玉米冰雹灾害的遥感评估及其与保险评估的比较——以伦巴第为例

IF 2.6 3区 农林科学 Q1 AGRONOMY
C. Schillaci, Fabio Inverardi, M. Battaglia, A. Perego, W. Thomason, M. Acutis
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引用次数: 1

摘要

研究表明,冰雹损害的量化通常是不准确的,并受到实地测量员/技术人员经验的影响。为了克服这一问题,可以利用遥感反演的植被指数来获取雹害信息。这项工作的目的是利用常用的归一化植被指数(NDVI)与替代植被指数(即ARVI, MCARI, SAVI, MSAVI, msav2)比较2018年伦巴第五次冰雹事件中中低损害(即占总可销售产量的10%至30%)及其从事件前到事件后的变化。2018年春夏期间,在伦巴第布雷西亚地区,Sentinel-2收集了74个重叠场景(10%的云量)。在布雷西亚伦巴第平原进行无监督分类,自动识别玉米田(谷物和青贮),通过搜索冰雹和强风损害来测试变化检测方法。从保险服务部门收集的雹暴发生后125个实地调查(平均面积4公顷)的数据库允许选择事件发生的日期,并提供损害程度的代理(以产量减少的百分比为单位)。冰雹和强风的损害范围为5% ~ 70%,并将其与卫星图像变化检测进行比较。比较哨兵2号在雹暴发生前后植被指数的差异和灾后灾害保险评估的一致性。修正后的土壤调整植被指数对冰雹相关损害的检测准确率最高(73.3%),优于其他植被指数。另一方面,NDVI导致稀缺性能在六个指数中排名最后,准确率为65.3%。未来的研究将评估从卫星获得的植被指数得出的方法的局限性中可以发现多少不确定性,有多少是由于估计对地面损害的错误,以及有多少是由于其他原因。亮点:损坏油田的发现率提高。MSAVI优于NDVI和其他植被指数,识别率为73.3%。-在受影响严重的地区,由遥感所估计的损害情况更为准确,达50%。-在低强度冰雹事件(影响小于50个冠层)中,MSAVI提供了整个地区的详细损害情况。-建议的方法有望制定一份“抽样地图”,以进行详细的实地评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of hail damages in maize using remote sensing and comparison with an insurance assessment: A case study in Lombardy
Studies have shown that the quantification of hail damage is generally inaccurate and is influenced by the experience of the field surveyors/technicians. To overcome this problem, the vegetation indices retrieved by remote sensing, can be used to get information about the hail damage. The aim of this work is the detection of medium-low damages (i.e., between 10 and 30% of the gross saleable production) using the much-used normalized difference vegetation index (NDVI) in comparison with alternative vegetation indices (i.e., ARVI, MCARI, SAVI, MSAVI, MSAVI2) and their change from pre-event to post-event in five hailstorms in Lombardy in 2018. Seventy-four overlapping scenes (10% cloud cover) were collected from the Sentinel-2 in the spring-summer period of 2018 in the Brescia district (Lombardy). An unsupervised classification was carried out to automatically identify the maize fields (grain and silage), testing the change detection approach by searching for damage by hail and strong wind in the Lombardy plain of Brescia. A database of 125 field surveys (average size 4 Ha) after the hailstorm collected from the insurance service allowed for the selection of the dates on which the event occurred and provided a proxy of the extent of the damage (in % of the decrease of the yield). Hail and strong wind damages ranged from 5 to 70%, and they were used for comparison with the satellite image change detection. The differences in the vegetation indices obtained by Sentinel 2 before and after the hailstorm and the insurance assessments of damage after the events were compared to assess the degree of concordance. The modified soil-adjusted vegetation index outperformed other vegetation indices in detecting hail-related damages with the highest accuracy (73.3%). On the other hand, the NDVI resulted in scarce performance ranking last of the six indices, with an accuracy of 65.3%. Future research will evaluate how much uncertainty can be found in the method’s limitations with vegetation indices derived from satellites, how much is due to errors in estimating damage to the ground, and how much is due to other causes. Highlights - The discovery rate of damaged fields improved. - MSAVI outperformed NDVI and other vegetation indices, identifying 73.3% of occurrences. - Estimation of damage from remote sensing was more accurate for fields severely affected >50%. - In low-intensity hail events (<50 canopies affected), the MSAVI provided a detailed picture of the damage across the field. - The proposed approach is promising to develop a ‘sampling map’ for detailed on-ground assessment.
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来源期刊
CiteScore
4.20
自引率
4.50%
发文量
25
审稿时长
10 weeks
期刊介绍: The Italian Journal of Agronomy (IJA) is the official journal of the Italian Society for Agronomy. It publishes quarterly original articles and reviews reporting experimental and theoretical contributions to agronomy and crop science, with main emphasis on original articles from Italy and countries having similar agricultural conditions. The journal deals with all aspects of Agricultural and Environmental Sciences, the interactions between cropping systems and sustainable development. Multidisciplinary articles that bridge agronomy with ecology, environmental and social sciences are also welcome.
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