Towards Automatic Classification of Fragmented Rock Piles via Proprioceptive Sensing and Wavelet Analysis

U. Artan, J. Marshall
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引用次数: 1

Abstract

In this paper, we describe a method for classifying rock piles characterized by different size distributions by using accelerometer data and wavelet analysis. Size distribution (frag-mentation) estimates are used in the mining and aggregates industries to ensure the rock that enters the crushing and grinding circuits meet input design specifications. Current technologies use exteroceptive sensing to estimate size distributions from, for example, camera images. Our approach instead proposes the use of signals acquired from the process of loading equipment that are used to transport fragmented rock. The experimental setup used a laboratory-sized mock up of a haul truck with two inertial measurement units (IMUs) for data collection. Results utilizing wavelet analysis are provided that show how accelerometers could be used to distinguish between piles with different size distributions.
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基于本体感觉和小波分析的碎石桩自动分类研究
本文介绍了一种利用加速度计数据和小波分析对不同尺寸分布特征的岩桩进行分类的方法。粒度分布(破碎)估计用于采矿和集料行业,以确保进入破碎和研磨回路的岩石符合输入设计规格。目前的技术使用外部感知来估计尺寸分布,例如,相机图像。相反,我们的方法建议使用从用于运输破碎岩石的装载设备过程中获得的信号。实验装置使用了一个实验室大小的运输卡车模型,带有两个惯性测量单元(imu)用于数据收集。利用小波分析的结果表明,加速度计可以用来区分不同大小分布的桩。
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