空间数据基础设施是收集巴基斯坦有效农业政策所需的地理信息的手段

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-04-04 DOI:10.1177/02666669241244503
Asmat Ali, Munir Ahmad, Muhammad Nawaz, Farha Sattar
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引用次数: 0

摘要

地理空间信息用于定期估算农业产量,以提高粮食安全和经济指标。特别是,这种估算对巴基斯坦这样以农业为基础的经济体至关重要。然而,空间信息管理不善会导致农业估算不准确。因此,农业政策等公共政策往往无法保证足够的粮食供应,也无法提升农村经济。在此背景下,本文的主要目标是确定空间数据集的类型,根据相对重要性对其进行分类,并提出一个向巴基斯坦农业政策制定者无缝传播这些数据集的框架。为此,我们首先查阅了相关文献,并编制了一份初步的数据清单。然后,我们利用德尔菲调查编制数据的最终清单。数据还被分为最重要、非常重要和重要数据集。研究结果显示,四个最重要的空间数据集包括:水文数据、土地利用数据、农业普查数据和气象数据。非常重要的数据集包括六个数据集:地籍、作物、土壤、病虫害、自然灾害和气候变化数据。遥感、研究和农业生态区数据这三个数据集属于重要空间数据集类别。本文最后总结道,通过实施空间数据基础设施,可以在一个地方找到并获取已确定的数据,为制定政策提供依据。
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Spatial data infrastructure as the means to assemble geographic information necessary for effective agricultural policies in Pakistan
Geospatial information is used to regularly estimate agricultural production for improving food security and economic indicators. Particularly, such estimates are vital for agriculture-based economies like Pakistan. However, poorly managed spatial information causes inaccurate agricultural estimates. Consequently, public policies such as agriculture policies often remain unsustainable to secure enough food and to uplift the rural economy. Against this backdrop, the main objective of this paper is to identify types of spatial datasets, categorize them based on relative importance, and propose a framework to seamlessly disseminate those datasets to agricultural policy-makers in Pakistan. To do so, first of all, the literature is reviewed and a preliminary list of data is prepared. Then we make use of the Delphi survey to prepare the final list of the data. The data are also categorized into most important, very important, and important datasets. The results of the study revealed that the four most important spatial datasets include; hydrological, land use, agricultural census, and meteorological data. The datasets in the category of very important include six datasets; cadaster, crops, soil, pest and disease, natural hazards, and climate change data. The three datasets; remote sensing, research, and agroecological zones data fall under the category of important spatial datasets. Through implementing SDI, the identified data can be made available in one place to find and access to inform policies, the paper concludes.
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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