首页> 外文期刊>Journal of Stored Products Research >Predicting Prostephanus truncatus (Horn) (Coleoptera: Bostrichidae) populations and associated grain damage in smallholder farmers' maize stores: A machine learning approach
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Predicting Prostephanus truncatus (Horn) (Coleoptera: Bostrichidae) populations and associated grain damage in smallholder farmers' maize stores: A machine learning approach

机译:预测普罗斯托芬氏植物Truncatus(罗氏体)(鞘翅目:Bostrichidae)群体和相关谷物损坏在小型农民玉米商店:机器学习方法

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Prostephanus truncatus is a notorious pest of stored-maize grain and its spread throughout sub-Saharan Africa has led to increased levels of grain storage losses. The current study developed models to predict the level of P. truncatus infestation and associated damage of maize grain in smallholder farmer stores. Data were gathered from grain storage trials conducted in Hwedza and Mbire districts of Zimbabwe and correlated with weather data for each site. Insect counts of P. truncatus and other common stored grain insect pests had a strong correlation with time of year with highest recorded numbers from January to May. Correlation analysis showed insect-generated grain dust from boring and feeding activity to be the best indicator of P. truncatus presence in stores (r = 0.70), while a moderate correlation (r = 0.48) was found between P. truncatus numbers and storage insect parasitic wasps, and grain damage levels significantly correlated with the presence of Tribolium castaneum (r = 0.60). Models were developed for predicting P. truncatus infestation and grain damage using parameter selection algorithms and decision-tree machine learning algorithms with 10-fold cross-validation. The P. truncatus population size prediction model performance was weak (r = 0.43) due to the complicated sampling and detection of the pest and eight-week long period between sampling events. The grain damage prediction model had a stronger correlation coefficient (r = 0.93) and is a good estimator for in situ stored grain insect damage. The models were developed for use under southern African climatic conditions and can be improved with more input data to create more precise models for building decision-support tools for smallholder maize-based production systems. (C) 2020 Elsevier Ltd. All rights reserved.
机译:Prostephanus Truncatus是储存玉米谷物的臭名昭着的害虫,其整个撒哈拉以南非洲的传播导致粮食储存损失的水平增加。目前的研究开发了模型,以预测小农民店中玉米谷物的P.Truncatus侵扰和相关伤害的水平。从Hwedza和津巴布韦的Mbire地区进行的粮食储存试验中收集数据,并与每个网站的天气数据相关。 P. truncatus和其他常见的储存谷物虫害的昆虫计数与1月至5月的最高记录数量的一年时间具有强烈的相关性。相关性分析显示昆虫生成的粒粉尘从钻孔和喂养活性是在商店中的P.Truncatus存在的最佳指标(R = 0.70),而P.Truncatus编号和储存昆虫之间的中等相关性(R = 0.48)寄生黄蜂,晶粒损伤水平与呋喃酱的存在显着相关(r = 0.60)。使用参数选择算法和决策树机学习算法预测P. truncatus侵扰和晶粒损坏的模型。由于复杂的采样和检测对采样事件之间的遗传和八周长期,P.Turcatus群体尺寸预测模型性能较弱(r = 0.43)。晶粒损伤预测模型具有更强的相关系数(R = 0.93),并且是原位储存谷物昆虫损伤的良好估计。该模型是开发的,用于南方非洲气候条件下,可以通过更多的输入数据来改进,为基于小型啤酒玉米生产系统建立决策支持工具的更精确模型。 (c)2020 elestvier有限公司保留所有权利。

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