首页> 外文期刊>Spectrochimica Acta, Part B. Atomic Spectroscopy >Classification of wrought aluminum alloys by Artificial Neural Networks evaluation of Laser Induced Breakdown Spectroscopy spectra from aluminum scrap samples
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Classification of wrought aluminum alloys by Artificial Neural Networks evaluation of Laser Induced Breakdown Spectroscopy spectra from aluminum scrap samples

机译:铝废料样品激光诱导击穿光谱光谱评价锻铝合金的分类

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摘要

Every year throughout the world > 50 million vehicles reach the end of their life, producing millions of tons of automotive waste. The current strategies for the separation of the non-ferrous waste fraction, contain mainly aluminum, magnesium, zinc and copper alloys, involve high investment and operational costs, and pose environmental concerns. The European project SHREDDERSORT, in which our research group was actively involved, aimed to overcome this issue by developing a new dry sorting technology for the shredding of non-ferrous automotive wastes. This work represents one step of the complex SHREDDERSORT project, dedicated to the development of a strategy based on Laser Induced Breakdown Spectroscopy (LIBS) for the sorting of light alloys. LIBS was here applied in laboratory for the analysis of stationary aluminum shredder samples. To process the LIBS spectra a methodological approach based on artificial neural networks was used. Although separation could in principle be based on simple emission line ratios, the neural networks approach enables more reproducible results, which can accommodate the unavoidable signal variations due to the low intrinsic reproducibility of the LIBS systems. The neural network separated samples into different clusters and estimates their elemental concentrations. (C) 2017 Published by Elsevier B.V.
机译:全世界每年> 5000万辆车程到期,生产数百万吨汽车浪费。目前用于分离有色金属级数的策略主要含有铝,镁,锌和铜合金,涉及高投资和运营成本,并造成环境问题。欧洲项目Shreddersort,我们的研究小组积极参与其中,旨在通过开发新的干粉技术来克服这一问题,为粉碎有色金属汽车废物。这项工作代表了复杂的Shreddersort项目的一步,致力于基于激光诱导的击穿光谱(Libs)的策略的开发,用于分类轻合金。 LIBS在这里应用于实验室,用于分析固定铝碎纸机样品。为了处理Libs Spectra,使用了基于人工神经网络的方法方法。尽管分离原则上可以基于简单的排放线比率,但是神经网络方法能够实现更多可重复的结果,这可以适应由于LIBS系统的低固有再现性引起的不可避免的信号变化。神经网络将样品分离成不同的簇,并估计其元素浓度。 (c)2017年由Elsevier B.V发布。

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  • 作者单位

    CNR Res Area Inst Chem Organometall Cpds Appl &

    Laser Spect Lab Via G Monizzi 1 I-56124 Pisa Italy;

    CNR Res Area Inst Chem Organometall Cpds Appl &

    Laser Spect Lab Via G Monizzi 1 I-56124 Pisa Italy;

    CNR Res Area Inst Chem Organometall Cpds Appl &

    Laser Spect Lab Via G Monizzi 1 I-56124 Pisa Italy;

    CNR Res Area Inst Chem Organometall Cpds Appl &

    Laser Spect Lab Via G Monizzi 1 I-56124 Pisa Italy;

    CNR Res Area Inst Chem Organometall Cpds Appl &

    Laser Spect Lab Via G Monizzi 1 I-56124 Pisa Italy;

    Ist Nazl Fis Nucl Sez Genova Via Dodecaneso 33 I-16146 Genoa Italy;

    CNR Res Area Inst Chem Organometall Cpds Appl &

    Laser Spect Lab Via G Monizzi 1 I-56124 Pisa Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 原子光谱学;
  • 关键词

    Aluminum alloys; LIBS; Artificial neural networks; Shredding;

    机译:铝合金;LIBS;人工神经网络;切碎;

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