用机器人管理抗除草剂杂草:杂草生态经济模型

IF 4.5 3区 经济学 Q1 AGRICULTURAL ECONOMICS & POLICY
Chengzheng Yu, Madhu Khanna, Shady S. Atallah, Saurajyoti Kar, Muthukumar Bagavathiannan, Girish Chowdhary
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引用次数: 0

摘要

美国严重依赖除草剂控制杂草,导致抗性杂草增加。机器人除草正在成为利用人工智能机械除草的替代技术。我们开发了一个综合杂草生态和经济动态(I-WEED)模型,以研究采用机器人除草的生物物理和经济驱动因素,并模拟在生长季节内和生长季节间采用机器人除草的最佳时机和强度。我们指定了一个基于队列的杂草生长模型,该模型将产量损失与有效杂草密度联系起来,并将杂草对除草剂的敏感性视为一种可再生资源,可通过使用机械除草机器人进行再生,因为适应性成本会降低抗性杂草的产量。与忽视抗药性发展的近视型杂草管理相比,前瞻性管理导致更早地采用机器人,并将机器人视为除草剂的补充而非替代品。与近视型管理相比,这种杂草管理方式可以减少机器人的使用,在较小面积的土地上部署机器人,从长远来看,利润率更高,产量损失更小。与直觉相反的是,近视管理通过提高机器人的采用强度,降低了阻力水平。我们还发现,较低的初始杂草种子抗性水平和/或较高的适应成本会导致较高的抗性水平,因为它们会刺激农民推迟采用机器人除草。我们的分析表明,在分析机器人杂草管理对杂草抗性的激励和影响时,必须共同考虑杂草生态学和经济学之间的相互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Herbicide-resistant weed management with robots: A weed ecological–economic model

Herbicide-resistant weed management with robots: A weed ecological–economic model

The heavy reliance on herbicides for weed control has led to an increase in resistant weeds in the United States. Robotic weed control is emerging as an alternative technology for removing weeds mechanically using artificial intelligence. We develop an integrated weed ecological and economic dynamic (I-WEED) model to examine the biophysical and economic drivers of adopting robotic weed management and simulate the optimal timing and intensity of robotic adoption within and across growing seasons. We specify a cohort-based weed growth model that relates yield damages to effective weed density and treats the susceptibility of weeds to herbicides as a renewable resource that can be regenerated by using mechanical weeding robots, due to a fitness cost that makes resistant weeds less prolific. Compared to myopic weed management which ignores resistance development, forward-looking management leads to earlier adoption of robots and treating robots as complements instead of substitutes to herbicides. This weed management results in adopting fewer robots, deploying robots on a smaller portion of the land, higher profitability, and lower yield loss in the long run, relative to myopic management. Counterintuitively, myopic management leads to a lower resistance level through its higher robot adoption intensity. We also find that a lower level of initial weed seed resistance and/or a higher fitness cost result in a higher level of resistance because they create incentives for farmers to delay the adoption of robotic weed control. Our analysis shows the importance of jointly considering the interactions between weed ecology and economics in analyzing the incentives and effects of robotic weed management on weed resistance.

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来源期刊
Agricultural Economics
Agricultural Economics 管理科学-农业经济与政策
CiteScore
7.30
自引率
4.90%
发文量
62
审稿时长
3 months
期刊介绍: Agricultural Economics aims to disseminate the most important research results and policy analyses in our discipline, from all regions of the world. Topical coverage ranges from consumption and nutrition to land use and the environment, at every scale of analysis from households to markets and the macro-economy. Applicable methodologies include econometric estimation and statistical hypothesis testing, optimization and simulation models, descriptive reviews and policy analyses. We particularly encourage submission of empirical work that can be replicated and tested by others.
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