利用地球大数据的变革性作物保险解决方案:印度马铃薯的实施情况

IF 4.8 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES Climate Risk Management Pub Date : 2024-01-01 DOI:10.1016/j.crm.2024.100622
C.S. Murthy , Karun Kumar Choudhary , Varun Pandey , P. Srikanth , Siddesh Ramasubramanian , G. Senthil Kumar , Malay Kumar Poddar , Cristina Milesi , Ramakrishna Nemani
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引用次数: 0

摘要

背景作物保险已成为农业部门不可或缺的风险管理工具,因为全球作物都面临着多种危害。由于缺乏可靠的作物产量数据,地区产量作物保险计划难以为继。本文介绍了一种创新的作物保险计划,该计划利用客观测量的卫星指数的 "面积-作物表现法 "取代了现有的使用容易产生偏差的作物产量估算的 "面积-产量法"。哨兵 1 号和 2 号卫星的数据、气象数据集以及基于移动应用程序的从作物移植到收获的田间数据构成了该项目的庞大数据库。从 NDVI、LSWI 和反向散射等已建立的卫星指数以及天气指数中得出的度量指标被综合成一个作物性能综合指数,称为作物健康因子(CHF)。CHF 模型的输入数据矩阵包括八个输入指标。在对数据进行归一化处理后,使用熵技术生成这些指标的权重。熵技术是一种行之有效的信息测量方法,可产生平衡关系和无偏权重。首先使用过去几年(2016-2019 年)的数据生成 CHF,然后将生成的权重应用于当年(2020 年)的归一化数据。结果目前的作物保险计划使用 CHF 数据代替产量数据,在印度西孟加拉邦实施,2020 年作物季覆盖约 50 万公顷马铃薯和 1,000 个保险单位。往年的CHF数据和产量数据在大多数情况下显示出相似的模式。赔偿额设定为正常 CHF 的 70%,即往年的平均 CHF。这一新的指数保险计划与传统的基于收益率的计划相比,在透明度、客观性和易于实施方面具有许多优势。综合指数还有改进的余地,可以增加新的功能。这种以技术为驱动力的大田作物指数保险计划有望为农作物保险行业带来模式转变,催生新的商业模式,使所有利益相关者受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Transformative crop insurance solution with big earth data: Implementation for potato in India

Context

Crop insurance has become an indispensable risk management tool in the agricultural sector because globally crops are being exposed to multiple hazards. The lack of reliable crop yield data has impacted the sustenance of area-yield crop insurance schemes. Index-based insurance, which links pay-outs to crop performance proxies rather than measured losses, is being explored to improve the effectiveness of crop insurance contracts.

Objective

This paper presents an innovative crop insurance scheme that has replaced the existing ‘area-yield’ approach using bias-prone crop yield estimates with the ‘area-crop performance approach’ using objectively measured satellite indices.

Method

Satellite-based crop mapping, satellite and weather-based crop health indicators, field data collection and analysis, composite index generation, and insurance loss assessment are major tasks in the project. Data of Sentinel-1 and 2 satellites, weather datasets and mobile app-based field data from transplantation to harvesting of the crop constituted a huge repository of the database in this project. Metrics derived from established satellite indices, such as NDVI, LSWI and Backscatter, along with weather indices, were synthesized into a composite index of crop performance called Crop Health Factor (CHF). The input data matrix of the CHF model included eight input indicators. After data normalization, weights for these indicators were generated using the entropy technique, a proven method of information measurement that produces balanced relationships and unbiased weights. The CHF was first generated with data from the past years (2016–2019), and the resulting weights were then applied to the normalized data of the current year (2020).

Results

The current crop insurance scheme, using CHF data instead of yield data, was implemented in the state of West Bengal, India, covering about 500,000 ha of potato across and one thousand insurance units in the 2020 crop season. The CHF and yield data from past years showed similar patterns in the majority of cases. The indemnity level was set at 70 % of the normal CHF, which was the average CHF of past years. Loss assessment and compensation payouts for the current year were determined by the extent of CHF reduction beyond the indemnity level.

Significance

This new index-insurance scheme has many advantages over the conventional yield-based scheme in terms of transparency, objectivity and ease of implementation. There is scope for improving the composite index with additional features. Such technology-driven index-insurance schemes for field crops are expected to bring a paradigm shift in the crop insurance sector, giving rise to new business models and benefitting all the stakeholders.

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来源期刊
Climate Risk Management
Climate Risk Management Earth and Planetary Sciences-Atmospheric Science
CiteScore
8.20
自引率
4.50%
发文量
76
审稿时长
30 weeks
期刊介绍: Climate Risk Management publishes original scientific contributions, state-of-the-art reviews and reports of practical experience on the use of knowledge and information regarding the consequences of climate variability and climate change in decision and policy making on climate change responses from the near- to long-term. The concept of climate risk management refers to activities and methods that are used by individuals, organizations, and institutions to facilitate climate-resilient decision-making. Its objective is to promote sustainable development by maximizing the beneficial impacts of climate change responses and minimizing negative impacts across the full spectrum of geographies and sectors that are potentially affected by the changing climate.
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