利用无人机和人工智能自动精确播种:工作流程

IF 2.8 3区 环境科学与生态学 Q2 ECOLOGY Restoration Ecology Pub Date : 2024-05-02 DOI:10.1111/rec.14164
Jorge Castro, Domingo Alcaraz‐Segura, Jennifer L. Baltzer, Lot Amorós, Fernando Morales‐Rueda, Siham Tabik
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引用次数: 0

摘要

无人机空中播种在森林恢复方面具有巨大潜力,但要实现高效和可扩展却面临巨大挑战。目前的方案是在整个待恢复区域进行地毯式播种,这意味着对种子的需求量很大,因为许多种子到达的地点并不适合建植。在亚米级范围内对安全的微小地点进行高精度播种,可以减少每公顷的种子用量,降低经济和生态成本,同时提高植树造林的成功率。在此,我们提出了另一种精确方法,使无人机播种更成功、更高效。这需要:(1)以生态知识为基础,在亚米级范围内选择播种目标微地;(2)利用高分辨率遥感图像,训练人工智能(AI)系统识别目标微地;以及(3)通过将目标微地坐标从人工智能系统传输到无人机,实现流程自动化。这将减少单位面积的种子投入、育苗失败风险和无人机运营成本。
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Automated precise seeding with drones and artificial intelligence: a workflow
Aerial seeding with drones has great potential in forest restoration but faces enormous challenges to be efficient and scalable. Current protocols use blanket seeding throughout the area to be restored, meaning a high demand for seed since many seeds arrive in sites unsuitable for establishment. High precision seeding directed to safe microsites at submeter scale could reduce seed use per hectare, reducing economic and ecological costs, while increasing establishment success. Here, we propose an alternative, precision approach to make drone seeding more successful and efficient. This requires (1) submeter‐scale selection of target microsites for seeding founded in ecological knowledge; (2) high‐resolution remote sensing imagery to train artificial intelligence (AI) systems in target microsite recognition; and (3) process automation by transferring target microsite coordinates from the AI system to the drone. This will reduce seed inputs per unit area, seedling establishment failure risks, and drone operation costs.
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来源期刊
Restoration Ecology
Restoration Ecology 环境科学-生态学
CiteScore
6.50
自引率
15.60%
发文量
226
审稿时长
12-24 weeks
期刊介绍: Restoration Ecology fosters the exchange of ideas among the many disciplines involved with ecological restoration. Addressing global concerns and communicating them to the international research community and restoration practitioners, the journal is at the forefront of a vital new direction in science, ecology, and policy. Original papers describe experimental, observational, and theoretical studies on terrestrial, marine, and freshwater systems, and are considered without taxonomic bias. Contributions span the natural sciences, including ecological and biological aspects, as well as the restoration of soil, air and water when set in an ecological context; and the social sciences, including cultural, philosophical, political, educational, economic and historical aspects. Edited by a distinguished panel, the journal continues to be a major conduit for researchers to publish their findings in the fight to not only halt ecological damage, but also to ultimately reverse it.
期刊最新文献
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