Area estimation of soybean leaves of different shapes with artificial neural networks

IF 1.2 4区 农林科学 Q3 AGRONOMY Acta Scientiarum. Agronomy. Pub Date : 2022-05-24 DOI:10.4025/actasciagron.v44i1.54787
Ludimila Geiciane de Sá, C. Albuquerque, N. R. Valadares, O. G. Brito, Amara Nunes Mota, A. C. G. Fernandes, A. M. Azevedo
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Abstract

Leaf area is one of the most commonly used physiological parameters in plant growth analysis because it facilitates the interpretation of factors associated with yield. The different leaf formats related to soybean genotypes can influence the quality of the model fit for the estimation of leaf area. Direct leaf area measurement is difficult and inaccurate, requires expensive equipment, and is labor intensive. This study developed methodologies to estimate soybean leaf area using neural networks and considering different leaf shapes. A field experiment was carried out from February to July 2017. Data were collected from thirty-six cultivars separated into three groups according to the leaf shape. Multilayer perceptrons were developed using 300 leaves per group, of which 70% were used for training and 30% for validation. The most important morphological measures were also tested with Garson’s method. The artificial neural networks were efficient in estimating the soybean leaf area, with coefficients of determination close to 0.90. The left leaflet width and right leaflet length are sufficient to estimate the leaf area. Network 4, trained with leaves from all groups, was the most general and suitable for the prediction of soybean leaf area.
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基于人工神经网络的大豆不同形状叶片面积估计
叶面积是植物生长分析中最常用的生理参数之一,因为它有助于解释与产量相关的因素。与大豆基因型相关的不同叶型会影响叶面积估算模型的拟合质量。直接测量叶面积是困难和不准确的,需要昂贵的设备,并且是劳动密集型的。本研究发展了利用神经网络和考虑不同叶片形状来估计大豆叶面积的方法。2017年2月至7月进行了野外试验。资料收集自36个品种,按叶片形状分为3组。多层感知器每组使用300个叶片,其中70%用于训练,30%用于验证。最重要的形态学指标也用Garson的方法进行了测试。人工神经网络对大豆叶面积的估计效果较好,确定系数接近0.90。左小叶宽度和右小叶长度足以估计叶面积。网络4使用所有组的叶片进行训练,最通用,最适合预测大豆叶面积。
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来源期刊
Acta Scientiarum. Agronomy.
Acta Scientiarum. Agronomy. Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
2.40
自引率
0.00%
发文量
45
审稿时长
>12 weeks
期刊介绍: The journal publishes original articles in all areas of Agronomy, including soil sciences, agricultural entomology, soil fertility and manuring, soil physics, physiology of cultivated plants, phytopathology, phyto-health, phytotechny, genesis, morphology and soil classification, management and conservation of soil, integrated management of plant pests, vegetal improvement, agricultural microbiology, agricultural parasitology, production and processing of seeds.
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