Image processing-based monitoring of a batch flotation process

M. Massinaei, N. Mehrshad, M. Hosseini
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Abstract

Machine vision technology now offers a viable means of monitoring and controlling flotation performance. In this study an image analysis algorithm utilizing an adaptive marker based watershed transform was developed to segment the froth images and measure the bubble size over a wide range of process conditions. Flotation experiments were conducted at a wide range of operating conditions (i.e. gas flow rate, slurry solids %, frother dosage and collector dosage) and the froth mean bubble size was determined for each run. The results showed that the proposed algorithm can be successfully applied to monitor the flotation process at different conditions.
基于图像处理的间歇浮选过程监控
机器视觉技术现在提供了一种监测和控制浮选性能的可行手段。在本研究中,开发了一种基于自适应标记的分水岭变换的图像分析算法,用于分割泡沫图像并测量各种工艺条件下的气泡大小。浮选实验在较宽的操作条件下进行(即气体流速、矿浆固含量%、起泡剂用量和捕收剂用量),并确定每次运行的泡沫平均气泡大小。结果表明,该算法可成功地应用于不同条件下的浮选过程监控。
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