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首页> 外文期刊>Journal of Applied Entomology >Disentangling factors limiting diamondback moth, Plutella xylostella (L.), spatio-temporal population abundance: A tool for pest forecasting
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Disentangling factors limiting diamondback moth, Plutella xylostella (L.), spatio-temporal population abundance: A tool for pest forecasting

机译:解散因素限制钻石壁蛾,Plutella Xylostella(L.),时空种群丰富:一种用于害虫预测的工具

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摘要

Data-mining techniques play an important role in hyperparameter optimization of heterogeneous environmental factors and their relative contribution as determinants of incidences in insect pest ecological studies. A multidimensional field-based surveillance was conducted in two seasons (24 months), July-June of each season (2015/2016 - season 1 and 2016/2017 - season 2) using sex-pheromone-baited traps and Thermocron i-Buttons to identify key determinants of population abundance of diamondback moth, Plutella xylostella L., across spatial horticultural hotspots of Botswana. The moth is a notorious global brassica pest. Pearson's product moment correlation matrix showed month of the year (M), mean temperature (T-mean) and maximum temperature (T-max) as positively correlated (p 0.001) to number of moths (N), while minimum temperature (T-min), minimum relative humidity (RHmin), mean relative humidity (RHmean), maximum relative humidity (RHmax) and host plant (h) were negatively correlated (p 0.001) to N. Using Waikato Environment for Knowledge Analysis (WEKA) data-mining techniques, two models were developed: (a) M5P decision-tree algorithm associated with nine linear models (LMs) and (b) principal component analysis (PCA) based on four principal components. Both approaches identified M as the major predictor of moth abundance, followed by h and farming region (R). However, R was a function of T-max (positive auto-correlation) and RHmax (negative auto-correlation). These results provide simplified relative contribution of heterogeneous factors in influencing P. xylostella spatio-temporal abundance, essential for early warning systems in pest management. This is an important component of sustainable pest management aimed at managing insect pests and minimizing pesticides abuse in brassica production systems.
机译:数据挖掘技术在异构环境因子的近双数素优化中发挥着重要作用及其作为昆虫生态学研究发生率的决定因素的相对贡献。每个季节(2015/2016 - 第1和2016/2017 - 第2季)的两季(24个月)进行了基于多维领域的监视(2015/2016年 - 第2季),使用性信息素诱饵陷阱和热菌I.纽扣确定博茨瓦纳空间园艺热点横跨空间园艺热点的山雀蛾类蛾类丰富的关键决定因素。蛾是一个臭名昭着的全球芸苔病虫害。 Pearson的产品时刻相关矩阵显示年份(m),平均温度(t均值)和最大温度(t-max),与飞蛾(n)的数量正相关(p <0.001),而最小温度( T-min),最小相对湿度(rhmin),平均相对湿度(Rhmean),最大相对湿度(Rhmax)和宿主植物(H)对N呈负相关(P <0.001)。使用Waikato环境进行知识分析( Weka)数据挖掘技术,开发了两种模型:(a)基于四个主组件的九个线性模型(LMS)和(b)主成分分析(PCA)相关联的M5P决策树算法。两种方法认为M作为蛾丰度的主要预测因子,其次是H和农业区域(R)。然而,R是T-MAX(正自相关)和RHMAX(负自动相关)的函数。这些结果提供了异质因素的简化相对贡献,在影响杀虫管理中的早期预警系统至关重要的情况下的异质因素。这是可持续害虫管理的重要组成部分,旨在管理害虫和最小化芸苔生产系统中的农药滥用。

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