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Multi-information online detection of coal quality based on machine vision

机译:基于机器视觉的多信息在线检测煤炭质量

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摘要

Online multi-information detection of mineral properties and composition plays a vital role in the realization of digital mining and digital concentrating mill, and the way of machine vision technology is put forward as a cost-effective and safe approach at present. This paper presents an exploratory study employing a bench-scale approach to detect the multi-information of coal quality online by machine vision simultaneously, including particle size distribution, density distribution, the ash content of each density fraction, and the total ash content. Firstly, we adopt a Finite-Erosion-and-Exact-Dilation (FEED) algorithm and a particle-on-edge region segmentation algorithm to segment overlapped particles and ensure the full analysis of target regions. Moreover, twenty-nine features are extracted and optimized to enable the particle mass estimation model, particle size characterization, classification model of density fraction, and prediction model of ash content to be implemented. Finally, an experimental study shows the merits of the proposed approach, and the average prediction errors of size distribution, density distribution, and ash content of each density fraction are 1.85%, 2.57%, 3.36%, respectively. The total ash content error is 2.54%. Results derived using the proposed approach reveal that it has the potential to be applied to the coal processing industry. (C) 2020 Published by Elsevier B.V.
机译:在线多信息检测矿物质和组合物在实现数字采矿和数字集中工厂的实现中起着至关重要的作用,并且机器视觉技术的方式被提出作为目前具有成本效益和安全的方法。本文介绍了采用长凳规模方法的探索性研究,同时通过机器视觉检测煤炭质量的多信息,包括粒度分布,密度分布,每个密度分数的灰分含量和总灰分含量。首先,我们采用有限侵蚀和精确扩张(Feed)算法和粒子上沿边缘区域分割算法,以段重叠的粒子,并确保对目标区域的完全分析。此外,提取二十九个特征并优化以使粒度估计模型,粒度表征,密度分数的分类模型以及待实施的灰分含量的预测模型。最后,实验研究表明所提出的方法的优点,以及每个密度分数的尺寸分布,密度分布和灰分含量的平均预测误差分别为1.85%,2.57%,3.36%。总灰分误差为2.54%。使用所提出的方法导出的结果表明,它有可能适用于煤炭加工行业。 (c)2020由elsevier b.v发布。

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