利用机器学习方法预测植物冠层中粉虱的时空动态。

Denis O Kiobia, Canicius J Mwitta, Peter C Ngimbwa, Jason M Schmidt, Guoyu Lu, Glen C Rains
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引用次数: 0

摘要

在大多数作物系统中,植物特异性昆虫的侦察和预测仍然具有挑战性。在本文中,提出了一种机器学习算法来预测白蝇(半翅目;白粉虱在棉树冠层的侦查和种群分布的测定。该研究调查了成年白蝇相对于植物节点(叶子或分支出现的茎点)的主要位置,冠层内和冠层之间的种群变化,不同领域的白蝇密度变异性,密集节点对冠层总体种群的影响,以及使用机器学习进行预测的可行性。对64株无农药棉花进行每日侦察,重点侦察白蝇数量最高的一个节点的所有叶片。线性混合效应模型评估了随时间的分布,机器学习模型选择确定了适合整个冠层粉虱种群的预测模型。结果表明,顶3 ~ 5个节点是关键生境,单个节点可能占全冠层白蝇种群的44.4%。Bagging Ensemble人工神经网络回归模型准确预测了冠层种群数(R²= 85.57),实际种群数与预测种群数吻合(p值> 0.05)。在采集少量样本或样带的情况下,顶部节点的策略采样可以估计整个植物种群。建议的机器学习模型可以集成到计算设备和自动传感器中,以在侦察操作期间实时预测整个植物冠层内的粉虱种群密度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine-learning approach facilitates prediction of whitefly spatiotemporal dynamics in a plant canopy.

Plant-specific insect scouting and prediction are still challenging in most crop systems. In this article, a machine-learning algorithm is proposed to predict populations during whiteflies (Bemisia tabaci, Hemiptera; Gennadius Aleyrodidae) scouting and aid in determining the population distribution of adult whiteflies in cotton plant canopies. The study investigated the main location of adult whiteflies relative to plant nodes (stem points where leaves or branches emerge), population variation within and between canopies, whitefly density variability across fields, the impact of dense nodes on overall canopy populations, and the feasibility of using machine learning for prediction. Daily scouting was conducted on 64 non-pesticide cotton plants, focusing on all leaves of a node with the highest whitefly counts. A linear mixed-effect model assessed distribution over time, and machine-learning model selection identified a suitable forecasting model for the entire canopy whitefly population. Findings showed that the top 3 to 5 nodes are key habitats, with a single node potentially accounting for 44.4% of the full canopy whitefly population. The Bagging Ensemble Artificial Neural Network Regression model accurately predicted canopy populations (R² = 85.57), with consistency between actual and predicted counts (P-value > 0.05). Strategic sampling of the top nodes could estimate overall plant populations when taking a few samples or transects across a field. The suggested machine-learning model could be integrated into computing devices and automated sensors to predict real-time whitefly population density within the entire plant canopy during scouting operations.

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