Li Jianian, Ma Yongzheng, Zhang Jian, Kong Dandan
Faculty of Modern Agricultural Engineering, Kunming University of Science and Technology, Kunming 650500, China.
Faculty of Modern Agricultural Engineering, Kunming University of Science and Technology, Kunming 650500, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2025 Jan 5;324:124985. doi: 10.1016/j.saa.2024.124985. Epub 2024 Aug 16.
The rapid detection of fertilizer nutrient information is a crucial element in enabling intelligent and precise variable fertilizer application. However, traditional detection methods possess limitations, such as the difficulty in quantifying multiple components and cross-contamination. In this study, a rapid detection method was proposed, leveraging Raman spectroscopy combined with machine learning, to identify five types of fertilizers: KSO, (CO(NH), KHPO, KNO, and N:P:K (15-15-15), along with their concentrations. Qualitative and quantitative models of fertilizers were constructed using three machine learning algorithms combined with five spectral preprocessing methods. Two variable selection methods were used to optimize the quantitative model. The results showed that the classification accuracy of the five fertilizer solutions obtained by random forest (RF) was 100 %. Moreover, in terms of regression, partial least squares regression (PLSR) outperformed extreme learning machine (ELM) and least squares support vector machine (LSSVM), yielding prediction R within the range of 0.9843-0.9990 and a root mean square error in the range of 0.0486-0.1691. In addition, this study evaluated the impact of different water types (deionized water, well water, and industrial transition water) on the detection of fertilizer information via Raman spectroscopy. The results showed that while different water types did not notably affect the identification of fertilizer nutrients, they did exert a pronounced effect on the quantification of concentrations. This study highlights the efficacy of combining Raman spectroscopy with machine learning in detecting fertilizer nutrients and their concentration information effectively.
快速检测肥料养分信息是实现智能精准变量施肥的关键要素。然而,传统检测方法存在局限性,如难以对多种成分进行定量分析以及交叉污染问题。在本研究中,提出了一种利用拉曼光谱结合机器学习的快速检测方法,用于识别五种肥料:硫酸钾(K₂SO₄)、尿素(CO(NH₂)₂)、磷酸二氢钾(KH₂PO₄)、硝酸钾(KNO₃)和氮磷钾复合肥(15 - 15 - 15)及其浓度。使用三种机器学习算法结合五种光谱预处理方法构建了肥料的定性和定量模型。采用两种变量选择方法对定量模型进行优化。结果表明,随机森林(RF)对五种肥料溶液的分类准确率为100%。此外,在回归方面,偏最小二乘回归(PLSR)优于极限学习机(ELM)和最小二乘支持向量机(LSSVM),预测相关系数R在0.9843 - 0.9990范围内,均方根误差在0.0486 - 0.1691范围内。此外,本研究评估了不同水质类型(去离子水、井水和工业回用水)对通过拉曼光谱检测肥料信息的影响。结果表明,不同水质类型虽对肥料养分的识别影响不显著,但对浓度定量有显著影响。本研究强调了拉曼光谱与机器学习相结合在有效检测肥料养分及其浓度信息方面的有效性。