影响肯尼亚卡卡梅加县 Khwisero 子县土地利用和土地覆盖变化的驱动因素

Shumila Petronillah Mutenyi, Dr. Mutavi Irene Nzisa, Dr. Masika Denis Mutama
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引用次数: 0

摘要

土地利用和土地覆被的变化在很大程度上改变了世界的地貌,重建了环境,并在支持全球人口增长的过程中为人类提供了便利。这些变化的驱动因素因地而异,造成了不同的影响,对土地质量的基本设计和功能能力提出了挑战,并对土地质量造成了影响。研究采用了横断面描述性设计和纵向设计。研究采用随机抽样的方法,从 113 476 个研究对象中抽取了 384 个样本。研究以农业、林地、裸地和建筑用地为基础,通过监督分类算法对大地遥感卫星图像进行分类,然后应用分类后比较变化检测来测量土地利用土地覆盖面积百分比随时间的变化。原始数据是通过与主要信息提供者的访谈和讨论、实地观察以及向奎塞罗分县的各个家庭发放调查问卷收集的。二手数据包括下载大地遥感卫星图像(大地遥感卫星 7 号、8 号和 9 号;30 米多光谱)、期刊论文、原始文件、年度报告、发展计划和互联网中其他作品的摘要和引用。定量数据分析包括中心倾向测量和离散测量(SPSS)以及方差分析(ANOVA)。定性数据的分析方法是将出现的问题整理归类为与研究相关的各种类别。研究区域的土地利用土地覆被分类实现了四个土地利用土地覆被等级,即截至 2023 年,研究区域的农业用地覆被为 81.34 平方公里,森林覆被为 52.75 平方公里,建筑用地覆被为 8.86 平方公里,裸地覆被为 2.65 平方公里。变化探测结果表明,2002 年至 2023 年期间,农业用地一直在减少;2002 年至 2023 年期间,建筑用地一直在增加;2002 年至 2012 年期间,裸地有所增加,但在 2012 年至 2023 年期间有所减少;2002 年至 2012 年期间,森林减少,但在 2012 年至 2023 年期间有所增加。2002 年土地利用土地覆被等级的准确度评估为 85.45%,Kappa 系数为 0.756;2012 年为 83.64%,Kappa 系数为 0.5454;2023 年为 81.82%,Kappa 系数为 0.6034。研究显示,土地利用、土地覆被和土壤侵蚀的驱动因素主要是定居点、贫困和气候变化,因此主要影响耕地植被和土壤肥力。研究得出的结论是,LULCC 的驱动因素因地而异,即使在县级以下地区也是如此。研究建议提高人们的认识,了解 LULCC 的各种驱动因素及其对土地质量的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Driving Forces that Influence Land Use Land Cover Changes in Khwisero Sub County, Kakamega County, Kenya
Land use land cover changes have to a great extent changed the world's landscapes, rebuilding environments and what they provide to humans during the time spent supporting the rising population across the globe. The drivers of these changes vary from location to location causing varying effects that challenge the essential design and the functioning capacity of the land quality with flowing consequences to land quality. A cross sectional descriptive design together with a longitudinal design were used. A random sampling was used to obtain a sample size of 384 from a study population of 113,476. Based on agriculture, forest land, bare land and built up land categories, the study classified Landsat images through supervised classification algorithm then applied post - classification comparison change detection to measure land use land cover percentage area change over time. Primary data was collected through interviews and discussions with key informants, field observations, and questionnaires administered to individual households in Khwisero Sub County. Secondary data involved downloading Landsat images (Landsat 7, 8 and 9; 30-meter multispectral), summaries and citation of other works carried in journals articles, original documents, annual reports, development plans and internet. Quantitative data analysis involved measures of central tendency and measures of dispersion (SPSS) and analysis of variance (ANOVA). Qualitative data was analysed by organizing and grouping the arising issues into various categories relevant to the study. Land use land cover classification of the study area realized four land use land cover classes of agriculture 81.34 km2, forest 52.75 km2, built up 8.86 km2 and bare land 2.65 km2 for the study area as at 2023. Change detection noted that agricultural land use has been reducing from 2002 to 2023, built up has been increasing from 2002 to 2023, bare land increased between 2002 to 2012 but decreased between 2012 and 2023 while forests reduced between 2002 to 2012 but increased between 2012 to 2023 Accuracy assessment for the land use land cover classes for 2002 was 85.45% with a Kappa coefficient of 0.756, 2012 was 83.64% with a Kappa coefficient of 0.5454 while 2023 was 81.82% with a Kappa coefficient of 0.6034 for the land use land cover classes revealing that the classification is accurate. The study revealed that LULCCs are driven by settlement, poverty and climate change mostly thus affecting cropland vegetation and soil fertility majorly. The study concluded that LULCC drivers varied from location to location even within the sub county. The study recommends creation of awareness of understanding the various drivers of LULCCs and impact of each on land quality.
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