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Incorporation of neural network analysis into a technique for automatically sorting lightweight metal scrap generated by ELV shredder facilities

机译:将神经网络分析纳入自动分类由ELV碎纸机设施产生的轻金属废料的技术中

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In an attempt to improve the technique of automatic sorting of lightweight metal scrap by sensing apparent density and three-dimensional shape, realized by the combination of a three-dimensional (3D) imaging camera and a meter to weigh a moving object on a conveyor belt, neural network analysis was integrated into the scrap identification algorithm, and its effect on the sorting accuracy of this technique was examined using approximately 1750 pieces of scrap sampled at three different end-of-life vehicle (ELV) shredder facilities. As a result, the newly developed algorithm, in which an unknown fragment is identified by passing through two discriminant analyses and one neural network analysis, was demonstrated to greatly decrease the time required for data analysis to prepare the identification algorithm without reducing the sorting accuracy. The average sorting accuracy for a mixture of three types of lightweight metal fragments was found to be 85%, based on the fact that the fist-sized fragments of cast aluminum, wrought aluminum, and magnesium sampled at the three ELV shredder facilities had similar apparent densities and 3D shapes. It was also suggested that still higher sorting performance is possible by repeating the procedure of modifying the database and re-learning of the neural network in the identification algorithm.
机译:为了通过感测表观密度和三维形状来改进轻质金属废料的自动分类技术,该技术是通过结合三维(3D)摄像头和仪表来称量传送带上的移动物体而实现的,将神经网络分析集成到了废料识别算法中,并使用三种不同的报废汽车(ELV)切碎机设施采样了约1750块废料,检验了其对这项技术分类精度的影响。结果,证明了新开发的算法,其中通过两个判别分析和一个神经网络分析来识别未知片段,该算法极大地减少了数据分析准备识别算法所需的时间,而不会降低分类精度。根据以下事实,发现三种轻质金属碎片混合物的平均分选精度为85%,这是基于在三个ELV切碎机设施中取样的拳头大小的铸铝,锻造铝和镁碎片的表观相似的事实。密度和3D形状。还建议通过重复修改数据库的过程并在识别算法中重新学习神经网络,可以实现更高的分类性能。

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