How can population models contribute to contemporary pest management practices?

IF 1.3 4区 农林科学 Q2 ENTOMOLOGY Applied Entomology and Zoology Pub Date : 2023-12-29 DOI:10.1007/s13355-023-00849-2
Takehiko Yamanaka
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Abstract

Population models provide a logical knowledge base before conducting laborious and expensive field experiments. Historically, two types of population models have been developed: highly realistic simulations and simple analytical models. Highly realistic simulations comprise a complicated systems model, whereas simple analytical models comprise various analytical models that focus only on the fundamental structure of the target pest population. Although both approaches have contributed to pest management science, each has limitations, poor predictability, and lacks substantial connections to reality. Assimilation by state-space modeling, in which observation and process models are jointly incorporated, is a good compromise between a simple model and reality in nature. In the big data era, artificial intelligence (AI), specifically aimed at high predictability, has recently become popular. If vital physical and biological records are automatically censored in the field with high precision, AI will produce the most plausible predictions, providing the best practical solution given our current knowledge. AI can be a powerful tool in the contemporary world; however, deductive modeling approaches are still important when considering the behavior of AIs and may also provide important insights to detect deficient information in the data.

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种群模型如何促进当代害虫管理实践?
摘要 在进行费力而昂贵的实地实验之前,种群模型提供了一个合理的知识基础。一直以来,人们开发了两类种群模型:高度逼真的模拟模型和简单的分析模型。高度仿真模拟包括一个复杂的系统模型,而简单分析模型则包括各种分析模型,这些模型只关注目标害虫种群的基本结构。虽然这两种方法都为害虫管理科学做出了贡献,但每种方法都有局限性,可预测性差,与现实缺乏实质性联系。通过状态空间模型进行同化,将观测和过程模型共同纳入其中,是简单模型与自然界现实之间的良好折中。在大数据时代,专门针对高可预测性的人工智能(AI)近来大行其道。如果在现场对重要的物理和生物记录进行高精度的自动删减,人工智能将产生最合理的预测,根据我们现有的知识提供最佳的实用解决方案。人工智能可以成为当代世界的一个强大工具;然而,在考虑人工智能的行为时,演绎建模方法仍然非常重要,而且还可能为检测数据中的不足信息提供重要见解。
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来源期刊
CiteScore
2.70
自引率
7.70%
发文量
37
审稿时长
6-12 weeks
期刊介绍: Applied Entomology and Zoology publishes articles concerned with applied entomology, applied zoology, agricultural chemicals and pest control in English. Contributions of a basic and fundamental nature may be accepted at the discretion of the Editor. Manuscripts of original research papers, technical notes and reviews are accepted for consideration. No manuscript that has been published elsewhere will be accepted for publication.
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