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首页> 外文期刊>Advanced Powder Technology: The internation Journal of the Society of Powder Technology, Japan >Clusters identification and meso-scale structures in a circulating fluidized bed based on image processing
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Clusters identification and meso-scale structures in a circulating fluidized bed based on image processing

机译:基于图像处理的循环流化床中的簇识别和中学尺度结构

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To understand the behaviors of particle clusters in the circulating fluidized bed (CFB), experiments were conducted with glass beads to acquire the image sequences of gas-solid flow on a CFB riser with a 100 mm x 25 mm cross-section and 3.2 m in length by adopting high-speed photography. An image multilevel thresholding approach using k-means algorithm was applied to perform image segmentation to identify clusters as well as core clusters in the riser, automatically. Cluster characteristics, such as the density and the number of clusters were obtained subsequently. The results show the image segmentation method based on k-means algorithm has made some improvement in terms of precision and systematicness for cluster identification. In addition, the internal structure of the cluster was analysed. Collectively, the cluster always consists of a dense core with highest solids holdup surrounded by a relatively dilute cloud with no clear boundary. High solids holdup enhances the cluster formation. On the contrary, the core cluster disappears at low solids holdup condition, indicating the cluster is only composed of cluster cloud in this case. Furthermore, based on the present experimental data, the correlations between the cluster density and the local time-mean solids holdup are presented. (C) 2019 The Society of Powder Technology Japan. Published by Elsevier B.V. and The Society of Powder Technology Japan. All rights reserved.
机译:为了了解循环流化床(CFB)中的颗粒簇的行为,用玻璃珠导进行实验,以在CFB提升板上获得气体固体流量的图像序列,其中100mm×25mm横截面和3.2米通过采用高速摄影的长度。应用了使用K-Means算法的图像多级阈值阈值处理方法来执行图像分割,以自动地识别提升板中的群集以及核心群集。随后获得群体特性,例如密度和簇的数量。结果表明了基于K-Means算法的图像分割方法对群集识别的精度和系统性方面进行了一些改进。此外,分析了簇的内部结构。统称,群集始终由一个密集的核心组成,具有最高的固体持有,由一个相对稀释的云包围,没有明确的边界。高固体保持增强了簇形成。相反,核心群集在低固体保持条件下消失,表示群集仅在这种情况下由集群云组成。此外,基于本实验数据,提出了簇密度与局部时间平均固体保持之间的相关性。 (c)2019年日本粉末技术学会。由elsevier b.v发表。和日本粉末科技会。版权所有。

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