测量方法用于从2D泡沫图像导出泡沫表面级。然后,开发了修改的间隔QTA以从泡沫表面级别提取趋势信息。最后,可以通过组合泡沫表面级及其趋势的分类决策树来识别洪水和沉降条件。离线和在线实验表明,即使在异常条件的早期阶段,该识别方法也有效准确地工作。 突出显示 泡沫表面级别由基于Defocus深度恢复的软测量导出。 提出了一种改进的间隔时间QTA以提取趋势信息。 浮选条件被泡沫表面级别及其趋势分类。 即使在早期阶段也可以识别洪水和沉没条件。 ]]>

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