Quinoa Traceable System Based on Internet of Things

  • Guowei Wang
  • Yu Sun
  • Jing Chen
  • Yang Jiao
  • Chuanhong ZhangEmail author
  • Haijiao Yu
  • Chan Lin
  • Guogang Zhao
Conference paper
Part of the IFIP Advances in Information and Communication Technology book series (IFIPAICT, volume 545)


Quinoa is known as the lost ancient “gold” nutrition, along with the increase of domestic demand, in recent years at home also growing acreage, in order to solve the quinoa products traceability of quinoa planting, pesticides fertilizer use and processing data information acquisition, storage and processing, and other issues. This article USES the Internet of things technology, ZigBee development technology and space technology such as fuzzy data mining, based on the Internet of things of quinoa traceability system, realized the quinoa cultivation, production and transportation, warehousing and other real-time data acquisition, transmission, processing, and text messages warning and quinoa disease quinoa products full traceability, etc. This project research has completed a preliminary test in the experimental base, basic functions required to complete the project, can achieve the goal of the quinoa products traceability.


IOT Quinoa Traceability system 



The study was conducted by 2016 jilin province rural special project supported by the modern agricultural development《Demonstration and Application of Traceable System of Quinoa Products Based on Internet of Things and 3S Technology》.


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Copyright information

© IFIP International Federation for Information Processing 2019

Authors and Affiliations

  • Guowei Wang
    • 1
  • Yu Sun
    • 1
  • Jing Chen
    • 1
  • Yang Jiao
    • 2
  • Chuanhong Zhang
    • 3
    Email author
  • Haijiao Yu
    • 4
  • Chan Lin
    • 4
  • Guogang Zhao
    • 4
  1. 1.College of Information TechnologyJilin Agricultural UniversityChangchunChina
  2. 2.Sixth Middle School in ChangchunChangchunChina
  3. 3.Changchun Sci-tech UniversityChangchunChina
  4. 4.The City College of JLJUChangchunChina

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