Data-driven similar response units for agricultural technology targeting: An example from Ethiopia

IF 1.6 4区 农林科学 Q1 Agricultural and Biological Sciences
L. Tamene, W. Abera, E. Bendito, T. Erkossa, Meklit Tariku, Habtamu Sewnet, D. Tibebe, Jemal Sied, G. Feyisa, M. Wondie, K. Tesfaye
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引用次数: 2

Abstract

Abstract Ethiopia has heterogeneous topographic, climatic and socio-ecological systems. Recommendations of agricultural inputs and management practices based on coarse domains such as agro-ecological zones (AEZ) may not lead to accurate targeting, mainly due to large intra-zone variations. The lack of well-targeted recommendations may contribute to the underperformance of promising technologies. Therefore, there is a need to define units where similar environmental and biophysical features prevail, based on which specific recommendations can be made for similar response units (SRUs). We used unsupervised machine learning algorithms to identify areas of high similarity or homogeneous zones called ‘SRUs’ that can guide the targeting of agricultural technologies. SRUs are landscape entities defined by integrating relevant environmental covariates with the intention to identify areas of similar responses. Using environmental spatial data layers such as edaphic and ecological variables for delineation of the SRUs, we applied K- and X-means clustering techniques to generate various granular levels of zonation and define areas of high similarity. The results of the clustering were validated through expert consultation and by comparison with an existing operational AEZ map of Ethiopia. We also augmented validation of the heterogeneity of the SRUs by using field-based crop response to fertiliser application experimental data. The expert consultation highlighted that the SRUs can provide improved clustering of areas of high similarity for targeting interventions. Comparison with the AEZ map indicated that SRUs with the same number of AEZ units captured heterogeneity better with less within-cluster variability of the former. In addition, SRUs show lower within-cluster variability to optimal crop response to fertiliser application compared with AEZs with the same number of classes. This implies that the SRUs can be used for refined agricultural input and technology targeting. The work in this study also developed an operational framework that users can deploy to fetch data from the cloud and generate SRUs for their areas of interest.
数据驱动的农业技术目标类似响应单位:来自埃塞俄比亚的一个例子
埃塞俄比亚具有异质的地形、气候和社会生态系统。基于农业生态区(AEZ)等粗略领域的农业投入和管理实践建议可能无法实现准确的目标,这主要是由于区域内的巨大差异。缺乏目标明确的推荐可能会导致有前途的技术表现不佳。因此,有必要定义具有相似环境和生物物理特征的单位,并在此基础上对类似反应单位(sru)提出具体建议。我们使用无监督机器学习算法来识别高度相似或同质区域的区域,称为“sru”,可以指导农业技术的目标。sru是一种景观实体,通过整合相关的环境协变量来确定具有类似响应的区域。利用环境空间数据层(如土壤和生态变量)来划定sru,我们应用K-均值和x -均值聚类技术来生成不同粒度的分区,并定义高相似性的区域。通过专家咨询和与埃塞俄比亚现有业务AEZ地图的比较,验证了聚类的结果。我们还利用田间作物对施肥的响应实验数据,增强了sru异质性的验证。专家磋商会强调,sru可以为针对干预措施的高相似性区域提供改进的聚类。与AEZ图的比较表明,相同AEZ单元数的sru能更好地捕获异质性,而前者的簇内变异较小。此外,与具有相同类数的生态区相比,sru对肥料施用的最佳作物响应表现出更低的聚类内变异。这意味着sru可以用于精细农业投入和技术定位。本研究还开发了一个操作框架,用户可以部署该框架从云中获取数据,并为他们感兴趣的领域生成sru。
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来源期刊
Experimental Agriculture
Experimental Agriculture 农林科学-农艺学
CiteScore
2.50
自引率
6.20%
发文量
29
审稿时长
24 months
期刊介绍: With a focus on the tropical and sub-tropical regions of the world, Experimental Agriculture publishes the results of original research on field, plantation and herbage crops grown for food or feed, or for industrial purposes, and on farming systems, including livestock and people. It reports experimental work designed to explain how crops respond to the environment in biological and physical terms, and on the social and economic issues that may influence the uptake of the results of research by policy makers and farmers, including the role of institutions and partnerships in delivering impact. The journal also publishes accounts and critical discussions of new quantitative and qualitative methods in agricultural and ecosystems research, and of contemporary issues arising in countries where agricultural production needs to develop rapidly. There is a regular book review section and occasional, often invited, reviews of research.
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