Zahid Ali, Yasir Jamil, Hafeez Anwar, Raja Adil Sarfraz
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引用次数: 0
摘要
废物管理和经济以各种方式交织在一起。采用可持续的废物管理技术可以促进经济增长和资源保护。基于人工智能(AI)的分类对于电子废物(e-waste)管理中金属的快速和非接触式分类非常重要。在本研究工作中,我们选取了五种铝合金,因为它们在电子工业中广泛用于结构、电气和热技术功能。激光诱导击穿光谱(LIBS)是一种光谱识别技术,与人工智能的机器学习(ML)分类模型结合使用。结果发现,主成分分析(PCA)这种无监督的 ML 分类器无法区分合金的 LIBS 数据。然后在随机选择的 80% 的合金上训练了有监督的 ML 分类器(进行 10 倍交叉验证),并在每种合金的 20% 光谱数据上进行了测试,以评估每种分类器的分类能力。在大多数测试的 K 近邻(kNN)变体中,结果准确率低于 30%,但采用随机子空间方法的 KNN 组合的准确率提高到 98%。这项研究表明,基于人工智能的 LIBS 系统可以在非接触模式下有效地对电子废物合金进行分类,并有可能与机器人系统相连接,从而最大限度地减少人工劳动。
Classification of e-waste using machine learning-assisted laser-induced breakdown spectroscopy.
Waste management and the economy are intertwined in various ways. Adopting sustainable waste management techniques can contribute to economic growth and resource conservation. Artificial intelligence (AI)-based classification is very crucial for rapid and contactless classification of metals in electronic waste (e-waste) management. In the present research work, five types of aluminium alloys, because of their extensive use in structural, electrical and thermotechnical functions in the electronics industry, were taken. Laser-induced breakdown spectroscopy (LIBS), a spectral identifier technique, was employed in conjunction with machine learning (ML) classification models of AI. Principal component analysis (PCA), an unsupervised ML classifier, was found incapable to differentiate LIBS data of alloys. Supervised ML classifier was then trained (for 10-fold cross-validation) on randomly selected 80% and tested on 20% spectral data of each alloy to assess classification capacity of each. In most of the tested variants of K nearest neighbour (kNN) the resulting accuracy was lower than 30% but kNN ensembled with random subspace method showed improved accuracy up to 98%. This study revealed that an AI-based LIBS system can classify e-waste alloys rather effectively in a non-contactless mode and could potentially be connected with robotic systems, hence, minimizing manual labour.
期刊介绍:
Waste Management & Research (WM&R) publishes peer-reviewed articles relating to both the theory and practice of waste management and research. Published on behalf of the International Solid Waste Association (ISWA) topics include: wastes (focus on solids), processes and technologies, management systems and tools, and policy and regulatory frameworks, sustainable waste management designs, operations, policies or practices.