Data augmentation using GANN in the quantitative LIBS analysis of scarce samples: a case study on polymetallic nodules from 5000 m ocean depth

IF 3.1 2区 化学 Q2 CHEMISTRY, ANALYTICAL
Jie Ren, Suming Jiang, Chen Sun, Zhenggang Li, Yanhui Dong, Ling Chen, Xibin Han, Jin Yu and Wendong Wu
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Abstract

As the world transitions towards renewable energy, the demand for critical resources such as nickel (Ni), cobalt (Co), and lithium (Li) in energy storage systems is ever more pronounced. The abundance of these elements in deep-sea polymetallic nodules provide an alternative to the land-based resources. However, the scarcity of deep-sea nodule samples poses a challenge in obtaining sufficient Laser-Induced Breakdown Spectroscopy (LIBS) data to train machine learning models for quantitative analysis. In this work, a Generative Adversarial Neural Network (GANN) with physical loss constraints was designed to augment the spectral database. Unsupervised classification techniques, including Principal Component Analysis (PCA) and Density-Based Spatial Clustering of Applications with Noise (DBSCAN), were employed to assess the similarity between experimental and generated spectra. Four machine learning models—Backpropagation Neural Networks (BPNN), Support Vector Machines (SVM), Extreme Gradient Boosting (XGBoost), and Convolutional Neural Networks (CNN)—were selected to represent a broad spectrum in current machine learning methods. Both experimental and expanded spectral datasets were used to train these models in quantitative elemental analysis. The model prediction performance was validated by comparing the results with those of inductively coupled plasma mass spectrometry (ICP-MS). The results demonstrated that augmenting the spectral database with GANN generated spectra improves the accuracy of machine learning models in the quantitative analysis of Ni, Co, and Li in deep-sea polymetallic nodules, providing a valuable approach for LIBS-based analysis of scarce samples.

Abstract Image

在稀缺样品的定量LIBS分析中使用GANN进行数据增强:对5000米海洋深度多金属结核的案例研究
随着世界向可再生能源过渡,对储能系统中镍(Ni)、钴(Co)和锂(Li)等关键资源的需求越来越明显。深海多金属结核中丰富的这些元素为陆地资源提供了另一种选择。然而,深海结核样本的稀缺给获得足够的激光诱导击穿光谱(LIBS)数据来训练机器学习模型进行定量分析带来了挑战。在这项工作中,设计了一个具有物理损失约束的生成对抗神经网络(GANN)来增强光谱数据库。采用无监督分类技术,包括主成分分析(PCA)和基于密度的带噪声应用空间聚类(DBSCAN),来评估实验光谱和生成光谱之间的相似性。四种机器学习模型-反向传播神经网络(BPNN),支持向量机(SVM),极端梯度增强(XGBoost)和卷积神经网络(CNN) -被选中代表当前机器学习方法的广泛范围。实验和扩展的光谱数据集被用来训练这些模型在定量元素分析。通过与电感耦合等离子体质谱(ICP-MS)的预测结果比较,验证了模型的预测性能。结果表明,利用GANN生成的光谱增强光谱数据库可以提高机器学习模型在深海多金属结核中Ni, Co和Li定量分析中的准确性,为基于libs的稀缺样品分析提供了有价值的方法。
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来源期刊
CiteScore
6.20
自引率
26.50%
发文量
228
审稿时长
1.7 months
期刊介绍: Innovative research on the fundamental theory and application of spectrometric techniques.
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