Zhang Hao, Zhang Nannan, Liao Shibin, Liu Chao, Chen Li, Chang Jinyu, Tao Jintao
State Key Laboratory of Desert and Oasis Ecology, Key Laboratory of Ecological Safety and Sustainable Development in Arid Lands, Xinjiang Institute of Ecology and Geography, Chinese Academy of Sciences, Urumqi 830011, China; Xinjiang Key Laboratory of Mineral Resources and Digital Geology, Urumqi 830011, China; University of Chinese Academy of Sciences, Beijing 100049, China.
State Key Laboratory of Desert and Oasis Ecology, Key Laboratory of Ecological Safety and Sustainable Development in Arid Lands, Xinjiang Institute of Ecology and Geography, Chinese Academy of Sciences, Urumqi 830011, China; Xinjiang Key Laboratory of Mineral Resources and Digital Geology, Urumqi 830011, China; University of Chinese Academy of Sciences, Beijing 100049, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2025 Jan 5;324:125010. doi: 10.1016/j.saa.2024.125010. Epub 2024 Aug 31.
Lithium, a rare metal of strategic importance, has garnered heightened global attention. This investigation delves into the laboratory visible-near infrared and short-wavelength infrared reflectance (VNIR-SWIR 350 nm-2500 nm) spectral properties of lithium-rich rocks and stream sediments, aiming to elucidate their quantitative relationship with lithium concentration. This research seeks to pave new avenues and furnish innovative technical solutions for probing sedimentary lithium reserves. Conducted in the Tuanjie Peak region of Western Kunlun, Xinjiang, China, this study analyzed 614 stream sediments and 222 rock specimens. Initial steps included laboratory VNIR-SWIR spectral reflectance measurements and lithium quantification. Following the preprocessing of spectral data via Savitzky-Golay (SG) smoothing and continuum removal (CR), the absorption positions (Pos2210nm, Pos1910nm) and depths (Depth2210, Depth1910) in the rock spectra, as well as the Illite Spectral Maturity (ISM) of the rock samples, were extracted. Employing both the Successive Projections Algorithm (SPA) and genetic algorithm (GA), wavelengths indicative of lithium content were identified. Integrating the lithium-sensitive wavelengths identified by these feature selection methods, A quantitative predictive regression model for lithium content in rock and stream sediments was developed using partial least squares regression (PLSR), support vector regression (SVR), and convolutional neural network (CNN). Spectral analysis indicated that lithium is predominantly found in montmorillonite and illite, with its content positively correlating with the spectral maturity of illite and closely related to Al-OH absorption depth (Depth2210) and clay content. The SPA algorithm was more effective than GA in extracting lithium-sensitive bands. The optimal regression model for quantitative prediction of lithium content in rock samples was SG-SPA-CNN, with a correlation coefficient prediction (R) of 0.924 and root-mean-square error prediction (RMSEP) of 0.112. The optimal model for the prediction of lithium content in stream sediment was SG-SPA-CNN, with an R and RMSEP of 0.881 and 0.296, respectively. The higher prediction accuracy for lithium content in rocks compared to sediments indicates that rocks are a more suitable medium for predicting lithium content. Compared to the PLSR and SVR models, the CNN model performs better in both sample types. Despite the limitations, this study highlights the effectiveness of hyperspectral technology in exploring the potential of clay-type lithium resources in the Tuanjie Peak area, offering new perspectives and approaches for further exploration.
锂,一种具有战略重要性的稀有金属,已引起全球更多关注。本研究深入探讨了富锂岩石和河流沉积物的实验室可见 - 近红外及短波红外反射率(VNIR - SWIR 350nm - 2500nm)光谱特性,旨在阐明它们与锂浓度的定量关系。本研究旨在为探测沉积锂储量开辟新途径并提供创新技术解决方案。该研究在中国新疆西昆仑团结峰地区开展,分析了614个河流沉积物和222个岩石标本。初始步骤包括实验室VNIR - SWIR光谱反射率测量和锂定量分析。在通过Savitzky - Golay(SG)平滑和连续统去除(CR)对光谱数据进行预处理后,提取了岩石光谱中的吸收位置(Pos2210nm、Pos1910nm)和深度(Depth2210、Depth1910)以及岩石样品的伊利石光谱成熟度(ISM)。采用连续投影算法(SPA)和遗传算法(GA)确定指示锂含量的波长。综合这些特征选择方法确定的锂敏感波长,使用偏最小二乘回归(PLSR)、支持向量回归(SVR)和卷积神经网络(CNN)建立了岩石和河流沉积物中锂含量的定量预测回归模型。光谱分析表明,锂主要存在于蒙脱石和伊利石中,其含量与伊利石的光谱成熟度呈正相关,且与Al - OH吸收深度(Depth2210)和粘土含量密切相关。在提取锂敏感波段方面,SPA算法比GA更有效。岩石样品中锂含量定量预测的最优回归模型为SG - SPA - CNN,相关系数预测值(R)为0.924,均方根误差预测值(RMSEP)为0.112。河流沉积物中锂含量预测的最优模型为SG - SPA - CNN,R和RMSEP分别为(0.881)和(0.296)。岩石中锂含量的预测精度高于沉积物,表明岩石是预测锂含量更合适的介质。与PLSR和SVR模型相比,CNN模型在两种样品类型中表现更好。尽管存在局限性,但本研究突出了高光谱技术在探索团结峰地区粘土型锂资源潜力方面的有效性,为进一步勘探提供了新的视角和方法。