首页> 外文期刊>Ecological Modelling >Mapping the spatial distribution of Lippia javanica (Burm. f.) Spreng using Sentinel-2 and SRTM-derived topographic data in malaria endemic environment
【24h】

Mapping the spatial distribution of Lippia javanica (Burm. f.) Spreng using Sentinel-2 and SRTM-derived topographic data in malaria endemic environment

机译:使用Halaria流行环境中的Sentinel-2和SRTM衍生地形数据映射Lippia Javanica(Burm.f。)Spreng的空间分布

获取原文
获取原文并翻译 | 示例
           

摘要

Lippia javanica (L. javanica) is one of the commonly used ethnobotanical plant species for controlling malaria globally. Accurate mapping of L. javanica species is important for malaria control interventions that require geospatial information for the assessment of malaria distribution and monitoring especially in communities that have limited access to western malaria medicine. Currently, high spatial resolution information pertaining the distribution and habitat suitability of L. javanica species is very rare. The high resolution mapping could assist in identifying potential niche areas of ethnobotanically important species and to facilitate community health and wellness against malaria. In this study, we tested the ability of high spatial resolution Sentinel-2 (S-2) derived variables and Shuttle Radar Topography Mission (SRTM)-derived topographic variables to predict the distribution of L. javanica in the Vhembe District Municipality (South Africa). The relationship between remote sensing variables and the occurrence data of L. javanica was assessed using coefficient of determination (R-2). Here, for the first time we compared three commonly used species distribution models (logistic regression, Maxent and ensemble models) to derive the best possible subsets of environmental predictors, and to produce the species distribution map that could aid in identifying areas were L. javanica occurs for use against malaria vectors. Various validation matrices such as the overall accuracy (OA), model sensitivity (Sn) and specificity (Sp), and the true skill statistics (TSS) were employed to test the robustness of the resultant models. The results showed a superior performance of weighted ensemble model, which yielded higher overall accuracy (91.3%, TSS = 0.66) than both logistic regression (OA = 84.4%, TSS = 0.42) and Maxent (95.6%, TSS = 0.73). The indices derived from the Sentinel's red edge bands were the most contributory variables in both logistic regression and Maxent.
机译:Lippia Javanica(L. Javanica)是全球控制疟疾的常用乙醇植物物种之一。 L. Javanica物种的准确映射对于需要对疟疾分配和监测进行评估的疟疾控制干预措施对疟疾分配和监测有限的疟疾进行评估,特别是在获得西部疟疾中的社区。目前,爪哇菊属物种的分布和栖息地适用性的高空间分辨率信息非常罕见。高分辨率映射可以帮助识别民族援助物质的潜在地区,并促进社区健康和对抗疟疾的健康。在这项研究中,我们测试了高空间分辨率Sentinel-2(S-2)导出的变量和穿梭雷达形貌任务(SRTM)的能力的能力,以预测Vhembe区市L. Javanica的分布(南非)。使用确定系数(R-2)评估遥感变量与L. Javanica的发生数据之间的关系。在这里,我们第一次比较了三种常用的物种分布模型(Logistic回归,MaxEnt和集合模型)来得出最佳的环境预测因子子集,并产生可以帮助识别区域的物种分布图是L. Javanica发生用于对抗疟疾载体。各种验证矩阵,如整体精度(OA),模型灵敏度(SN)和特异性(SP),以及真正的技能统计(TSS)以测试所得模型的稳健性。结果表明,加权集合模型的优异性能,其总体精度越高(91.3%,TSS = 0.66),而不是逻辑回归(OA = 84.4%,TSS = 0.42)和最大值(95.6%,TSS = 0.73)。源自Sentinel的红色边缘频带的指数是逻辑回归和MaxEnt中最多的贡献变量。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号