Читать книгу The Digital Agricultural Revolution - Группа авторов - Страница 47

References

Оглавление

1. Pathan, M., Patel, N., Yagnik, H., Shah, M., Artificial cognition for applications in smart agriculture: A comprehensive review. Artif. Intell. Agric., 4, 81–95, 2020.

2. Agriculture in India: Information About Indian Agriculture & Its Importance, IBEF, Last updated on Dec. 30, 2020, https://www.ibef.org/industry/agriculture-india.aspx.

3. Bhar, L.M., Ramasubramanian, V., Arora, A., Marwaha, S., Parsad, R., Era of Artificial Intelligence: Prospects for Indian Agriculture, Indian Farming, 69, 3, 2019.

4. Ferentinos, K.P., Deep learning models for plant disease detection and diagnosis. Comput. Electron. Agric., 145, 311–318, 2018.

5. Artificial Intelligence in Indian Agriculture, 20 February 2020, https://www.ciiblog.in/technology/artificial-intelligence-in-indian-agriculture/#:~-:text=In%20Andhra%20Pradesh%2C%20India%2C%20with,per%20hectare%20has%20been%20seen.

6. Amarendra, ICRISAT develop app and dashboard to help farmers find right time to sow crops, August 25, 2016.

7. Anonymous: Soil health monitoring in India, 2017, https://www.icfa.org.in/assets/doc/reports/Soil_Health_Management_in_India.pdf.

8. Sahoo, K.M. and Saraswat, V.N., Magnitude of losses in the yields of major crops due to weed competition in India. Pestic. Inf., 14, 1, 2–9, 1988.

9. Bhan, V.M., Sushilkumar, Raghuwanshi, M.S., Weed management in India. Indian J. Plant Prot., 17, 171–202, 1999.

10. Varshney, J.G. and PrasadBabu, M.B.B., Future scenario of weed management in India. Indian J. Weed Sci., 40, 1&2, 01–09, 2008.

11. Gharde, Y., Singh, P.K., Dubey, R.P., Gupta, P.K., Assessment of yield and economic losses in agriculture due to weeds in India, Crop Protection, 107, 12–18, 2018.

12. Rao, A.N., Singh, R.G., Mahajan, G., Wani, S.P., Weed research issues, challenges, and opportunities in India, Crop Protection, 134, Februrary 2018.

13. DWR, 2015. Vision 2050, Directorate of Weed Research. Indian Council of Agricultural Research, Jabalpur 482 004, Madhya Pradesh, 2015.

14. Singh, R., Das, T.K., Kaur, R., et al. Weed Management in Dryland Agriculture in India for Enhanced Resource Use Efficiency and Livelihood Security. Proc. Natl. Acad. Sci., India, Sect. B Biol. Sci., 88, 1309–1322, 2018, https://doi.org/10.1007/s40011-016-0795-y.

15. Singh, B., Dhaka, A.K., Pannu, R.K., Kumar, S., Integrated weed management-a strategy for sustainable wheat production—A review. Agric. Rev., 34, 243–255, 2013.

16. Rao, A.N., Wani, S.P., Ramesha, M., Ladha, J.K., Weeds and weed management of rice in Karnataka State, India. Weed Technol., 29, 1–17, 2015a.

17. Sunitha, N. and Kalyani, D.L., Weed management in maize (Zea mays L.)—A review. Agric. Rev., 33, 70–77, 2012.

18. Vijayakumar, M., Jayanthi, C., Kalpana, R., Ravisankar, D., Integrated weed management in sorghum [Sorghum bicolor (L.) Moench]—A review. Agric. Rev., 35, 79–91, 2014.

19. Annadurai, K., Puppala, N., Angadi, S., Chinnusamy, C., Integrated weed management in the groundnut-based intercropping system—A review. Agric. Rev., 31, 11–20, 2010.

20. Nithya, C., Chinnusamy, C., Ravisankar, D., Weed management in herbicide-tolerant transgenic cotton (Gossypium hisrsutum L.)—a review. Int. J. Agric. Sci. Res.(IJASR), 3, 277–284, 2013.

21. Rao, A.N. and Nagamani, A., Integrated weed management in India— Revisited. Indian J. Weed. Sci., 42, 1–10, 2010.

22. Agarwal, R.G., Water management key to sustainable agriculture growth in India New Delhi, Financial Express, Updated: Mar 14, 2019, 3:46 AM, https://www.financialexpress.com/opinion/water-management-key-to-sustainable-agriculture-growth-in-India/1515331/.

23. Timesnow, Global water crisis: Groundwater is being pumped 70% faster than expected in North India, research claims, New Delhi, 24 February 2019, https://www.timesnownews.com/mirror-now/in-focus/article/global-water-crisis-groundwater-is-being-pumped-70-faster-than-expected-in-north-india-research-claims/371528#:~:text=Scientists%20mentioned%20that%20the%20groundwater,than%20what%20was%20estimated%20earlier.&-text=Drying%20up%20of%20groundwater%20by,underground%20 water%20is%20much%20higher.

24. Baruah, A., Artificial Intelligence in Indian Agriculture – An Industry and Startup Overview, Emerald, The AI Research and Advisory Company, 2019.

25. Mary, A., Evangeline, S., Minnang, M.R., A beginners guide for machine learning models with python environment, lambert publication, Republic of Moldova, Chisinau-2068, 2019.

26. Digital Agriculture: Farmers in India are using AI to increase crop yields, Microsoft News Center India, 7 November, 2017, https://news.microsoft.com/en-in/features/ai-agriculture-icrisat-upl-india/.

27. Anonyms, Machine Learning, IBM Cloud Education, updated 15 July 2020.

28. Adisa, O., Botai, J., Adeola, A. et al., Application of artificial neural network for predicting maize production in South Africa. Sustainability, 11, 4, 1145–1227, 2019.

29. Chary, S., Mustaffha, S., Ismail, W.I.W., Determining the yield of the crop using artificial neural network method. Int. J. Eng. Adv. Technol., 9, 1, 2959–2965, 2019.

30. Gliever, C. and Slaughter, D.C., Crop verses weed recognition with artificial neural networks, ASAE paper., 01-3104, 2001, 1–12, 2001.

31. Maier, H.R., Dandy, G.C., Neural networks for the prediction and forecasting of water resources variables: a review of modelling issues and applications, Environmental Modelling & Software, 15, 1, 101–124, 2000.

32. Song, H. and He, Y., Crop nutrition diagnosis expert system based on artificial neural networks. third International Conference on Information Technology and Applications (ICITA’05), Sydney, NSW, 1 (2005), pp. 357–362, 2005.

33. Singh, A., Ganapathysubramanian, B., Singh, A.K., Sarkar, S., Machine learning for high-throughput stress phenotyping in plants. Trends Plant Sci., 21, 2, 110–124, 2016.

34. Pan, S.J. and Yang, Q., A survey on transfer learning. IEEE Trans. Knowl. Data Eng., 22, 10, 1345–1359, 2010.

35. Danziger, C., The Environmental Impacts of AI and IoT In Agriculture, aitrends, January 9, 2020, https://www.aitrends.com/ai-in-agriculture/the-environmental-impacts-of-ai-and-iot-in-agriculture/.

36. Abhishek, S., AI for farmers, Indian Express, Updated: November 26, 2020.

37. Jain, P., Artificial Intelligence in Agriculture: Using Modern Day AI to Solve Traditional Farming Problems, aAnalytics Vidhya, November 4, 2020, https://www.analyticsvidhya.com/blog/2020/11/artificial-intelligence-in-agriculture-using-modern-day-ai-to-solve-traditional-farming-problems/.

38. Big data and Agriculture: A Complete Guide, talend, 2020, https://www.talend.com/resources/big-data-agriculture/.

39. Dua, A.M., Artificial Intelligence in Indian Agriculture, Bhajan Global Impact Foundation, updated Feb 2020, http://bhajanfoundation.org/knowledge/artificial-intelligence-in-indian-agriculture/.

* Corresponding author: vijayjoseph@karunya.edu

The Digital Agricultural Revolution

Подняться наверх