基于机器视觉深度学习技术的木屑颗粒体积密度测定

G. Toscano, R. Pierdicca, Thomas Gasperini, Andrea Felicetti, G. Rossini, M. Balestra
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引用次数: 0

摘要

堆积密度是ISO 17225-2要求的评价木屑颗粒质量的物理参数之一。这种颗粒特性的变化导致燃烧效率的相当大的变化。颗粒堆积密度计算是一项耗时的操作,可以从颗粒生产阶段开始进行。我们的研究旨在开发一种可能适用于车载加热系统的替代方法。这项工作的任务是测试和验证使用深度神经网络来确定颗粒堆积密度的系统的效率。我们实现的系统检测,细分,并确定一堆木屑颗粒的体积。这个问题不是微不足道的,因为不规则的照明条件会影响图像的质量和木屑颗粒的重叠。然而,估计的体积密度和测量的体积密度之间的差异似乎是不可忽略的,但这种方法提供了有希望的结果,特别是因为它是能源部门的第一个方法之一。
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Wood pellet bulk density determination by machine vision deep learning technique
Bulk density is one of the physical parameters required by ISO 17225–2 to evaluate the quality of wood pellets. A change in this pellet characteristic leads to considerable variations in combustion efficiency. Pellet bulk density calculation is a time-consuming operation which can be carried out since the pellet production phase. Our research aims to develop an alternative method potentially applicable also on-board heating systems. This work has the task of testing and verifying the efficiency of a system that uses a deep neural network, to determine the pellet bulk density. Our implemented system detects, segments, and determines the volume of wood pellets in a bunch. This problem is not trivial, due to the irregular lighting conditions that affect the quality of the images and the overlapping of the wood pellets. However, the differences between estimated and measured bulk density appear to be non-negligible but this approach provides promising results, especially because it is one of the first approaches in the energy sector.
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