ISSN: 2222-6990
Open access
Through analyzing the current situation and problems of Chongqing duck industry, this study discusses the application and development of ecological breeding strategy under the background of intelligent breeding. Drawing on the practice of Pingyalian project, this study emphasizes the importance and feasibility of intelligent transformation of the duck industry by combining the new generation of information technologies such as cloud computing, big data, and the Internet of Things. The study points out the promotion of the ecological breeding industry, the use of intelligent monitoring and management technology, the strengthening of disease prevention and control, the construction of the integration platform of the industrial chain, and the strengthening of policy and financial support. Furthermore, this study explores the positive effects of smart breeding on increasing rural community participation, promoting rural revitalization, and achieving sustainable development goals. This study provides development suggestions for the Chongqing duck industry through qualitative research methods and references for researchers and practitioners in related fields.
Henchion, M. M., Regan, Á., Beecher, M., & MackenWalsh, Á. (2022). Developing ‘Smart’Dairy Farming Responsive to Farmers and Consumer-Citizens: A Review. Animals, 12(3), 360.
Javaid, M., Haleem, A., Singh, R. P., & Suman, R. (2022). Enhancing smart farming through the applications of Agriculture 4.0 technologies. International Journal of Intelligent Networks, 3, 150-164.
Karunathilake, E. M. B. M., Le, A. T., Heo, S., Chung, Y. S., & Mansoor, S. (2023). The path to smart farming: Innovations and opportunities in precision agriculture. Agriculture, 13(8), 1593.
Kim, G. M. (2021). A case study on smart livestock with improved productivity after information and communications technologies introduction. International Journal of Advanced Culture Technology, 9(1), 177-182.
Khan, M. H. U., Wang, S., Wang, J., Ahmar, S., Saeed, S., Khan, S. U., & Feng, X. (2022). Applications of Artificial Intelligence in Climate-Resilient Smart-Crop Breeding. International Journal of Molecular Sciences, 23(19), 11156.
Kwak, K. S., Rho, S. Y., Won, J. H., Kim, T. H., Baek, J. H., Lee, S. G., ... & Choi, I. C. (2020). Survey on the insect smart farm breeding farm. In Proceedings of the Korean Society of Computer Information Conference (pp. 577-578). Korean Society of Computer Information.
Kwon, K. S., Yang, K., Kim, J. B., Kim, J. K., Jang, D., Choi, S., & Lee, S. Y. (2021). Investigations and Analyses of Duck Breeding Facilities in Jeollanam-do Province, Korea. Journal of The Korean Society of Agricultural Engineers, 63(1), 1-9.
Lee, S. Y., Lee, I. B., Yeo, U. H., Kim, J. G., & Kim, R. W. (2022). Machine learning approach to predict air temperature and relative humidity inside mechanically and naturally ventilated duck houses: application of recurrent neural network. Agriculture, 12(3), 318.
Liu, L., Liu, P., Ren, W., Zheng, Y., Zhang, C., & Wang, J. (2018). The Traceability Information Management Platform of Duck Product Industry Chain. In Cloud Computing and Security: 4th International Conference, ICCCS 2018, Revised Selected Papers, Part VI 4 (pp. 144-153). Springer International Publishing.
Naqvi, R. Z., Siddiqui, H. A., Mahmood, M. A., Najeebullah, S., Ehsan, A., Azhar, M., & Asif, M. (2022). Smart breeding approaches in post-genomics era for developing climate-resilient food crops. Frontiers in Plant Science, 13, 972164.
Park, J. K., & Park, E. Y. (2022). Real-time monitoring system for tracking and identification of poultry based on RFID. Mathematical Statistician and Engineering Applications, 71(3), 446-455.
Relf-Eckstein, J. E., Ballantyne, A. T., & Phillips, P. W. (2019). Farming Reimagined: A case study of autonomous farm equipment and creating an innovation opportunity space for broadacre smart farming. NJAS-Wageningen Journal of Life Sciences, 90, 100307.
Su, Y., & Wang, X. (2021). Innovation of agricultural economic management in the process of constructing smart agriculture by big data. Sustainable Computing: Informatics and Systems, 31, 100579.
Walter, A., Finger, R., Huber, R., & Buchmann, N. (2017). Smart farming is key to developing sustainable agriculture. Proceedings of the National Academy of Sciences, 114(24), 6148-6150.
Wang, W. H., Guo, Z. J., Li, J. Q. (2021). The application of intelligent breeding in the mutton sheep industry. Journal of Animal Husbandry and Veterinary Medicine, 40(4), 81-84.
Wigger, A. (2023). The new EU industrial policy and deepening structural asymmetries: Smart specialisation not so smart. JCMS: Journal of Common Market Studies, 61(1), 20-37.
Youfu, L. I. U., Deqin, X. I. A. O., Jiaxin, Z. H. O. U., Zhiyi, B. I. A. N., Shengqiu, Z. H. A. O., Yigui, H. U. A. N. G., & Wence, W. A. N. G. (2023). Status Quo of Waterfowl Intelligent Farming Research Review and Development Trend Analysis. Smart Agriculture, 5(1), 99.
Zhang, Y. J., Sun, C., Wang, S., Liu, S. G., & Su, W. (2022). Investigation and analysis of the continuing education mode of intelligent poultry breeding practitioners. China Agricultural Machinery Chemical News, 43(12), 215-220.
Zhang, C., Jiang, S., Tian, Y., Dong, X., Xiao, J., Lu, Y., & Xia, Z. (2023). Smart breeding driven by advances in sequencing technology. Modern Agriculture, 1(1), 43-56.
(Hongyue et al., 2024)
Hongyue, F., Xianhang, X., Youcheng, L., Huimin, Z., Ruyan, Z., & Yaleng, G. (2024). The Development Strategy of Chongqing Duck Industry Under the Background of Intelligent Breeding: Take Pingyalian Project as an Example. International Journal of Academic Research in Business and Social Sciences, 14(3), 582–588.
Copyright: © 2024 The Author(s)
Published by HRMARS (www.hrmars.com)
This article is published under the Creative Commons Attribution (CC BY 4.0) license. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this license may be seenavc at: http://creativecommons.org/licences/by/4.0/legalcode