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Coupled Information Diffusion–Pest Dynamics Models Predict Delayed Benefits of Farmer Cooperation in Pest Management Programs

机译:耦合的信息扩散-虫害动力学模型预测虫害管理计划中农民合作的延迟收益

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Worldwide, the theory and practice of agricultural extension system have been dominated for almost half a century by Rogers' “diffusion of innovation theory”. In particular, the success of integrated pest management (IPM) extension programs depends on the effectiveness of IPM information diffusion from trained farmers to other farmers, an important assumption which underpins funding from development organizations. Here we developed an innovative approach through an agent-based model (ABM) combining social (diffusion theory) and biological (pest population dynamics) models to study the role of cooperation among small-scale farmers to share IPM information for controlling an invasive pest. The model was implemented with field data, including learning processes and control efficiency, from large scale surveys in the Ecuadorian Andes. Our results predict that although cooperation had short-term costs for individual farmers, it paid in the long run as it decreased pest infestation at the community scale. However, the slow learning process placed restrictions on the knowledge that could be generated within farmer communities over time, giving rise to natural lags in IPM diffusion and applications. We further showed that if individuals learn from others about the benefits of early prevention of new pests, then educational effort may have a sustainable long-run impact. Consistent with models of information diffusion theory, our results demonstrate how an integrated approach combining ecological and social systems would help better predict the success of IPM programs. This approach has potential beyond pest management as it could be applied to any resource management program seeking to spread innovations across populations.
机译:在全球范围内,农业扩展体系的理论和实践在罗杰斯的“创新理论的扩散”中占据了将近半个世纪的时间。尤其是,虫害综合治理扩展计划的成功取决于IPM信息从受过培训的农民传播到其他农民的有效性,这一重要假设为发展组织的资金提供了基础。在这里,我们通过结合社会(扩散理论)和生物(病虫害种群动态)模型的基于代理的模型(ABM),开发了一种创新方法,以研究小规模农民之间共享IPM信息以控制有害生物的合作。该模型是根据厄瓜多尔安第斯山脉大规模调查的实地数据(包括学习过程和控制效率)实施的。我们的结果预测,尽管合作对单个农民有短期成本,但从长远来看,由于减少了社区规模的病虫害,因此合作获得了回报。但是,缓慢的学习过程限制了随着时间的流逝,农民社区内部可能产生的知识,从而导致IPM传播和应用的自然滞后。我们进一步表明,如果个人从他人那里学习到早期预防新害虫的好处,那么教育工作可能会产生可持续的长期影响。与信息传播理论的模型一致,我们的结果证明了结合生态系统和社会系统的综合方法将如何更好地预测IPM计划的成功。这种方法具有超越病虫害管理的潜力,因为它可以应用于寻求在人群中传播创新的任何资源管理计划。

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