通过基于空间和经济地理信息系统的方法对橄榄油厂进行分组

IF 6.1 Q2 ENGINEERING, ENVIRONMENTAL
Giuseppe Modica , Angelo Pulvirenti , Daniela Spina , Salvatore Bracco , Mario D'Amico , Giuseppe Di Vita
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引用次数: 0

摘要

西西里是意大利第三大橄榄种植和橄榄油生产地区,在全国范围内,活跃的橄榄油工厂数量位居第二。这项开创性的研究将空间分析和经济分析相结合,考察了西西里岛橄榄油工厂的地理分布及其与橄榄园本地化的关系。我们使用地方空间关联指标(LISA)对橄榄油厂的空间模式进行了高级分析,同时考虑到了公路网络上的旅行时间。所采用的方法解决了基于直线假设的高估和忽视旅行速度的问题。与传统的欧几里得距离方法不同,我们的方法可以详细了解橄榄油厂和橄榄园之间的空间关系,揭示与海拔高度和橄榄园距离有关的独特模式。通过将盈利指标与空间集群联系起来,我们确定了经济可持续性的不同阈值。因此,这些发现有助于人们更全面地了解橄榄油产业,并提出了更具环境可持续性的做法。政策制定者、研究人员和行业利益相关者可以利用这些知识做出明智的决策,促进橄榄油行业的长期可持续发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering olive oil mills through a spatial and economic GIS-based approach

Sicily ranks as the third-largest region in Italy for olive growing and olive oil production, holding the second position nationally regarding the number of active olive oil mills. This pioneering study integrates spatial and economic analyses to examine the geographical distribution of olive oil mills in Sicily and their relationship with the localization of olive groves. Using Local Indicators of Spatial Association (LISA), we conducted an advanced analysis of spatial patterns of olive oil mills, considering travel time on the road network. The adopted methodology addresses issues related to overestimation based on straight-line assumptions and the neglect of travel speed. Unlike traditional Euclidean distance approaches, our methodology provides a detailed understanding of the spatial relationships between olive oil mills and olive groves, revealing distinct patterns linked to elevation and proximity to olive groves. By linking profitability indicators with spatial clusters, we identify different thresholds of economic sustainability. Consequently, these findings contribute to a more comprehensive understanding of the olive oil industry, suggesting more environmentally sustainable practices. Policymakers, researchers, and industry stakeholders can leverage this knowledge to make informed decisions that foster the long-term sustainability of the olive oil sector.

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来源期刊
Cleaner Environmental Systems
Cleaner Environmental Systems Environmental Science-Environmental Science (miscellaneous)
CiteScore
7.80
自引率
0.00%
发文量
32
审稿时长
52 days
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