重点高发区沙漠蝗入侵风险与植被破坏

IF 1.6 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY Earth Interactions Pub Date : 2023-03-28 DOI:10.3390/earth4020010
Raphael Mongare, E. Abdel-Rahman, B. Mudereri, Emily K. Kimathi, S. Onywere, Henri E. Z. Tonnang
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引用次数: 1

摘要

在最近的过去,非洲之角目睹了沙漠蝗虫(Schistocerca gregaria)入侵的激增。这引起了人们对这些经常性入侵造成的大规模粮食不安全、社会经济影响和生计损失的严重关切。本研究利用当前和未来的气候变化情景,确定了荒漠蝗对肯尼亚植被的潜在危害,并预测了荒漠蝗入侵肯尼亚的高危适宜生境。利用谷歌Earth Engine平台上的Sentinel-2多数据影像,计算了2018-2020年的归一化植被指数(NDVI)。这是为了评估2020年5月至7月期间发生的植被变化,当时肯尼亚北部是DL高涨的热点。利用最大熵(MaxEnt)算法,结合646个深度退化事件记录和6个生物气候变量对深度退化生境适宜性进行了预测。利用跨学科气候研究模型(MIROC6)中共享社会经济路径SSP2-4.5和SSP5-8.5的当前(2020年)和未来两种气候情景,预测了2030年(2021-2040年平均值)未来DLs的潜在分布。以图尔卡纳县为例,NDVI分析表明,2020年5月至7月期间植被破坏最大。MaxEnt模型的曲线下面积(AUC)为0.87,真实技能统计量(TSS)为0.61,而温度季节性(Bio4)、平均日差(Bio2)和最暖季降水(Bio18)是预测DL入侵适宜性的最重要生物气候变量。进一步分析表明,目前图尔卡纳县总面积的27%高度适合DL入侵,在最坏的气候变化情景(SSP5-8.5)下,预计未来栖息地覆盖率可能降至20%。这些结果表明,遥感数据有潜力精确地确定植被破坏的程度和位置,以及由于现有有利的植被和气候条件,该地区未来潜在的入侵风险。本研究提供了一种可扩展的方法和基线信息,可用于监测、制定控制计划和监测局部和区域范围内的DL入侵。
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Desert Locust (Schistocerca gregaria) Invasion Risk and Vegetation Damage in a Key Upsurge Area
In the recent past, the Horn of Africa witnessed an upsurge in the desert locust (Schistocerca gregaria) invasion. This has raised major concerns over the massive food insecurity, socioeconomic impacts, and livelihood losses caused by these recurring invasions. This study determined the potential vegetation damage due to desert locusts (DLs) and predicted the suitable habitat at high risk of invasion by the DLs using current and future climate change scenarios in Kenya. The normalized difference vegetation index (NDVI) for the period 2018–2020 was computed using multi-date Sentinel-2 imagery in the Google Earth Engine platform. This was performed to assess the vegetation changes that occurred between May and July of the year 2020 when northern Kenya was the hotspot of the DL upsurge. The maximum entropy (MaxEnt) algorithm was used together with 646 DL occurrence records and six bioclimatic variables to predict DL habitat suitability. The current (2020) and two future climatic scenarios for the shared socioeconomic pathways SSP2-4.5 and SSP5-8.5 from the model for interdisciplinary research on climate (MIROC6) were utilized to predict the future potential distribution of DLs for the year 2030 (average for 2021–2040). Using Turkana County as a case, the NDVI analysis indicated the highest vegetation damage between May and July 2020. The MaxEnt model produced an area under the curve (AUC) value of 0.87 and a true skill statistic (TSS) of 0.61, while temperature seasonality (Bio4), mean diurnal range (Bio2), and precipitation of the warmest quarter (Bio18) were the most important bioclimatic variables in predicting the DL invasion suitability. Further analysis demonstrated that currently 27% of the total area in Turkana County is highly suitable for DL invasion, and the habitat coverage is predicted to potentially decrease to 20% in the future using the worst-case climate change scenario (SSP5-8.5). These results have demonstrated the potential of remotely sensed data to pinpoint the magnitude and location of vegetation damage caused by the DLs and the potential future risk of invasion in the region due to the available favorable vegetational and climatic conditions. This study provides a scalable approach as well as baseline information useful for surveillance, development of control programs, and monitoring of DL invasions at local and regional scales.
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来源期刊
Earth Interactions
Earth Interactions 地学-地球科学综合
CiteScore
2.70
自引率
5.00%
发文量
16
审稿时长
>12 weeks
期刊介绍: Publishes research on the interactions among the atmosphere, hydrosphere, biosphere, cryosphere, and lithosphere, including, but not limited to, research on human impacts, such as land cover change, irrigation, dams/reservoirs, urbanization, pollution, and landslides. Earth Interactions is a joint publication of the American Meteorological Society, American Geophysical Union, and American Association of Geographers.
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