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基于光谱的化学计量学与机器学习建模相结合,预测腰果叶片宏量和微量营养素。

Spectroscopy-based chemometrics combined machine learning modeling predicts cashew foliar macro- and micronutrients.

机构信息

Natural Resource Management, ICAR - Central Coastal Agricultural Research Institute, Old Goa, Goa 403402, India.

Natural Resource Management, ICAR - Central Coastal Agricultural Research Institute, Old Goa, Goa 403402, India.

出版信息

Spectrochim Acta A Mol Biomol Spectrosc. 2024 Nov 5;320:124639. doi: 10.1016/j.saa.2024.124639. Epub 2024 Jun 9.

Abstract

Precision nutrient management in orchard crops needs precise, accurate, and real-time information on the plant's nutritional status. This is limited by the fact that it requires extensive leaf sampling and chemical analysis when it is to be done over more extensive areas like field- or landscape scale. Thus, rapid, reliable, and repeatable means of nutrient estimations are needed. In this context, lab-based remote sensing or spectroscopy has been explored in the current study to predict the foliar nutritional status of the cashew crop. Novel spectral indices (normalized difference and simple ratio), chemometric modeling, and partial least square regression (PLSR) combined machine learning modeling of the visible near-infrared hyperspectral data were employed to predict macro- and micronutrients content of the cashew leaves. The full dataset was divided into calibration (70 % of the full dataset) and validation (30 % of the full dataset) datasets. An independent validation dataset was used for the validation of the algorithms tested. The approach of spectral indices yielded very poor and unreliable predictions for all eleven nutrients. Among the chemometric models tested, the performance of the PLSR was the best, but still, the predictions were not acceptable. The PLSR combined machine learning modeling approach yielded acceptable to excellent predictions for all the nutrients except sulphur and copper. The best predictions were observed when PLSR was combined with Cubist for nitrogen, phosphorus, potassium, manganese, and zinc; support vector machine regression for calcium, magnesium, iron, copper, and boron; elastic net for sulphur. The current study showed hyperspectral remote sensing-based models could be employed for non-destructive and rapid estimation of cashew leaf macro- and micro-nutrients. The developed approach is suggested to employ within the operational workflows for site-specific and precision nutrient management of the cashew orchards.

摘要

果园作物的精准养分管理需要关于植物营养状况的精确、准确和实时信息。这受到了限制,因为当需要在更广泛的区域(如田间或景观尺度)进行时,它需要广泛的叶片采样和化学分析。因此,需要快速、可靠和可重复的养分估算方法。在这种情况下,本研究探讨了基于实验室的遥感或光谱学,以预测腰果作物的叶片营养状况。采用新型光谱指数(归一化差异和简单比)、化学计量建模和偏最小二乘回归(PLSR)结合可见近红外高光谱数据的机器学习建模,预测腰果叶片的大量和微量元素含量。完整数据集分为校准数据集(完整数据集的 70%)和验证数据集(完整数据集的 30%)。使用独立的验证数据集验证所测试算法的准确性。光谱指数方法对所有 11 种养分的预测结果都很差且不可靠。在所测试的化学计量模型中,PLSR 的性能最好,但预测结果仍不理想。PLSR 结合机器学习建模方法除了硫和铜之外,对所有养分的预测都可以接受至优秀。当 PLSR 与 Cubist 结合用于氮、磷、钾、锰和锌,与支持向量机回归结合用于钙、镁、铁、铜和硼,与弹性网结合用于硫时,观察到最佳预测。本研究表明,基于高光谱遥感的模型可用于非破坏性和快速估计腰果叶片的大量和微量元素。建议采用所开发的方法在特定地点和精准养分管理的运营工作流程中应用于腰果果园。

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