利用机器学习模型和无人机多光谱传感器对大豆基因型的钙、镁和硫含量进行分类

D. C. Santana, Izabela Cristina de Oliveira, Sâmela Beutinger Cavalheiro, Paulo Henrique Menezes das Chagas, M. C. T. Teixeira Filho, João Lucas Della-Silva, L. Teodoro, C. N. S. Campos, F. Baio, C. A. da Silva Junior, P. Teodoro
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引用次数: 0

摘要

使植物育种计划(尤其是大豆育种计划)成本更低、更快、更实用、更准确,可促进大豆新基因型的选育,有助于培育出吸收和代谢养分效率更高的新品种。利用大豆基因型的光谱信息与次要常量营养素的营养信息相结合,可帮助遗传改良计划选择能有效吸收和代谢这些营养素的种群。此外,利用机器学习算法处理这些信息,可以更准确地获得优良基因型。因此,这项工作的目的是通过 ML 算法和不同的输入验证大豆基因型在次要常量营养素方面的分类性能。实验在巴西南马托格罗索联邦大学位于南查帕当市的实验区进行。大豆在 2019/20 作季播种,种植了 103 个 F2 大豆种群。实验设计采用随机区组,两次重复。在作物出苗后 60 天(DAE),使用 Sensifly eBee RTK 固定翼遥控飞机(RPA)采集光谱图像,该飞机具有自主起飞控制、飞行计划和着陆功能。在生殖期(R1),每株采集三片叶子,以确定钙(Ca)、镁(Mg)和硫(S)等宏量营养素的含量。根据光谱信息和基因型在钙、镁和硫方面的营养价值所获得的数据进行了皮尔逊相关性分析;使用 k-means 算法进行了 PC 分析,将基因型划分为聚类。聚类作为输出变量,而光谱数据则作为机器学习分析中分类模型的输入变量。模型中测试的配置包括光谱带(SB)、植被指数(VI)以及两者的组合。机器学习算法与光谱数据的结合可提供有关大豆植物的重要生物信息。根据钙、镁和硫含量对大豆基因型进行分类,可最大限度地节省遗传改良计划中田间评估的时间、精力和人力。因此,在随机森林算法中使用光谱带作为输入数据,可以高效地对大豆基因型进行次生宏量营养元素分类,这对实地研究人员来说非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Soybean Genotypes as to Calcium, Magnesium, and Sulfur Content Using Machine Learning Models and UAV–Multispectral Sensor
Making plant breeding programs less expensive, fast, practical, and accurate, especially for soybeans, promotes the selection of new soybean genotypes and contributes to the emergence of new varieties that are more efficient in absorbing and metabolizing nutrients. Using spectral information from soybean genotypes combined with nutritional information on secondary macronutrients can help genetic improvement programs select populations that are efficient in absorbing and metabolizing these nutrients. In addition, using machine learning algorithms to process this information makes the acquisition of superior genotypes more accurate. Therefore, the objective of the work was to verify the classification performance of soybean genotypes regarding secondary macronutrients by ML algorithms and different inputs. The experiment was conducted in the experimental area of the Federal University of Mato Grosso do Sul, municipality of Chapadão do Sul, Brazil. Soybean was sown in the 2019/20 crop season, with the planting of 103 F2 soybean populations. The experimental design used was randomized blocks, with two replications. At 60 days after crop emergence (DAE), spectral images were collected with a Sensifly eBee RTK fixed-wing remotely piloted aircraft (RPA), with autonomous takeoff control, flight plan, and landing. At the reproductive stage (R1), three leaves were collected per plant to determine the macronutrients calcium (Ca), magnesium (Mg), and sulfur (S) levels. The data obtained from the spectral information and the nutritional values of the genotypes in relation to Ca, Mg, and S were subjected to a Pearson correlation analysis; a PC analysis was carried out with a k-means algorithm to divide the genotypes into clusters. The clusters were taken as output variables, while the spectral data were used as input variables for the classification models in the machine learning analyses. The configurations tested in the models were spectral bands (SBs), vegetation indices (VIs), and a combination of both. The combination of machine learning algorithms with spectral data can provide important biological information about soybean plants. The classification of soybean genotypes according to calcium, magnesium, and sulfur content can maximize time, effort, and labor in field evaluations in genetic improvement programs. Therefore, the use of spectral bands as input data in random forest algorithms makes the process of classifying soybean genotypes in terms of secondary macronutrients efficient and important for researchers in the field.
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