Artificial neural networks as a tool for seasonal forecast of attack intensity of Spodoptera spp. in Bt soybean

IF 3 3区 地球科学 Q2 BIOPHYSICS International Journal of Biometeorology Pub Date : 2024-08-13 DOI:10.1007/s00484-024-02747-w
Luciano Cardoso de França, Poliana Silvestre Pereira, Renato Almeida Sarmento, Alice Barbutti Barreto, Jhersyka da Silva Paes, Daiane das Graças do Carmo, Hugo Daniel Dias de Souza, Marcelo Coutinho Picanço
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Abstract

Soybean (Glycine max) is the world’s most cultivated legume; currently, most of its varieties are Bt. Spodoptera spp. (Lepidoptera: Noctuidae) are important pests of soybean. An artificial neural network (ANN) is an artificial intelligence tool that can be used in the study of spatiotemporal dynamics of pest populations. Thus, this work aims to determine ANN to identify population regulation factors of Spodoptera spp. and predict its density in Bt soybean. For two years, the density of Spodoptera spp. caterpillars, predators, and parasitoids, climate data, and plant age was evaluated in commercial soybean fields. The selected ANN was the one with the weather data from 25 days before the pest’s density evaluation. ANN forecasting and pest densities in soybean fields presented a correlation of 0.863. It was found that higher densities of the pest occurred in dry seasons, with less wind, higher atmospheric pressure and with increasing plant age. Pest density increased with the increase in temperature until this curve reached its maximum value. ANN forecasting and pest densities in soybean fields in different years, seasons, and stages of plant development were similar. Therefore, this ANN is promising to be implemented into integrated pest management programs in soybean fields.

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人工神经网络作为一种工具,用于 Bt 大豆中 Spodoptera spp.攻击强度的季节性预测。
大豆(Glycine max)是世界上栽培面积最大的豆科植物;目前,它的大多数品种都是 Bt 大豆。Spodoptera spp.(鳞翅目:夜蛾科)是大豆的重要害虫。人工神经网络(ANN)是一种人工智能工具,可用于研究害虫种群的时空动态。因此,本研究旨在利用人工神经网络确定 Spodoptera spp.的种群调控因素,并预测其在 Bt 大豆中的密度。两年来,对商业大豆田中 Spodoptera spp.毛虫、天敌和寄生虫的密度、气候数据和植株年龄进行了评估。所选的 ANN 是害虫密度评估前 25 天的天气数据。ANN 预测与大豆田害虫密度的相关性为 0.863。研究发现,在风力较小、气压较高和植株年龄增加的干旱季节,害虫密度较高。害虫密度随着温度的升高而增加,直到该曲线达到最大值。ANN 预测结果与不同年份、季节和植物生长阶段大豆田中的害虫密度相似。因此,在大豆田害虫综合治理计划中实施这种方差网络是很有前途的。
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来源期刊
CiteScore
6.40
自引率
9.40%
发文量
183
审稿时长
1 months
期刊介绍: The Journal publishes original research papers, review articles and short communications on studies examining the interactions between living organisms and factors of the natural and artificial atmospheric environment. Living organisms extend from single cell organisms, to plants and animals, including humans. The atmospheric environment includes climate and weather, electromagnetic radiation, and chemical and biological pollutants. The journal embraces basic and applied research and practical aspects such as living conditions, agriculture, forestry, and health. The journal is published for the International Society of Biometeorology, and most membership categories include a subscription to the Journal.
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