基于遥感观测的近实时作物损失估算

S. Sawant, J. Mohite, Mariappan Sakkan, S. Pappula
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引用次数: 7

摘要

由飓风、地震、冰雹和洪水等不稳定天气条件引发的自然灾害给该地区的基础设施和农作物造成了巨大损失。这类自然灾害在世界各国都很容易发生。在印度,特别是沿海地区容易受到热带气旋的影响。2018年,印度泰米尔纳德邦和安得拉邦的东海岸地区受到三个气旋的影响,分别是Titli(2018年10月11日)、Gaja(2018年11月16日)和Pethai(2018年12月17日),对水稻、椰子和槟榔等季节性作物种植园造成严重破坏。传统的基于调查的作物损失评估方法耗时耗力。本研究利用哨兵1号和哨兵2号卫星的时间数据,解决了热带Gaja气旋造成的近实时定性作物损失评估问题。对印度泰米尔纳德邦Thanjavur受灾地区的Gaja气旋进行了作物损害评估研究。该地区种植的主要作物是哈里夫稻(当地称为桑巴和晚桑巴)和椰子种植园。本研究就受影响的作物面积进行定性损失评估。作为第一步,我们使用了8 - 11月间sentinel - 1的时间序列数据(VV和VH后向散射)。2018年绘制哈里夫水稻区地图。此外,哨兵2号的无云场景在3月至5月期间可用。2018年已用于绘制椰子地区的地图。进行了实地考察,以收集水稻作物和椰子种植园的地理标记地块边界。通过实地考察收集的数据用于模型培训和作物损失评估。使用Google地图卫星层作为识别其他非作物类别(即森林、水、聚落等)的基础图。水稻和椰子的作物面积分类总体准确率分别为87.23%和92.22%。此外,为了估计作物损失,考虑了作物层和NDVI。确定了两种作物的两种损失情景,即最小损失和最大损失。以事件发生前(即2018年11月1日至15日)的平均NDVI综合指数为基数。在最大损失情景下,选择事件发生后立即可用的短期NDVI复合,即2018年11月17日至25日。气旋过后,利用平均值(即2018年11月17日至12月13日)的长期NDVI复合值来评估最小损失情景。通过田间观察,将作物损失分为严重损失、中等损失、低损失和无损失。结果表明,坦贾维尔的Pattukkottai、Peravurani和Papanasam区块的椰子种植园受到气旋的影响。Thanjavur、Orattanadu和Pattukkottai地区的水稻作物遭受了重大损失。我们发现,基于遥感的作物损失观测结果与基于实地观测的政府报告相匹配。具有人类参与性遥感的遥感观测(即实地观测)具有近实时作物损失评估的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Near Real Time Crop Loss Estimation using Remote Sensing Observations
Natural calamities triggered by erratic weather conditions like cyclone, earthquakes, hail storms, and flood incurs substantial loss to the infrastructure and crops of the region. Countries across the globe are prone to such natural calamities. In India, specifically coastal parts are vulnerable to tropical cyclones. In 2018 east coast districts of Tamil Nadu and Andhra Pradesh, India were affected by the three cyclones namely Titli (11 Oct. 2018), Gaja (16 Nov. 2018) and Pethai (17 Dec. 2018) causing severe damage to seasonal crops such as Rice, Coconut and Areca Nut plantations. Traditional survey-based methods of crop loss assessment are time-consuming and labor-intensive.This study addresses the problem of near-real-time qualitative crop loss assessment due to tropical Gaja cyclone using the temporal data from Sentinel 1 and 2 satellites. The crop damage assessment study has been undertaken for Gaja cyclone in the affected district of Thanjavur, Tamil Nadu, India. The major crops cultivated in the district are Kharif Rice (locally called as Samba and Late Samba) and Coconut plantations. The study addresses qualitative loss assessment in terms of crop area affected. As a first step, we used time series data of Sentinel1 (VV and VH backscatter) available between Aug.-Nov. 2018 to map the Kharif rice area. Also, cloud-free Sentinel 2 scenes available during Mar.-May. 2018 have been used to map the Coconut area. Field visits were conducted to collect the geo-tagged plot boundaries for the rice crop and coconut plantations. The data collected through field visits was used both for model training and crop loss assessment. Google maps satellite layer was used as a base map for identification of other non-crop classes (i.e., forest, water, settlement, etc.). The overall accuracy of crop area classification was 87.23% for rice and 92.22% for coconut.Further, to estimate the crop loss, crop layers along with the NDVI were considered. Two crop loss scenarios, namely minimum damage and maximum damage, were identified for both the crops. The mean NDVI composite before the event, i.e., 1-15 Nov. 2018 was considered as the base. In case of maximum loss scenario, short term NDVI composite available immediately after the event, i.e., 17-25 Nov. 2018 was selected. After the cyclone, long term NDVI composite of the mean (i.e., 17 Nov.13 Dec. 2018) was used to assess the minimum loss scenario. Using field observations, the crop loss was categorized as severe loss, medium loss, low loss, and no loss. Results showed that the coconut plantations in Pattukkottai, Peravurani, and Papanasam blocks of Tanjavur are affected by the cyclone. The significant rice crop loss has been observed in Thanjavur, Orattanadu, Pattukkottai blocks. We have found the remote sensing based crop loss observations are matching with the government reports based on field observations. The remote sensing observations with human participatory sensing (i.e., field observations) has the potential for near-real-time crop loss assessment.
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