Open Access

Research on the application method of agricultural machinery engineering automation based on multimodal characteristics


Cite

Edan, Y., Adamides, G., & Oberti, R. (2023). Agriculture automation. Springer Handbook of Automation, 1055-1078. Search in Google Scholar

Fawzia, H., Ahmeda, D., Mostafac, S. A., Fudzeec, M. F. M., Mahmoodd, M. A., Zeebareee, S. R., & Ibrahimf, D. A. (2019). A review of automated decision support techniques for improving tillage operations. REVISTA AUS, 26, 219-240. Search in Google Scholar

Tian, H., Wang, T., Liu, Y., Qiao, X., & Li, Y. (2020). Computer vision technology in agricultural automation—A review. Information Processing in Agriculture, 7(1), 1-19. Search in Google Scholar

Asadullin, N., Mukhametgaliev, F., Avkhadiev, F., Khismatullin, M., & Gainutdinov, I. (2021). Modern trends in technical support of agricultural producers. In BIO Web of Conferences (Vol. 37, p. 00016). EDP Sciences. Search in Google Scholar

Filip, M., Zoubek, T., Bumbalek, R., Cerny, P., Batista, C. E., Olsan, P., ... & Findura, P. (2020). Advanced computational methods for agriculture machinery movement optimization with applications in sugarcane production. Agriculture, 10(10), 434. Search in Google Scholar

Jha, K., Doshi, A., Patel, P., & Shah, M. (2019). A comprehensive review on automation in agriculture using artificial intelligence. Artificial Intelligence in Agriculture, 2, 1-12. Search in Google Scholar

Gianola, D. S., della Ventura, N. M., Balbus, G. H., Ziemke, P., Echlin, M. P., & Begley, M. R. (2023). Advances and opportunities in high-throughput small-scale mechanical testing. Current Opinion in Solid State and Materials Science, 27(4), 101090. Search in Google Scholar

Rana, A. K., Sharma, S., Dhawan, S., & Tayal, S. (2021). Towards secure deployment on the internet of robotic things: architecture, applications, and challenges. Multimodal Biometric Systems, 135-148. Search in Google Scholar

Sezer, N., Ari, I., Bicer, Y., & Koc, M. (2021). Superparamagnetic nanoarchitectures: Multimodal functionalities and applications.Journal of Magnetism and Magnetic Materials,538, 168300. Search in Google Scholar

Baillie, C. P., Lobsey, C. R., Antille, D. L., McCarthy, C. L., & Thomasson, J. A. (2018). A review of the state of the art in agricultural automation. Part III: Agricultural machinery navigation systems. In 2018 ASABE Annual International Meeting (p. 1). American Society of Agricultural and Biological Engineers. Search in Google Scholar

Mahmud, M. S. A., Abidin, M. S. Z., Emmanuel, A. A., & Hasan, H. S. (2020). Robotics and automation in agriculture: present and future applications. Applications of Modelling and Simulation, 4, 130-140. Search in Google Scholar

Man, Z., Yuhan, J. I., Shichao, L., Ruyue, C. A. O., Hongzhen, X. U., & Zhenqian, Z. H. A. N. G. (2020). Research progress of agricultural machinery navigation technology. Nongye Jixie Xuebao/Transactions of the Chinese Society of Agricultural Machinery, 51(4). Search in Google Scholar

Dong, S., Yuan, Z., Gu, C., Yang, F., Fu, H., Wang, C., ... & Yu, J. (2017). Research on intelligent agricultural machinery control platform based on multi-discipline technology integration. Transactions of the Chinese Society of Agricultural Engineering, 33(8), 1-11. Search in Google Scholar

Saleem, M. H., Potgieter, J., & Arif, K. M. (2021). Automation in agriculture by machine and deep learning techniques: A review of recent developments. Precision Agriculture, 22(6), 2053-2091. Search in Google Scholar

Shutske, J. M., Sandner, K. J., & Jamieson, Z. (2023). Risk assessment methods for autonomous agricultural machines: A review of current practices and future needs. Applied Engineering in Agriculture, 39(1), 109-120. Search in Google Scholar

Aby, G. R., & Issa, S. F. (2023). Safety of automated agricultural machineries: a systematic literature review. Safety, 9(1), 13. Search in Google Scholar

Chandavale, A., Dixit, A., Khedkar, A., & Kolekar, R. B. (2019, December). Automated systems for smart agriculture. In 2019 IEEE Pune Section International Conference (PuneCon) (pp. 1-6). IEEE. Search in Google Scholar

S. Kalaiselvi & G. Thailambal.(2024).Brain tumor diagnosis from MR images using boosted multi-gradient support vector machine classifier.Measurement: Sensors101071-. Search in Google Scholar

Mohammad Ehteram & Fatemeh Barzegari Banadkooki.(2023).A Developed Multiple Linear Regression (MLR) Model for Monthly Groundwater Level Prediction.Water(22), Search in Google Scholar

Ying Zhan,Dan Hu,Xianchuan Yu & Yufeng Wang.(2024).Hyperspectral Image Classification Based on Mutually Guided Image Filtering.Remote Sensing(5), Search in Google Scholar

Siyuan Zhang,Yinglan A,Libo Wang,Yuntao Wang,Xiaojing Zhang,Yi Zhu & Guangwen Ma.(2024). Monitoring of Low Chl-a Concentration in Hulun Lake Based on Fusion of Remote Sensing Satellite and Ground Observation Data.Remote Sensing(10). Search in Google Scholar

eISSN:
2444-8656
Language:
English
Publication timeframe:
Volume Open
Journal Subjects:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics