Scientia Agricultura Sinica ›› 2014, Vol. 47 ›› Issue (16): 3231-3249.doi: 10.3864/j.issn.0578-1752.2014.16.010

• SOIL & FERTILIZER·WATER-SAVING IRRIGATION·AGROECOLOGY & ENVIRONMENT • Previous Articles     Next Articles

A Summary of Methodology for Extracting, Integrating and Mapping of Massive Geo-Data

 ZHANG  Wei-Li   

  1. Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences/Key Laboratory of Crop Nutrition and Fertilization, Ministry of Agriculture, Beijing 100081
  • Received:2013-12-22 Online:2014-08-18 Published:2014-04-15

Abstract: The methodology for extracting, integrating and mapping of massive geo-data is a new method combined by different disciplinary approaches in agriculture and environmental science, geo science, cartography, information and computer science. The methodology consists mainly in the data model design and the working flow design for processing, analyzing and mapping massive geo-info. By using the methodology, big data in heterogeneous format and structure originated from different resources and regions of agricultural and environmental research and working programs can be effectively extracted, analyzed and correlated for mapping and thematic expression. The method can be used to analyze point observation data, map data, remote sensing data in different spaces and times. So that it supplies a useful tool for providing information with higher accuracy, larger covering area and more system concerning elements, through which major factors and mechanism in agricultural and environmental system can be much more exactly qualified and quantified. Based on many years of research and practical experience, the author of this paper introduced the connotation, the application range, the basic and the concerning conceptions and the main contents of the methodology, with the purpose to provide a brief understanding for researchers and managers in agriculture and the environment sectors to apply the new method in their working fields. As a big data approach, the method can be widely used for evaluation of the quantity and quality of soil resources, climate change, environmental quality, evaluation of crop varieties suitable distribution area, agricultural non-point source pollution control,erosion control, drought and flood disaster mitigation, and other working and research areas. It can also be applied for precise and visualized expressing of soil fertility and environmental quality, so that farmers or other users from different sectors can access to research results and progress much easier and get benefits from it. It provides also a useful approach to establish scientific basis for developing and implementing incentive policy in agriculture and environment sectors. The core of methodology is to define the rules according to scientific target for classifying massive geo-data. Based on the rules defined, grouping, coding, extracting and mapping of massive geo-data can be then carried out. Because of horizontal and vertical features of data structure of a massive geo-dataset, the four component expression of massive geo-dataset should be applied. Through which both logical and physical structure differences of massive geo information originated from different sources can be distinguished and displayed clearly. After normalization of data logical structure, the extracting, integrating and mapping of massive geo-datasets are then followed. In agriculture and environmental research works, however, frequent difficulty of big data analysis approach is the weakening or even lost of the scientific target during data treatment. Therefore, scientific or specific target should be defined as precise as possible at the beginning of the data analysis working program. A five-level designing process should be applied for drafting working flow of data extracting, integrating and mapping. Checking and examining the realization of defined target should be done time to time during the data processing. With deep understanding of the target, researchers and professionals from agriculture and environment sectors should be responsible for designing data processing flow of high-levels and drafting the corresponding design documents according to specifications of the methodology.

Key words: agriculture , environment , massive geo-data , digital mapping , big data methodology

[1]Möller T, Hamann B, Russell R D. Mathematical Foundations of Scientific Visualization, Computer Graphics, and Massive Data Exploration. Springer-Verlag, 2009: 285-302.

[2]Mayer-Schonberger V, Cukier K. Big Data: A Revolution That Will Transform How We Live, Work, and Think. New York: Houghton Mifflin Harcourt Publishing Company, 2013.

[3]Lagacherie P, McBratney A B, Voltz M. Digital Soil Mapping, An Introductory Perspective. Amsterdam: Elsevier, 2007: 659.

[4]Boettinger J L, Howell D, Moore A, Hartemink A E, Kienast-Brown S. Digital Soil Mapping Bridging Research, Environmental Application, and  Operation. Springer-Verlag, 2010: 462.

[5]McBratney A B, Mendonca Santos M L, Minasny B. On digital soil mapping. Geoderma, 2003, 117: 3-52.

[6]Dobos E, Carré F, Hengl T, Reuter H I, Tóth G. Digital Soil Mapping as a support to production of functional maps. Luxemburg: Office for Official Publications of the European Communities, EUR 22123 EN, 2006: 68.

[7]Sanchez P A, Ahamed S, Carré F, Hartemink A E, Hempel J, Huising J, Lagacherie P, McBratney A B, McKenzie N J, Mendonça-Santos M d L, Minasny B, Montanarella L, Okoth P, Palm C A, Sachs J D, Shepherd K D, Vågen T, Vanlauwe T-G, Walsh M G, Winowiecki L A, Zhang G L. Digital soil map of the world. Science, 2009, 325: 680-681.

[8]张维理, 武淑霞, 冀宏杰. 中国农业面源污染形势估计及控制对策. 中国农业科学, 2004, 37(7): 1008-1033.

Zhang W L, Wu S X, Ji H J. Estimation of agricultural non-point source pollution in China and the alleviating strategies. Scientia Agricultura Sinica, 2004, 37(7): 1008-1033. (in Chinese)

[9]张维理. 我国耕地质量状况分析报告及对策. 中国农业科学院农业资源与农业区域研究所, 2005.

Zhang W L. Report on Status of Arable Land Quality in China. Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences, 2005. (in Chinese)

[10]张维理, 张认连, 徐爱国, 田有国, 姚政, 段宗颜. 中国: 1﹕5万比例尺数字土壤的构建. 中国农业科学, 2014, 47(16): 3195-3213.

Zhang W L, Zhang R L, Xu A G, Tian Y G, Yao Z, Duan Z Y. Development of China digital soil maps (CDSM) at 1﹕50000 scale. Scientia Agricultura Sinica, 2014, 47(16): 3195-3213. (in Chinese)

[11]Box G E P, Draper N R. Empirical Model Building and Response Surfaces. // Box G E P. Empirical Model-Building and Response Surfaces. New York: John Wiley & Sons, 1987: 74.

[12]Raisz E. Principles of cartography. McGraw-Hill, 1962: 315.

[13]Kraak M J. Cartography: Visualization of Spatial Data. Guilford Publication, 2010: 198.

[14]Slocum T A. Thematic Cartography and Geographic Visualization. Pearson Prentice Hall, 2009: 561.

[15]Longley P A. Geographic Information Systems and Science. Wiley, 2008: 536.

[16]Coronel C. Database Systems: Design, Implementation, and Management. Boston: CENGAGE Learning, 2012: 752.

[17]中华人民共和国国家标准. 国家基本比例尺地形图分幅和编号(GB/T 13989-92). 1992.

National Standard: Subdivision and numbering for the national primary scale topographic maps. People’s Republic of China, 1992. (in Chinese)

[18]中华人民共和国国家标准. 国家基本比例尺地形图分幅和编号(GB/T 13989-2012). 2012.

National Standard: Subdivision and numbering for the national primary scale topographic maps. People’s Republic of China. 2012. (in Chinese)

[19]中华人民共和国国家标准. 基础地理信息要素分类与代码(GB/T 13923-2006). 2006.

National Standard: Classification and Codes of Basic Geographic Information. People’s Republic of China. 2006. (in Chinese)

[20]张维理. 智能化海量空间信息分析与地图制图软件包IMAT设计与构建. 中国农业科学, 2014, 47(16): 3250-3263.

Zhang W L. Design and development of software package Intelligent Mapping Tools (IMAT). Scientia Agricultura Sinica, 2014, 47(16): 3250-3263. (in Chinese)
[1] XIAO DeShun, XU ChunMei, WANG DanYing, ZHANG XiuFu, CHEN Song, CHU Guang, LIU YuanHui. Effects of Rhizosphere Oxygen Environment on Phosphorus Uptake of Rice Seedlings and Its Physiological Mechanisms in Hydroponic Condition [J]. Scientia Agricultura Sinica, 2023, 56(2): 236-248.
[2] HOU JiangJiang,WANG JinZhou,SUN Ping,ZHU WenYan,XU Jing,LU ChangAi. Spatiotemporal Patterns in Nitrogen Response Efficiency of Aboveground Productivity Across China’s Grasslands [J]. Scientia Agricultura Sinica, 2022, 55(9): 1811-1821.
[3] WU Yue,SUI XinHua,DAI LiangXiang,ZHENG YongMei,ZHANG ZhiMeng,TIAN YunYun,YU TianYi,SUN XueWu,SUN QiQi,MA DengChao,WU ZhengFeng. Research Advances of Bradyrhizobia and Its Symbiotic Mechanisms with Peanut [J]. Scientia Agricultura Sinica, 2022, 55(8): 1518-1528.
[4] QIAO Yuan,YANG Huan,LUO JinLin,WANG SiXian,LIANG LanYue,CHEN XinPing,ZHANG WuShuai. Inputs and Ecological Environment Risks Assessment of Maize Production in Northwest China [J]. Scientia Agricultura Sinica, 2022, 55(5): 962-976.
[5] QIN ZhenHan,WANG Qiong,ZHANG NaiYu,JIN YuWen,ZHANG ShuXiang. Characteristics of Phosphorus Fractions and Its Response to Soil Chemical Properties Under the Threshold Region of Olsen P in Black Soil [J]. Scientia Agricultura Sinica, 2022, 55(22): 4419-4432.
[6] ZHANG JinRui,REN SiYang,DAI JiZhao,DING Fan,XIAO MouLiang,LIU XueJun,YAN ChangRong,GE TiDa,WANG JingKuan,LIU Qin,WANG Kai,ZHANG FuSuo. Influence of Plastic Film on Agricultural Production and Its Pollution Control [J]. Scientia Agricultura Sinica, 2022, 55(20): 3983-3996.
[7] WeiLi ZHANG,H KOLBE,RenLian ZHANG,DingXiang ZHANG,ZhanGuo BAI,Jing ZHANG,HuaDing SHI. Overview of Soil Survey Works in Main Countries of World [J]. Scientia Agricultura Sinica, 2022, 55(18): 3565-3583.
[8] Chao MA,YuBao WANG,Gang WU,Hong WANG,JianFei WANG,Lin ZHU,JiaJia LI,XiaoJing MA,RuShan CHAI. Research Progress of Direct Straw Return in Anhui Province over the Last Decade [J]. Scientia Agricultura Sinica, 2022, 55(18): 3584-3599.
[9] JIN MengJiao,LIU Bo,WANG KangKang,ZHANG GuangZhong,QIAN WanQiang,WAN FangHao. Light Energy Utilization and Response of Chlorophyll Synthesis Under Different Light Intensities in Mikania micrantha [J]. Scientia Agricultura Sinica, 2022, 55(12): 2347-2359.
[10] LIU XiaXia,LI Yang,WANG Jing,HUANG MingXia,BAI Rui,SONG Yang,HU Qi,ZHANG JiaYing,CHEN RenWei. Adaptability Evaluation of Staple Crops Under Different Precipitation Year Types in Four Ecological Regions of Inner Mongolia Based on APSIM [J]. Scientia Agricultura Sinica, 2022, 55(10): 1917-1937.
[11] ZHANG ChengQi,LIAO LuLu,QI YongXia,DING KeJian,CHEN Li. Functional Analysis of the Nucleoporin Gene FgNup42 in Fusarium graminearium [J]. Scientia Agricultura Sinica, 2021, 54(9): 1894-1903.
[12] MingHui HAN,BaoGuo LI,Dan ZHANG,Ying LI. Regenerative Agriculture-Sustainable Agriculture Based on the Conservational Land Use [J]. Scientia Agricultura Sinica, 2021, 54(5): 1003-1016.
[13] YUE HuiLi,ZHANG Zhao,ZHANG HuiJie,LIU ShengPing,ZHANG Jie. The Spatial and Temporal Evolution, Regional Correlations and Economic Coordinated Development Effect for Chinese Agricultural Science and Technology Level: Taking Provincial Public Agriculture Research Institutions as an Example [J]. Scientia Agricultura Sinica, 2021, 54(24): 5251-5265.
[14] TAO YouFeng,PU ShiLin,ZHOU Wei,DENG Fei,ZHONG XiaoYuan,QIN Qin,REN WanJun. Canopy Population Quality Characteristics of Mechanical Transplanting Hybrid Indica Rice with “Reducing Hills and Stabilizing Basic-Seedlings” in Low-Light Region of Southwest China [J]. Scientia Agricultura Sinica, 2021, 54(23): 4969-4983.
[15] WANG JunZheng,ZHANG Qi,GAO ZiXing,MA XueQiang,QU Feng,HU XiaoHui. Effects of Two Microbial Agents on Yield, Quality and Rhizosphere Environment of Autumn Cucumber Cultured in Organic Substrate [J]. Scientia Agricultura Sinica, 2021, 54(14): 3077-3087.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!