作物种植适宜性综合评估:利用 HJ-1A/1B 卫星数据开展的中国河套灌区案例研究

IF 5.9 1区 农林科学 Q1 AGRONOMY
Bing Yu , Songhao Shang
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引用次数: 0

摘要

人口增长和气候变化导致对粮食的需求不断增加,为实现到 2030 年零饥饿的可持续发展目标带来了重大挑战。克服这些挑战的一个关键方面是确定各种作物的适当种植模式,目的是在有限的水资源和土地资源的限制下提高区域范围内作物的水分生产率。遥感数据和模型为准确估算区域范围内不同作物的水分生产率提供了可能,但基于遥感技术评估区域作物水分生产率及其在农业管理中应用的研究仍然有限。在本研究中,我们提出了一种基于区域作物水分生产力估算的卫星综合方法来评估作物种植适宜性。以中国西北干旱地区具有代表性的黄河上游河套灌区(HID)为研究对象,我们首先利用遥感数据(HJ-1A/1B),通过蒸散量和产量估算,估算了河套灌区内玉米和向日葵两种主要作物的水分生产率。此外,我们还根据作物水分生产率的频率分布引入了一种新的作物种植适宜性指数,有助于确定适当的作物种植模式。我们的研究结果表明,磴口、杭锦后旗周边地区和临河南部地区最适宜种植玉米,而五原和临河北部地区最适宜种植向日葵。这是因为磴口(2.46 kg/m³)和临河(2.15 kg/m³)的玉米水分生产率较高,而五原(0.86 kg/m³)的向日葵水分生产率较高。优化作物种植分布后,玉米和向日葵的平均水分生产率分别提高了 7.6%和 5.0%。所提出的方法可推广到其他地区,其结果为地方政府调节种植模式、最大限度地提高地区作物水分生产率提供了有价值的决策依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated assessment of crop planting suitability: A case study in the Hetao Irrigation District of China using HJ-1A/1B satellite data

The increasing demand for food due to population growth and climate change poses significant challenges to achieve the Sustainable Development Goal of zero hunger by 2030. A key aspect in overcoming these challenges is to determine appropriate planting patterns for various crops, aimed at enhancing regional-scale crop water productivity despite the constraints of limited water and land resources. Remote sensing data and models provide the possibility for accurately estimating water productivity of different crops on a regional scale, but studies on remote sensing-based assessments of regional crop water productivity and its applications in agricultural management are still limited. In this study, we present a satellite-based integrated approach to assess crop planting suitability based on regional crop water productivity estimation. Focusing on the Hetao Irrigation District (HID) in the upper Yellow River basin, a representative irrigation district in arid region of Northwest China, we first use remote sensing data (HJ-1A/1B) to estimate water productivity for the two major crops, maize and sunflower, within the HID from evapotranspiration and yield estimates. Additionally, we introduce a novel crop planting suitability index based on the frequency distribution of crop water productivity, facilitating the determination of appropriate crop planting patterns. Our findings reveal that Dengkou, the periphery of Hangjinhouqi, and the southern part of Linhe are optimal for maize cultivation, while Wuyuan and the northern part of Linhe are ideal for sunflower cultivation. This is attributed to higher water productivity levels for maize in Dengkou (2.46 kg/m³) and Linhe (2.15 kg/m³), and for sunflower in Wuyuan (0.86 kg/m³). Following the optimization of crop planting distribution, the average water productivity for maize and sunflower increases by 7.6 % and 5.0 %, respectively. The proposed method can be generalized to other regions, and the results offer valuable insights for local governments in decision-making to regulate cropping pattern and maximize regional crop water productivity.

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来源期刊
Agricultural Water Management
Agricultural Water Management 农林科学-农艺学
CiteScore
12.10
自引率
14.90%
发文量
648
审稿时长
4.9 months
期刊介绍: Agricultural Water Management publishes papers of international significance relating to the science, economics, and policy of agricultural water management. In all cases, manuscripts must address implications and provide insight regarding agricultural water management.
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