基于图像处理和深度学习的NIRS-XRF煤质分析粒度分布校正新方法。

IF 5.6 1区 化学 Q1 CHEMISTRY, ANALYTICAL
Talanta Pub Date : 2025-04-01 Epub Date: 2024-12-18 DOI:10.1016/j.talanta.2024.127427
Rui Gao, Jiaxin Yin, Ruonan Liu, Yang Liu, Jiaxuan Li, Lei Dong, Weiguang Ma, Lei Zhang, Peihua Zhang, Zhihui Tian, Yang Zhao, Wangbao Yin, Suotang Jia
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引用次数: 0

摘要

近红外光谱(NIRS)和x射线荧光光谱(XRF)的联合应用,利用近红外光谱(NIRS)对有机化合物的敏感性和XRF对无机成分的可靠性,在煤质分析中取得了显著的成果。然而,颗粒大小分布的变化会对近红外光谱的漫反射和XRF的荧光信号强度产生负面影响,导致预测的准确性和可重复性下降。为了解决这一问题,本研究创新性地提出了一种融合图像处理和深度学习的粒径校正方法。该方法首先利用显微镜相机捕获煤样表面的微观图像,并采用分段任意模型(SAM)进行二值化表示粒度分布。随后,利用空间变压器网络(STN)进行几何校正,利用卷积神经网络(CNN)进行特征提取,建立粒径分布与灰分测量误差之间的关联模型。在涉及56个煤样的实验中,其中48个用于0.2 mm的标准灰分预测模型,8个用于0 ~ 1 mm范围的校正模型,结果显示出显著的改善:预测的标准差(SD)、平均绝对误差(MAE)和均方根误差(RMSEP)分别从0.321%、0.317%和0.35%降低到0.229%、0.225%和0.257%。以0.2 mm粒度验证集的精度为参考,与校正前相比,这些指标的误差分别降低了64.06%、50%和60.80%。研究表明,将深度学习与图像分析相结合,可显著提高NIRS-XRF测量的重复性和准确性,有效减轻亚毫米级粒度对光谱检测结果的影响,提高模型适应性。该方法通过自动粒度分布分析和实时结果校正,有望为输送带物料在线质量检测技术的发展提供必要的技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel particle size distribution correction method based on image processing and deep learning for coal quality analysis using NIRS-XRF.

The combined application of near-infrared spectroscopy (NIRS) and X-ray fluorescence spectroscopy (XRF) has achieved remarkable results in coal quality analysis by leveraging NIRS's sensitivity to organic compounds and XRF's reliability for inorganic composition. However, variations in particle size distribution negatively affect the diffuse reflectance of NIRS and the fluorescence signal intensities of XRF, leading to decreased accuracy and repeatability in predictions. To address this issue, this study innovatively proposes a particle size correction method that integrates image processing and deep learning. The method first captures micro-images of the coal sample surface using a microscope camera and employs the Segment Anything Model (SAM) for binarization to represent particle size distribution. Subsequently, a Spatial Transformer Network (STN) is applied for geometric correction, followed by feature extraction using a Convolutional Neural Network (CNN) to establish a correlation model between particle size distribution and ash measurement errors. In experiments involving 56 coal samples, including 48 at 0.2 mm for the standard ash prediction model and 8 within a 0∼1 mm range for correction, the results showed significant improvements: standard deviation (SD), mean absolute error (MAE), and root mean square error of prediction (RMSEP) decreased from 0.321%, 0.317%, and 0.335% to 0.229%, 0.225%, and 0.257%, respectively. Using the accuracy of the 0.2 mm particle size validation set as a reference, compared to before correction, the errors in these metrics were reduced by 64.06%, 50%, and 60.80%, respectively. This study demonstrates that integrating deep learning and image analysis significantly enhances the repeatability and accuracy of NIRS-XRF measurements, effectively mitigating sub-millimeter particle size effects on spectral detection results and improving model adaptability. This method, through automated particle size distribution analysis and real-time result correction, holds promise for providing essential technical support for the development of online quality detection technologies for conveyor belt materials.

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来源期刊
Talanta
Talanta 化学-分析化学
CiteScore
12.30
自引率
4.90%
发文量
861
审稿时长
29 days
期刊介绍: Talanta provides a forum for the publication of original research papers, short communications, and critical reviews in all branches of pure and applied analytical chemistry. Papers are evaluated based on established guidelines, including the fundamental nature of the study, scientific novelty, substantial improvement or advantage over existing technology or methods, and demonstrated analytical applicability. Original research papers on fundamental studies, and on novel sensor and instrumentation developments, are encouraged. Novel or improved applications in areas such as clinical and biological chemistry, environmental analysis, geochemistry, materials science and engineering, and analytical platforms for omics development are welcome. Analytical performance of methods should be determined, including interference and matrix effects, and methods should be validated by comparison with a standard method, or analysis of a certified reference material. Simple spiking recoveries may not be sufficient. The developed method should especially comprise information on selectivity, sensitivity, detection limits, accuracy, and reliability. However, applying official validation or robustness studies to a routine method or technique does not necessarily constitute novelty. Proper statistical treatment of the data should be provided. Relevant literature should be cited, including related publications by the authors, and authors should discuss how their proposed methodology compares with previously reported methods.
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