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The application of agricultural big data makes China's modern agriculture realize leap-forward development

DateTime:2018-08-30 15:46Views: Share to:
農業大數據的應用使我國現代農業實現跨越式發展

The importance of agricultural big data to smart agriculture

With the advent of the technological era, with the Internet, multimedia, cloud computing, etc. as the main representatives, the process of China's information development has been promoted, and cloud computing has also greatly promoted the progress of computing power. Imagine if farm managers can keep track of weather change data, market supply and demand data, crop growth data, etc., farm managers and agrotechnical experts can observe the real scene and related data on the farm without leaving the house, and accurately determine whether the crops are The fertilization, watering or spraying can not only avoid the decline of production caused by natural factors, but also avoid economic losses caused by the imbalance between market supply and demand.


In the era of agricultural big data, we can not only regulate agricultural production through the establishment of a comprehensive data platform, but also record and analyze the dynamic changes in the process of agricultural planting and aquaculture, and the process of agricultural product circulation. Through analysis of data and experience, we will formulate a series of regulation and management measures. To make agriculture efficient and orderly development.

  • The role of the agricultural big data platform

After years of development, we have developed a multi-faceted and multi-disciplinary agricultural information system, and built many different levels of data resources for different fields, forming a huge wealth of information resources. However, due to interests and other reasons, these data lack a unified standard and norm before, the information is not shared, and the information resources are out of line with the business, which inevitably leads to low data utilization and redundant information. The emergence of the farm intelligent management service platform will be able to better standardize the data standards and play a huge role in improving the farm management level.

Application of agricultural big data platform

one、Agricultural resource management

Based on GIS and remote sensing technology, establish a digital map of the farm to make scientific decision-making and refined management of the planting land on the farm.


The basic geographic information provided by the Global Positioning System (GPS) is based on a Geographic Information System (GIS) to establish a digital map of the farm. Using remote sensing (RS) technology to perceive the on-the-ground information (earth quality, crops) in the electronic map, comprehensively grasp the range of agricultural planting land, and real-time understanding of comprehensive information such as soil conditions and atmospheric environment in the region and analyze the planting region through the analysis of information differences. Divided into different management areas, targeted planning, real-time query, analysis and decision-making functions of planting agricultural resources.


two、Crop production management

Integrate traditional statistical data and agricultural resource management information to carry out targeted planting management of crops on different farms.


Quantitatively obtain information on environmental factors affecting crop growth (such as soil fertility, water content, seedlings, pests, etc.) in different regions where planting factors are different, and analyze the causes of differences in yields of the blocks, and adopt technically feasible and economical Effective farming practices, differentiated treatment, and “precise agriculture” as needed.

three、Crop monitoring, estimation of production

Remote sensing (RS) technology is used to monitor the growth of crops, take effective measures as needed, and accurately estimate crop yields and harvesting information based on comprehensive analysis of various data.

four、Pest warning

Using GIS, remote sensing, hyperspectral analysis and other techniques to analyze, predict and prevent plant diseases and insect pests.

five、Agricultural product quality safety management

Integrate the production environment, production archives, and test data to form traceability data for agricultural product quality and safety.

six、Origin environmental data

The use of remote sensing (RS), sensors and other technical means to comprehensively grasp the environmental data of agricultural production areas, and form a historical record.

seven、Production file data

Record the production of agricultural products, and record various agricultural operation information of agricultural products during the growth process.

eight、Agricultural product testing data

Record information such as company qualifications, test reports, and certification of product quality.

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