Affiliation:
1. 1 Shandong Shuguang Zhao Information Technology Co., LTD ., Rizhao , China
Abstract
Abstract
China is in the critical period of “four synchronous development” of industrialization, informatization, urbanization, and agricultural modernization, so it is urgent to find a correct, scientific, and reasonable development strategy for modern agricultural products and promote the development of big data agriculture. In this paper, we use big data technology to determine the algorithm model of agricultural big data technology and the application system of the agricultural Internet of Things and argue for big data for agricultural planting technology, agricultural economic management, and agricultural industry upgrading in order to find the optimal strategy for the development of modern agriculture in China. As of the statistics at the end of 2019, China’s arable land transfer area has reached 440 million mu, accounting for 30.8% of the total contracted arable land area. With the subsequent land transfer entering a standardized and normalized stage, the scale operation of agricultural production is bound to speed up. In recent years, due to the application of big data technology in agricultural production, China’s modern agricultural industry has developed rapidly, with the mechanization rate of farming at around 86% and the contribution rate of science and technology at over 67%, and agricultural production has gained breakthroughs nationwide. Thus, it can be seen that the modern agricultural industry in the context of big data will usher in new development opportunities.
Subject
Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science
Reference12 articles.
1. Chang, H. P. (2017). The Plight of Agricultural Industrialization and the Path to Solve. Journal of Tianshui College of Administration.
2. Sabir, Z., Raja, M. A. Z., Guirao, J. L. G., et al. (2020). A neuro-swarming intelligence-based computing for second order singular periodic non-linear boundary value problems. Frontiers in Physics, 8, 224.
3. Kaseng, F., Lezama, P., Inquilla, R., et al. (2020). Evolution and advance usage of Internet in Peru. 3c TIC: cuadernos de desarrollo aplicados a las TIC, 9(4), 113-127.
4. GPrakash, Apravin. (2012). RFID based mobile cold chain management system for warehousing. Procedia Engineering, 38(6), 964-969.
5. Kaloxylos, A., Eigenmann, R., Teve, F., et al. (2012). Farm management systems and the Future Internet. Computers & Electronics in Agriculture, 89(5), 130-144.