用于预测性农业风险评估和脆弱地貌缓解的地理空间模型

Ighrakpata C. Fidelia
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引用次数: 0

摘要

本研究通过多管齐下的方法,解决简化条件下复杂的农业风险评估问题。研究问题的重点是影响农业风险的土壤湿度、植被覆盖和土地利用模式之间的相互作用。我们采用混合方法,研究土壤内部分析、数学建模和利益相关者的见解。分层客观取样确保了数据集的代表性,各种地理空间工具,包括地理信息系统(GIS)软件和遥感平台,都是数据分析的对象。我们的研究揭示了土壤湿度与植被覆盖之间的正相关关系,并确定了强调用水在农业恢复能力中的重要性的作用。土壤成分数据增强了我们对土壤健康的了解,为可持续农业提供了有用的见解。这些结果极大地丰富了现有的知识体系,并强调了在敏感条件下详细了解农业系统的重要性。未来的研究应考察时间动态、社会经济影响以及支持决策的适应性地理空间模型。我们的研究为从业人员、政策制定者和研究人员提供了宝贵的见解,并推进了对动态环境下农业风险的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geospatial Models for Predictive Agricultural Risk Assessment and Mitigation in Vulnerable Landscapes
This study addresses complex agricultural risk assessment under simplified conditions through a multi-pronged approach. The research problem focuses on the interactions among soil moisture, vegetation cover, and land use patterns influencing agricultural risks. Using mixed methods, we research soil internal analysis, mathematical modelling, and stakeholder insights. Stratified objective sampling ensures representative data sets and various geospatial tools, including Geographic Information System (GIS) software and remote sensing platforms, are subject to data analysis. Our study reveals a positive relationship between soil moisture and vegetation cover and establishes the role of highlighting the importance of water use in agricultural resilience -Use distribution analysis reveals spatial patterns, which identify targeted strategies for risk mitigation. Soil composition data enhance our understanding of soil health, providing usable insights for sustainable agriculture. These results contribute significantly to the existing body of knowledge and emphasize the importance of understanding detailed agricultural systems under sensitive conditions. Future research should examine temporal dynamics, socioeconomic implications, and adaptive geospatial models to support decision-making. Our research provides valuable insights for practitioners, policymakers and researchers and advances the understanding of agricultural risk in dynamic contexts.
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