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首页> 外文期刊>International journal of remote sensing >Integrating geostatistics and remote sensing for mapping the spatial distribution of cattle hoofprints in relation to malaria vector control
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Integrating geostatistics and remote sensing for mapping the spatial distribution of cattle hoofprints in relation to malaria vector control

机译:整合地统计学和遥感技术以绘制与疟疾媒介控制有关的牛蹄印的空间分布

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摘要

Globally, malaria is still a persistent health problem affecting more than 200 million people. With about 90% of malaria cases occurring in Sub-Saharan Africa, it becomes imperative to understand the environmental factors contributing to malaria vector proliferation. The cattle hoofprints are known to be some of the productive breeding sites for Anopheles (An.) arabiensis and An. fenestus in Southern and East African countries. Therefore, this study aimed at testing the potential of integrating field data and Sentinel-2 satellite imagery for mapping cattle hoofprint distribution in the Vhembe District, South Africa. The purpose was to improve the predictability of mosquito breeding sites in the study area by using field point dataset and Sentinel-2 data. Due to the difficulty of sampling all locations in the study area, the spatial interpolation was employed to create continuous surfaces of cattle hoofprints, using limited sampled point observations. The sampled point observations were then correlated with Sentinel-derived variables for predicting cattle hoofprints at unsampled locations. The ordinary Kriging (OK), co-Kriging (CK) and step-wise multiple linear regression (SMLR) were used due to their ability to incorporate both field point data and ancillary datasets. The CK was the best performing interpolation method, with R-2 = 0.69 for validation dataset (n = 33), compared to OK (R-2 = 0.57) and SMLR (R-2 = 0.25). The resulting co-Kriging semivariogram shows that the combination of field data and remote sensing dataset improves the prediction accuracy of cattle hoofprint distribution. Findings from this study demonstrated that the interpolation error for estimating cattle hoofprints/100 m(2) can be minimized greatly by using CK (RMSE = 0.2; MAD = 0.04) than with both OK (RMSE = 2.39; MAD = 2.11) and SMLR (RMSE = 5.20; MAD = 4.55) methods. Furthermore, the results from this study indicate that there is a high number of cattle hoofprints in malaria-prone areas at the study site than in the malaria-free areas. Studies such as this provide the platform for developing an operational platform for long-term monitoring of areas susceptible to malaria, risks, and control management.
机译:在全球范围内,疟疾仍然是一个持续存在的健康问题,影响着2亿多人。由于大约90%的疟疾病例发生在撒哈拉以南非洲,因此必须了解导致疟疾媒介扩散的环境因素。牛蹄印被认为是阿拉伯按蚊和按蚊的一些繁殖繁殖地。南部和东部非洲国家的fenestus。因此,本研究旨在测试整合野外数据和Sentinel-2卫星图像以绘制南非Vhembe区牛蹄印分布的潜力。目的是通过使用场点数据集和Sentinel-2数据来提高研究区域中蚊子繁殖地点的可预测性。由于难以对研究区域的所有位置进行采样,因此使用空间插值法通过有限的采样点观测来创建牛蹄纹的连续表面。然后将采样点的观测值与Sentinel衍生变量相关联,以预测未采样位置的牛蹄印。使用普通克里格法(OK),协同克里格法(CK)和逐步多元线性回归(SMLR)是因为它们具有合并场点数据和辅助数据集的能力。 CK是执行效果最好的插值方法,对于确认数据集(n = 33),R-2 = 0.69,而OK(R-2 = 0.57)和SMLR(R-2 = 0.25)比较。所得的协同克里格半变异函数表明,野外数据和遥感数据集的组合提高了牛蹄纹分布的预测准确性。这项研究的结果表明,与使用OK(RMSE = 2.39; MAD = 2.11)和SMLR相比,使用CK(RMSE = 0.2; MAD = 0.04)可以大大减小估计牛蹄纹/ 100 m(2)的内插误差。 (RMSE = 5.20; MAD = 4.55)方法。此外,这项研究的结果表明,与无疟疾地区相比,在疟疾高发地区的牛蹄印数量很多。诸如此类的研究为开发运营平台提供了平台,该平台可长期监测易感疟疾,风险和控制管理区域。

著录项

  • 来源
    《International journal of remote sensing 》 |2019年第16期| 5917-5937| 共21页
  • 作者单位

    Univ Pretoria, Dept Geog Geoinformat & Meteorol, Private Bag X20, ZA-0028 Hatfield, South Africa|SANSA, Earth Observat Directorate, Pretoria, South Africa;

    New Partnership Africas Dev NEPAD Agcy, Midrand, South Africa;

    Univ Pretoria, Dept Geog Geoinformat & Meteorol, Private Bag X20, ZA-0028 Hatfield, South Africa|Southern African Sci Serv Ctr Climate Change & Ad, Windhoek, Namibia;

    SANSA, Earth Observat Directorate, Pretoria, South Africa;

    SANSA, Earth Observat Directorate, Pretoria, South Africa;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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