应用高光谱技术对大麻品种和性别进行无损评价。

Q3 Agricultural and Biological Sciences
Plant-environment interactions (Hoboken, N.J.) Pub Date : 2023-08-17 eCollection Date: 2023-10-01 DOI:10.1002/pei3.10116
Andrea Matros, Patrick Menz, Alison R Gill, Armando Santoscoy, Tim Dawson, Udo Seiffert, Rachel A Burton
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引用次数: 0

摘要

大麻是一种多用途作物,在食品、纤维和医疗用途方面越来越受到关注。作为一个雌雄异株物种,雄性和雌性在早期生长过程中在视觉上无法区分。对于种子或大麻素的生产,雌性植物数量越多在经济上是有利的。目前,性别决定是劳动密集型的,成本高昂。相反,我们使用快速和无损的高光谱测量,这是一种评估植物生理状态的新兴手段,来可靠地区分雄性和雌性。一种工业大麻(低四氢大麻酚[THC])品种在转移到对照土壤中的田地之前,在托盘中预先种植。在开花期间从叶片中获取反射光谱,并应用机器学习算法进行性别分类,这最好使用径向基函数(RBF)网络。八个工业大麻(低四氢大麻酚)品种在施肥和对照土壤上进行了田间种植。反射光谱是从早期发育的叶片中获得的,当时所有品种的植物都发育了4到6对叶片,在三种情况下只有花蕾可见(开花开始)。应用机器学习算法,允许性别分类、品种分化和施肥制度,再次为RBF网络带来最佳结果。区分营养状况和品种特性是可行的,预测精度高。性别分类在开花时没有错误,但在使用生长早期叶片的光谱时准确性较低(在60%至87%之间)。这受到品种和土壤条件的影响,反映了与营养状况有关的品种之间的发育差异。将高光谱测量与机器学习算法相结合,对于无创评估苜蓿品种和性别是有价值的。这种方法有可能提高大麻种植的监管安全和生产力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Non-invasive assessment of cultivar and sex of <i>Cannabis sativa</i> L. by means of hyperspectral measurement.

Non-invasive assessment of cultivar and sex of <i>Cannabis sativa</i> L. by means of hyperspectral measurement.

Non-invasive assessment of cultivar and sex of <i>Cannabis sativa</i> L. by means of hyperspectral measurement.

Non-invasive assessment of cultivar and sex of Cannabis sativa L. by means of hyperspectral measurement.

Cannabis sativa L. is a versatile crop attracting increasing attention for food, fiber, and medical uses. As a dioecious species, males and females are visually indistinguishable during early growth. For seed or cannabinoid production, a higher number of female plants is economically advantageous. Currently, sex determination is labor-intensive and costly. Instead, we used rapid and non-destructive hyperspectral measurement, an emerging means of assessing plant physiological status, to reliably differentiate males and females. One industrial hemp (low tetrahydrocannabinol [THC]) cultivar was pre-grown in trays before transfer to the field in control soil. Reflectance spectra were acquired from leaves during flowering and machine learning algorithms applied allowed sex classification, which was best using a radial basis function (RBF) network. Eight industrial hemp (low THC) cultivars were field grown on fertilized and control soil. Reflectance spectra were acquired from leaves at early development when the plants of all cultivars had developed between four and six leaf pairs and in three cases only flower buds were visible (start of flowering). Machine learning algorithms were applied, allowing sex classification, differentiation of cultivars and fertilizer regime, again with best results for RBF networks. Differentiating nutrient status and varietal identity is feasible with high prediction accuracy. Sex classification was error-free at flowering but less accurate (between 60% and 87%) when using spectra from leaves at early growth stages. This was influenced by both cultivar and soil conditions, reflecting developmental differences between cultivars related to nutritional status. Hyperspectral measurement combined with machine learning algorithms is valuable for non-invasive assessment of C. sativa cultivar and sex. This approach can potentially improve regulatory security and productivity of cannabis farming.

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CiteScore
2.70
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