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1.
国家级现代农业气象业务技术进展   总被引:8,自引:4,他引:4       下载免费PDF全文
农业气象业务技术是开展农业气象服务的基础和前提,因此,农业气象业务技术的研发一直是国家级农业气象业务服务的核心工作。近年来,国家级农业气象业务技术已逐步迈向精细化、定量化,涵盖了农业气象监测评价、作物产量预报、农业气象灾害监测评估与影响预报、农用天气预报、农林病虫害发生发展气象等级预报等诸多领域。随着农业气象业务技术的发展,支撑农业气象服务的客观产品更加丰富和多样化,既有站点产品,又有格点产品,涵盖了日、周、月、季、年等不同时间尺度。以农业气象指标、数理统计模型、作物生长模拟、卫星遥感、地理信息系统、大数据等技术为核心的国家级农业气象业务平台(CAgMSS)已成为全国农业气象业务系统的重要品牌。面向现代农业发展对气象服务日益增长的需求,精细化、精准化的农业气象灾害监测与风险评估技术、作物长势评估与产量预报综合集成技术、农业应对气候变化技术以及农业气象大数据挖掘与人工智能技术将是未来国家级农业气象业务技术发展的重点。  相似文献   

2.
统计预报方法是农业气象预报业务中常用的一种方法。在“新一代农业气象预报系统”中,系统设计了一种通用统计预报模型构建方法,可用于作物产量预报、农业气象灾害预报等农气预报业务。本文主要介绍了通用预报模型的设计原理、实现方法及应用试验结果等。  相似文献   

3.
中国农业气象业务系统(CAgMSS)设计与实现   总被引:1,自引:0,他引:1       下载免费PDF全文
中国农业气象业务系统(CAgMSS)是基于C/S架构,研发的面向国家级和省级农业气象服务的业务工作平台,主要包括农业气象监测评价、作物产量预报、灾害监测评估、农用天气预报等子系统,是农业气象业务的基础性软件。系统融合现代信息技术和农业气象业务技术,实现了全部子系统数据管理、模型运算、产品制作等业务流程的一体化。系统采用大型关系型数据库规范了农业气象各类业务数据,基于插件技术集成各项业务功能,实现多元数据、多指标、多模型在农业气象监测、评价、预报等领域的综合应用,提高了农业气象产品的定量化、精细化、客观化水平。系统于2012年投入业务应用,基于该系统制作的农业气象情报、作物产量气象预报、农业气象灾害影响评估、关键农时农事气象保障等服务产品,在指导全国农业生产和防灾减灾中发挥了重要作用,明显提高了农业气象业务能力和业务工作效率。  相似文献   

4.
《气象科技》2001,29(2):64
为了向广大读者介绍近来年我国农业气象情报预报业务和科研成果,《气象科技》编辑部将于2001年9月出版增刊一期。增刊的论文内容主要包括以下几方面:①Windows平台的农业气象情报预报业务服务系统的设计与开发,Maplinfo在农业气象业务服务中的应用和基于GIS的作物长势卫星遥感监测服务系统;②我国主要粮食作物产量气象影响的评价模型;③2000年我国粮食作物大幅度减产原因分析;④2000年农业气象条件对水稻、小麦、玉米、大豆、棉花等作物的影响;⑤近年国外农业气象情报、预报科研和业务进展概况。 《气象报技》编辑部 (边益)  相似文献   

5.
正发展农业气象服务。加强研发统计、遥感、作物生长模拟模型相结合的作物产量集成预报与服务。发展环境气象服务。建立并完善环境气象数值预报业务系统,加强霾、沙尘和空气污染气象条件,以及光化学烟雾等环境气象中期预报和气候趋势预测业务。发展交通气象服务。开展高影响天气交通气象预报和灾害风险预警,逐步实现以"点段线"为特征的高分辨率交  相似文献   

6.
国家级农业气象业务技术综述   总被引:12,自引:2,他引:10  
毛留喜  吕厚荃 《气象》2010,36(7):75-80
国家级农业气象业务经过近50年的发展,服务领域不断拓展,已形成包括农业气象情报、作物产量预报、农业气象灾害监测预警与评估、生态气象监测评估、农用天气预报等系列服务,其业务技术以指标为基础,以遥感和GIS等技术为支撑,发展了指标评判、统计分析预报、模型模拟、综合集成等技术,满足了不同服务对象对业务的需求。未来农业气象业务将更加规范、精细、定量。  相似文献   

7.
统计预报方法是农业气象预报业务中常用的一种方法.在"新一代农业气象预报系统"中,系统设计了一种通用统计预报模型构建方法,可用于作物产量预报、农业气象灾害预报等农气预报业务.本文主要介绍了通用预报模型的设计原理、实现方法及应用试验结果等.  相似文献   

8.
钱培东 《气象》1989,15(12):32-33
农业气象产量预报正在逐步成为一项日常业务工作,显示出越来越重要的作用。为了在作物生长发育的不同时段给出预测结果,并随预报时效缩短,精度不断提高,就需进行作物产量的动态预测。本文对无锡市主要粮食作物之一的单季晚稻,进行了农业  相似文献   

9.
辽宁省农业气象产量预报业务系统,是在IBM—PC/AT微机上实现的自动收集、加工、贮存有关农业气象信息,完成省级主要农作物产量预报制作、发布和农业气象资料输出的综合业务服务系统。该系统将科学研究、预报业务融为一体,为我省农业产量预报和情报服务的客观化、自动化和系统化初步奠定了基础。本文简要介绍系统的构成和功能情况。  相似文献   

10.
基于气象要素的逐日玉米产量气象影响指数   总被引:1,自引:0,他引:1       下载免费PDF全文
利用1981—2020年5—9月气象数据与玉米产量数据,通过改进逐日降水适宜度并构建逐日气候适宜度模型,建立基于相似年逐日气象要素的作物生育期气候适宜度序列,利用气象产量与气候适宜指数建立模型,设计逐日作物产量气象影响指数以表征气象条件对作物的影响程度,基于该指数构建东北地区玉米逐日产量预报模型并分析其逐日预报准确率,用以表明该指数的准确性。结果表明:利用3个相似年预报结果加权集成综合相似年逐日作物产量气象影响指数可提高逐日预报准确率,黑龙江年尺度逐日预报准确率年际间波动小于东北其他地区。综合相似年月尺度下,随着玉米发育期的推进和实时气象数据的引入,月尺度平均预报准确率逐渐提高。东北地区玉米产量8月31日的日尺度预报准确率普遍高于7月31日;辽宁日尺度预报差异较大,但随着玉米发育期推进逐日预报产量和实际产量接近,准确率也提高。基于气象要素构建的逐日作物产量影响指数和同期气象影响指数可以定量评估不同时段气象条件对作物产量的影响程度,在一定程度上可提高农业气象业务定量化评价水平。  相似文献   

11.
This paper discusses the importance of testing models which may be used to forecast the impact of climate on society. Model testing using sensitivity analysis and validation techniques is illustrated with two models: (1) the YIELD model which simulates the impact of climate on crop yields of several major crops, and (2) the International Futures Simulation model which can be used to simulate the impact of crop yield changes on the world food system. The problems of linking such models to each other are also discussed.  相似文献   

12.
利用气象卫星资料估算全球作物总产研究   总被引:9,自引:1,他引:8  
侯英雨  王建林 《气象》2005,31(8):18-21
以美国为例,利用1996~2000年每旬的全球植被指数卫星遥感资料,计算出每年耕地上作物生长季内的总NPP(Net Primary Production)。农作物总产是耕地上总NPP的一部分,根据NPP与作物总产的关系,确定作物的产量转换系数,然后利用当年耕地的总NPP值来估算当年作物的总产。通过研究表明,该方法的预测精度较高,可操作性强,能够投入业务应用。  相似文献   

13.
Climate and crop yield variability associated with El Niño—Southern Oscillation (ENSO) are now predictable within limits. This predictability suggests a potential to tailor agricultural management to mitigate impacts of adverse conditions and to take advantage of favorable conditions. However, improved climate predictions may benefit society only with parallel advances in our ability to use this knowledge. We show that the value that will accrue to any given actor from an ENSO phase forecast should be viewed not as a known number but instead as a random draw from a distribution, even when the forecast is always correct. Forecast value depends on the highly variable contexts in which forecasts are used. Randomness in forecast value has significant implications for choices made by forecasters, forecast users and policy makers. To show randomness, we estimate potential economic values of ENSO forecasts for agricultural producers based on two realistic assumptions: the crop prices farmers receive are uncertain; and within an ENSO phase, the actual climate is variable in ways that affect profits. The use of synthetic weather and crop price series, with crop simulation models, helps show the range and likelihood of climate forecast value.  相似文献   

14.
The aim of this paper is to improve understanding of the adaptive capacity of European agriculture to climate change. Extensive data on farm characteristics of individual farms from the Farm Accountancy Data Network (FADN) have been combined with climatic and socio-economic data to analyze the influence of climate and management on crop yields and income and to identify factors that determine adaptive capacity. A multilevel analysis was performed to account for regional differences in the studied relationships. Our results suggest that socio-economic conditions and farm characteristics should be considered when analyzing effects of climate conditions on farm yields and income. Next to climate, input intensity, economic size and the type of land use were identified as important factors influencing spatial variability in crop yields and income. Generally, crop yields and income are increasing with farm size and farm intensity. However, effects differed among crops and high crop yields were not always related to high incomes, suggesting that impacts of climate and management differ by impact variable. As farm characteristics influence climate impacts on crop yields and income, they are good indicators of adaptive capacity at farm level and should be considered in impact assessment models. Different farm types with different management strategies will adapt differently.  相似文献   

15.
Historical increases in agricultural production were achieved predominantly by large increases in agricultural productivity. Intensification of crop and livestock production also plays a key role in future projections of agricultural land use. Here, we assess and discuss projections of crop yields by global agricultural land-use and integrated assessment models. To evaluate these crop yield projections, we compare them to empirical data on attainable yields by employing a linear and plateauing continuation of observed attainable yield trends. While keeping in mind the uncertainties of attainable yields projections and not considering future climate change impacts, we find that, on average for all cereals on the global level, global projected yields by 2050 remain below the attainable yields. This is also true for future pathways with high technological progress and mitigation efforts, indicating that projected yield increases are not overly optimistic, even under systemic transformations. On a regional scale, we find that for developing regions, specifically for sub-Saharan Africa, projected yields stay well below attainable yields, indicating that the large yield gaps which could be closed through improved crop management, may also persist in the future. In OECD countries, in contrast, current yields are already close to attainable yields, and the projections approach or, for some models, even exceed attainable yields by 2050. This observation parallels research suggesting that future progress in attainable yields in developed regions will mainly have to be achieved through new crop varieties or genetic improvements. The models included in this study vary widely in their implementation of yield progress, which are often split into endogenous (crop management) improvements and exogenous (technological) trends. More detail and transparency are needed in these important elements of global yields and land use projections, and this paper discusses possibilities of better aligning agronomic understanding of yield gaps and yield potentials with modelling approaches.  相似文献   

16.
The purpose of the paper is to propose and test a new approach to simulating farmers' agronomic adaptation to climate change based on the pattern of adoption of technological innovation/substitution over time widely described as a S-shaped (or logistic) curve, i.e., slow growth at the beginning followed by accelerating and then decelerating growth, ultimately leading to saturation. The approach we developed is tested using the Erosion Productivity Impact Calculator crop model applied to corn production systems in the southeastern U.S. using a high-resolution climate change scenario. Corn is the most extensively grown crop in the southeastern U.S. The RegCM limited area model nested within the CSIRO general circulation model generated the scenario. We compare corn yield outcomes using this new form of adaptation (logistic) with climatically optimized (clairvoyant) adaptation. The results show logistic adaptation to be less effective than clairvoyant adaptation in ameliorating climate change impacts on yields, although the differences between the two sets of yields are statistically significant in one case only. These results are limited by the reliance on a single scenario of climate change. We conclude that the logistic technique should be tested widely across climate change scenarios, crop species, and geographic areas before a full evaluation of its effect on outcomes is possible.  相似文献   

17.
Climate change impacts food production systems, particularly in locations with large, vulnerable populations. Elevated greenhouse gases (GHG), as well as land cover/land use change (LCLUC), can influence regional climate dynamics. Biophysical factors such as topography, soil type, and seasonal rainfall can strongly affect crop yields. We used a regional climate model derived from the Regional Atmospheric Modeling System (RAMS) to compare the effects of projected future GHG and future LCLUC on spatial variability of crop yields in East Africa. Crop yields were estimated with a process-based simulation model. The results suggest that: (1) GHG-influenced and LCLUC-influenced yield changes are highly heterogeneous across this region; (2) LCLUC effects are significant drivers of yield change; and (3) high spatial variability in yield is indicated for several key agricultural sub-regions of East Africa. Food production risk when considered at the household scale is largely dependent on the occurrence of extremes, so mean yield in some cases may be an incomplete predictor of risk. The broad range of projected crop yields reflects enormous variability in key parameters that underlie regional food security; hence, donor institutions’ strategies and investments might benefit from considering the spatial distribution around mean impacts for a given region. Ultimately, global assessments of food security risk would benefit from including regional and local assessments of climate impacts on food production. This may be less of a consideration in other regions. This study supports the concept that LCLUC is a first-order factor in assessing food production risk.  相似文献   

18.
As carbon dioxide and other greenhouse gasses accumulate in the atmosphere and contribute to rising global temperatures, it is important to examine how a changing climate may affect natural and managed ecosystems. In this series of papers, we study the impacts of climate change on agriculture, water resources and natural ecosystems in the General Circulation Model (GCM)-derived climate change projections, described in Part 1, to drive the crop production and water resource models EPIC (Erosion Productivity Impact Calculator) and HUMUS (Hydrologic Unit Model of the United States). These models are described and validated in this paper using historical crop yields and streamflow data in the conterminous United States in order to establish their ability to accurately simulate historical crop and water conditions and their capability to simulate crop and water response to the extreme climate conditions predicted by GCMs. EPIC simulated grain and forage crop yields are compared with historical crop yields from the US Department of Agriculture (USDA) and with yields from agricultural experiments. EPIC crop yields correspond more closely with USDA historical county yields than with the higher yields from intensively managed agricultural experiments. The HUMUS model was validated by comparing the simulated water yield from each hydrologic basin with estimates of natural streamflow made by the US Geological Survey. This comparison shows that the model is able to reproduce significant observed relationships and capture major trends in water resources timing and distribution across the country.  相似文献   

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