The Relationship of Environmental Factors and the Cropland Suitability Levels for Soybean Cultivation Determined by Machine Learning

IF 0.5 Q4 AGRICULTURAL ECONOMICS & POLICY Poljoprivreda Pub Date : 2022-06-30 DOI:10.18047/poljo.28.1.8
Dorijan Radočaj, T. Vinković, M. Jurišić, M. Gašparović
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引用次数: 3

Abstract

The relationship between cropland suitability and the surrounding environmental factors has an important role in understanding and adjusting agricultural land management systems to natural cropland suitability. In this study, the relationship between soybean cropland suitability, determined by a novel machine learningbased approach, and three major environmental factors in continental Croatia was evaluated. These constituted of two major land cover classes (forests and urban areas), utilized soybean growth seasons per agricultural parcels during a 2017–2020 study period and soil types. The sensitivity analysis in geographic information system (GIS) using a raster overlay method, along with auxiliary spatial processing, was performed. The proximity of soybean agricultural parcels to forests showed a high correlation with suitability values, indicating a potential benefit of implementing agroforestry in land management plans. A notable amount of suitable agricultural parcels for soybean cultivation, which were previously not utilized for soybean cultivation was observed. A disregard of crop rotations was also noted, with the same soybean parcels within the study period in three and four years. This analysis showed considerable potential in understanding the effects of environmental factors on cropland suitability values, leading to more efficient land management policies and future suitability studies.
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基于机器学习的大豆种植适宜度与环境因子的关系
农田适宜性与周边环境因子的关系对认识和调整农田管理制度以适应自然适宜性具有重要意义。在这项研究中,通过一种新的基于机器学习的方法确定了克罗地亚大陆大豆农田适宜性与三个主要环境因素之间的关系。这些研究包括两个主要的土地覆盖类别(森林和城市地区),利用了2017-2020年研究期间每个农业地块的大豆生长季节和土壤类型。采用栅格叠加法对地理信息系统(GIS)进行了灵敏度分析,并进行了辅助空间处理。大豆农业地块与森林的接近程度与适宜性值高度相关,表明在土地管理计划中实施农林业具有潜在的效益。发现了大量以前未用于大豆种植的适宜农业用地。还注意到不考虑作物轮作,在3年和4年的研究期间使用相同的大豆包裹。这一分析表明,在了解环境因素对农田适宜性值的影响方面具有相当大的潜力,从而导致更有效的土地管理政策和未来的适宜性研究。
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来源期刊
Poljoprivreda
Poljoprivreda AGRICULTURAL ECONOMICS & POLICY-
CiteScore
1.00
自引率
14.30%
发文量
13
审稿时长
15 weeks
期刊介绍: POLJOPRIVREDA“ (AGRICULTURE), a scientific-professional journal has been issued since 1995 by the Faculty of Agriculture in Osijek and Agricultural Institute Osijek . The journal is a successor of the former one „Science and practice in agriculture and food technology“ printed from 1982 to 1994. The journal „Poljoprivreda“ is known for publishing scientific and professional articles from all fields of agricultural science and profession. The papers are reviewed. Articles are categorized by two independent referees and approved by Editorial board and Editor – in – chief. Summaries of master"s and doctor"s theses are also published as well as other contributions by the special decisions of the Editorial board.
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