Development of portable user-interactive holographic information collector for agricultural product markets

Shiwei Xu, Denghua Li, Yongen Zhang, Wei Chen, Jiayu Zhuang, Jiajia Liu, Shengwei Wang

Abstract


The efficient and accurate collection of agricultural product market information serves as the basis for the effective regulation of agricultural product markets. To achieve a comprehensive, accurate, and timely collection of agricultural product market information, this study puts forth a technique for collecting holographic information of agricultural product markets. A portable human-machine interaction device with an Advanced RISC (reduced instruction set computer) Machines (ARM)-based processor as the core is developed. Holographic information such as agricultural product market trading time, trading place, product name, price, and trading volume can be collected. Via embedded technology and component technology, innovative agricultural product market positioning, and matching, standardized collection, and data processing, and in combination with intelligent algorithms for analysis and early warning, a mobile application terminal for information collection is developed, namely, a holographic information collector for agricultural product markets (named Nongxincai). By using a layered structure, the hardware integrates microprocessor, storage, power, application and communication interface, and human-machine interaction modules. The device has the advantages of miniaturization, the whole-machine power consumption of less than 0.5 W, and continuous operating time of at least 10 h. A supporting software system for Nongxincai has also been developed, in which Microsoft Windows Mobile 6.5 is employed as the operating system, and the CPU frequency is up to 600 MHz. This configuration fully meets the computing requirements of map processing and large-volume data processing and has high compatibility. Nongxincai has been popularized and applied in 12 provinces/municipalities in China. It has played an important role in the monitoring and early warning of different varieties of agricultural products and target prices of soybean and cotton.
Keywords: agricultural product market, holographic information, portable, user-interactive, information collector, monitoring and early warning
DOI: 10.25165/j.ijabe.20201303.5845

Citation: Xu S W, Li D H, Zhang Y E, Chen W, Zhuang J Y, Liu J J, et al. Development of portable user-interactive holographic information collector for agricultural product markets. Int J Agric & Biol Eng, 2020; 13(3): 143–153.

Keywords


agricultural product market, holographic information, portable, user-interactive, information collector, monitoring and early warning

Full Text:

PDF

References


Huang J K, Yang J, Chou H G, Xu Z G. The great ups and downs of grain prices of this round: The main reasons and the future trend. Management Word, 2009; 1: 72–78.

Xu S W, Li G Q, Li Z M. China agricultural outlook for 2015–2024 based on China Agricultural Monitoring and Early-warning System (CAMES). Journal of Integrative Agriculture, 2015; 14(9): 1889–1902.

Pang Z B, Chen Q, Han W L, Zheng L R. Value-centric design of the internet-of-things solution for food supply chain: Value creation, sensor portfolio and information fusion. Information Systems Frontiers, 2015; 17: 289–319.

Zhang B, Zhang W, Qi L Q, Fu H B, Yu L, Li R, et al. Information acquisition system of multipoint soil surface height variation for profiling mechanism of seeding unit of precision corn planter. Int J Agric & Biol Eng, 2018; 11(6): 58–64.

Vijay G, Bdira E B A, Ibnkahla M. Cognition in wireless sensor networks: A perspective. IEEE sensors journal, 2011; 11(3): 582–592.

Deng M X, Di L P, Han W G, Yağcı A L, Peng C M, Heo G. Web-service-based monitoring and analysis of global agricultural drought. Photogrammetric Engineering & Remote Sensing, 2013; 79(10): 929–943.

Yin Y X, Chen L P, Meng Z J, Li B, Luo C H, Fu W Q, et al. Design and evaluation of a maize monitoring system for precision planting. Int J Agric & Biol Eng, 2018; 11(4): 186–192.

Walter A, Finger R, Huber R, Buchmann N. Opinion: Smart farming is key to developing sustainable agriculture. PNAS, 2017; 114(24): 6148–6150.

Qin Z, Compton B G, Lewis J A, Buehler M J. Structural optimization of 3D-printed synthetic spider webs for high strength. Nature Communications, 2015; 6: 7038.

Yu H, Yang J L, Sun Y X. Energy absorption of spider orb webs during prey capture: A mechanical analysis. Journal of Biomimetic Engineering, 2015; 12(3): 453–463.

Liu J G, Zhao C J, Yang G J, Yu H Y, Zhao X Q, Xu B, et al. Review of field-based phenotyping by unmanned aerial vehicle remote sensing platform. Transactions of the CSAE, 2016; 32(24): 98–106. (in Chinese)

He Y, Nie P C, Liu F. Advancement and trend of internet of things in agriculture and sensing instrument. Transactions of the CSAM, 2013; (10): 216–226. (in Chinese)

Misra S, Krishna P V, Saritha V, Agarwal H, Shu L, Obaidat M S. Efficient medium access control for cyber–physical systems with heterogeneous networks. IEEE systems journal, 2015; 9(1): 22–30.

Ruiz G L, Lunadei L. The role of RFID in agriculture: applications, limitations and challenges. Computers and Electronics in Agriculture, 2011; 1(1): 42–50.

Oliveira J L., Xin H W, Wang K L, Zhao Y. Evaluation of nesting behavior of individual laying hens in an enriched colony housing by using RFID technology. Int J Agric & Biol Eng, 2019; 12(6): 7–15.

Ahumada O, Villalobos J R, Mason A N. Tactical planning of the production and distribution of fresh agricultural products under uncertainty. Agricultural Systems, 2012; 112: 17–26.

Li Z R. Design of aquaculture network monitoring system based on embedded Linux. Journal of Agricultural Mechanization Research, 2019; 41(11): 229–233. (in Chinese)

Sun X, Yang Y S, Liu C X, Guo H P. Design and development of near field communication intelligent data acquisition terminal system in fresh agricultural product supply chain. Transactions of the CSAE, 2015; 31(8): 200–206. (in Chinese)

Xu S W. Agricultural big data and monitoring and early warning of

agricultural products. Journal of Agricultural Science and Technology, 2014; 16(5): 14–20. (in Chinese)

United States Department of Agriculture. https://www.usda.gov/.

Australian Department of Agriculture. https://www.agriculture.gov.au/.

Australian Bureau of Statistics. https://www.abs.gov.au/.

Commonwealth Scientific and Industrial Research Organisation (CSIRO). https://www.csiro.au/

Agriculture, forestry and fisheries. http://www.maff.go.jp/.

Zhao Y S, Wang X D, Zhao A P, Ge X S. Research on the construction of information system of foreign agricultural products market. World Agriculture, 2012; 10: 36–41.

Singh G, Junghare A, Chokhani P. Multiutility E-controlled cum voice operated farm vehicle. International Journal of Computers & Applications, 2010; 1(13): 109–113.

Plauche M, Nallasamy U, Pal J, Wooters C, Ramachandran D. Speech recognition for illiterate access to information and technology. 2006 International Conference on Information and Communication Technologies and Development, Berkeley: IEEE, 2006; pp.83–92.

Daniel S, Daniel P, Jochen S. REST-based meta web services in mobile application frameworks. The Fourth International Conference on Mobile Ubiquitous Computing, Systems, Services and Technologies (UBICOMM2010), 2010; pp.170–175.

Owusu A B, Yankson P W K, Frimpong S. Small holder farmers' knowledge of mobile telephone use: Gender perspectives and implications for agricultural market development. Progress in Development Studies, 2018; 18(1): 36–51.

Nakasone E, Torero M, Minten B. The power of information: The ICT revolution in agricultural development. Annual Review of Resource Economics, 2013; 6(1): 533–550.

See L D, Fritz S, You L Z. Improved global cropland data as an essential ingredient for food security. Global Food Security, 2015; 4: 37–45.

Sydney A, Scoglio C, Gruenbacher D. Optimizing algebraic connectivity by edge rewiring. Applied Mathematics and computation, 2013; 219(10): 5465–5479.

Song A B, Wan Y T, Gong H, Xue Y Y. Research on storage and query of large-scale multidimensional data. Computer Engineering and Applications, 2016; 52(13): 25–31.

Qu B, Wu Z Z. Design of ARM based embedded operating system micro

kernel. Applied Mechanics and Materials, 2013; 347-350: 1799–1803.

Zhang S R, Zheng W G, Shen C J, Xing Z. Agricultural product price Information collection terminal of embedded portable wireless. Computer Engineer and Design, 2012; 33(2): 514–518.

Zheng L X. Embedded Linux system design. Beijing: Beijing University of Aeronautics and Astronautics Press, 2008; pp.195–200.

Yuan J P, Chen K, Huang J, Li L H, Yang Y, Zhu D H, et al. A novel generic concept hierarchy encoding algorithm. Computer Engineering, 2006; 32(12): 17–21. (in Chinese)

Cui Y, Duan F, Zhang Y J. Scene classification based on coding layer feature combination. Journal of Jilin University (Engineering and Technology Edition), 2013; 43: 450–454. (in Chinese)

Xin L Y, Wang L J, Song Z W, Jia B H. Research on popularization and application of “Nongxincai” software in Tianjin. Tianjin Agricultural Sciences, 2017; 23(6): 45–47. (in Chinese)

Liu J H. Research on popularization and application of "portable market information collector for agricultural products" in Fujian Province. Fujian Agricultural Science and Technology, 2015; 8: 82–84. (in Chinese)

Li Y, Wang H L, Zhang Y, Zhang H F, Zhang Y, Wang X N. The analysis of vegetable prices fluctuation in Heilongjiang Province based on the data of "agricultural credit". Vegetables, 2018; 1: 66–70. (in Chinese)

Cheng L Q. Research on the effect of data constraint on data quality. Journal of Yangtze University (Nature Science Edition), 2011; 8(5): 100–102. (in Chinese)

Liu J J, Cao W J. Data quality management strategy in large data environment. Software Guide, 2017; 16(3): 176–179. (in Chinese)

Du Y X, Zhang Z T, Li B S, Qin L. Design of Hulun Lake environment information acquisition system based on letts criterion improved algorithm. Modern Electronics Technique, 2016; 39(24): 30–33.

Wu Y L, Yang Na, Pan X H, Wang W H. Temperature and humidity detection system based on letts criterion and data fuse. Bulletin of Science and Technology, 2017; 33(3): 96–99. (in Chinese)

Zeng W, Zhao Y H. Parallel eigenvalue calculation based on spectrum division method for sparse matrix. Journal on Numerical Methods and Computer Applications, 2015; 36(2): 132–141. (in Chinese)

Yang G L, Luo L, Lu H R, Feng Y Q, Liang L M. Face recognition based on matrix regression with low rank and e-p sparse constraints. Computer Science, 2015; 42: 180–184. (in Chinese)




Copyright (c) 2020 International Journal of Agricultural and Biological Engineering

Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.

2023-2026 Copyright IJABE Editing and Publishing Office