Open Access
Issue |
E3S Web of Conf.
Volume 547, 2024
International Conference on Sustainable Green Energy Technologies (ICSGET 2024)
|
|
---|---|---|
Article Number | 02003 | |
Number of page(s) | 10 | |
Section | Electronic and Electrical Engineering | |
DOI | https://doi.org/10.1051/e3sconf/202454702003 | |
Published online | 09 July 2024 |
- M. J. Villasenor-Aguilar, J. A. Padilla-Medina, J. Prado-Olivarez, S. Martinez-Diaz, I.-I. Mendez-Gurrola, A. I. Barranco-Gutierrez, Fuzzy Classification of Color Carrots (Dacus Carota) using Raspberry Pi towards Farming 4.0, in 13th IEEE Annual Computing and Communication Workshop and Conference, (2023). [Google Scholar]
- L. Xu, S. Liu, D. Li, Key technology of south sea pearl industry management information service platform based on the internet of things. in IFIP Advances in Information and Communication Technology. (2012). [Google Scholar]
- P. Visconti, N. I. Giannoccaro, R. de Fazio, S. Strazzella, D. Cafagna, IoT-oriented software platform applied to sensors-based farming facility with smartphone farmer app. Bulletin of Electrical Engineering and Informatics. 9, 3 (2020). [Google Scholar]
- M. A. Uddin, U. Kumar Dey, M. Akter, Proposing A Cloud and Edge Computing Based Decision Supportive Consolidated Farming System by Sensing Various Effective Parameters using IoT, in IEEE International IOT, Electronics and Mechatronics Conference, IEMTRONICS, (2022). [Google Scholar]
- H. Youness, G. Ahmed, B. E. Haddadi, Machine Learning-based Smart Irrigation Monitoring System for Agriculture Applications using Free and Low-Cost IoT Platform, in International Conference on Microelectronics, ICM, (2022). [Google Scholar]
- P. Visconti, R. de Fazio, P. Primiceri, D. Cafagna, S. Strazzella, N. I. Giannoccaro, A solar-powered fertigation system based on low-cost wireless sensor network remotely controlled by farmer for irrigation cycles and crops growth optimization. International Journal of Electronics and Telecommunications. 66, 1 (2020). [Google Scholar]
- K. Adithya and R. Girimurugan, Benefits of IoT in automated systems, Integration of Mechanical and Manufacturing Engineering with IoT: A Digital Transformation, (Scrivener Wiley, USA, 2023). [Google Scholar]
- S. Jegadeesan, M. Navaneetha, P. Poovizhi, S. Pavithra, P. Santhiya, Blockchain based Lightweight and Secure Aggregation Scheme for Smart Farming, in Second International Conference on Sustainable Computing and Data Communication Systems, ICSCDS Proceedings, (2023). [Google Scholar]
- Pandya, O. Odunsi, C. Liu, A. Cuzzocrea, J. Wang, Adaptive and Efficient Streaming Time Series Forecasting with Lambda Architecture and Spark, in 2020 IEEE International Conference on Big Data Proceedings, (2020). [Google Scholar]
- L.-C. Liu, D. J. A. Rustia, T.-T. Lin, Remote surveillance video activity recognition using spatiotemporal convolutional neural networks for greenhouse workload analysis, in American Society of Agricultural and Biological Engineers Annual International Meeting, ASABE, (2021). [Google Scholar]
- M. A. Tawfeek, N. Yanes, L. Jamel, G. Aldehim, M. A. Mahmood, Adaptive Deep Learning Model to Enhance Smart Greenhouse Agriculture. Computers, Materials and Continua. 77, 2 (2023). [Google Scholar]
- R. Girimurugan, P. Selvaraju, P. Jeevanandam, M. Vadivukarassi, S. Subhashini, N. Selvam, S.K. Ahammad, S. Mayakannan, S.K. Vaithilingam, Application of Deep Learning to the Prediction of Solar Irradiance through Missing Data. International Journal of Photoenergy. (2023). [Google Scholar]
- Y. Juan, Z. Ke, Z. Chen, D. Zhong, W. Chen, L. Yin, Rapid density estimation of tiny pests from sticky traps using Qpest RCNN in conjunction with UWB-UAV-based IoT framework. Neural Comput Appl. (2023). [Google Scholar]
- P.-Y. Kow, M.-H. Lee, W. Sun, M.-H. Yao, F.-J. Chang, Integrate deep learning and physically-based models for multi-step-ahead microclimate forecasting. Expert Syst Appl. 210, (2022). [Google Scholar]
- S. Mayakannan, M. Saravanan, R. Arunbharathi, V. P. Srinivasan, S. V Prabhu, and R. K. Maurya, Navigating Ethical and Legal Challenges in Smart Agriculture: Insights from Farmers, (CRC Press, Boca Raton, 2023). [Google Scholar]
- B. Karthikeyan, G. Praveen Kumar, R. Saravanan, Alberto Coronas, Ramadas Narayanan, R. Girimurugan, Solar powered cascade system for sustainable deep-freezing and power generation-exergoeconomic evaluation and multi-objective optimization for tropical regions. Thermal Science and Engineering Progress. 50, (2024). [Google Scholar]
- N. Fatima, S. A. Siddiqui, A. Ahmad, IoT-based Smart Greenhouse with Disease Prediction using Deep Learning. International Journal of Advanced Computer Science and Applications. 12, (2021). [CrossRef] [Google Scholar]
- Gejea, S. Mayakannan, R. M. Palacios, A. A. Hamad, B. Sundaram, W. Alghamdi, A Novel Approach to Grover’s Quantum Algorithm Simulation: Cloud-Based Parallel Computing Enhancements, in Proceedings of the 4th International Conference on Smart Electronics and Communication, ICOSEC, (2023). [Google Scholar]
- Morales-García, Juan, Andrés Bueno-Crespo, Raquel Martínez-España, Francisco J. García, Sergio Ros, Julio Fernández-Pedauyé, José M. Cecilia SEPARATE: A tightly coupled, seamless IoT infrastructure for deploying AI algorithms in smart agriculture environments. Internet of Things. 22, (2023). [Google Scholar]
- W. Alghamdi, S. Mayakannan, G. A. Sivasankar, J. Singh, B. Ravi Naik, C. Venkata Krishna Reddy, Turbulence Modeling Through Deep Learning: An In-Depth Study of Wasserstein GANs, in Proceedings of the Fourth International Conference on Smart Electronics and Communication, ICOSEC, (2023). [Google Scholar]
- M. Zhu, J. Shang, Remote Monitoring and Management System of Intelligent Agriculture under the Internet of Things and Deep Learning. Wirel Commun Mob Comput. (2022). [Google Scholar]
- P. Karthikeyan, M. Manikandakumar, D. K. Sri Subarnaa, P. Priyadharshini, Weed identification in agriculture field through IOT. in Advances in Intelligent Systems and Computing. (2021). [Google Scholar]
- T. Frikha, J. Ktari, B. Zalila, O. Ghorbel, N. B. Amor, Integrating blockchain and deep learning for intelligent greenhouse control and traceability. Alexandria Engineering Journal. 79, (2023). [Google Scholar]
- H. Li, Y. Guo, H. Zhao, Y. Wang, D. Chow, towards automated greenhouse: A state of the art review on greenhouse monitoring methods and technologies based on internet of things. Comput Electron Agric. 191, (2021). [Google Scholar]
- V. Deepika, A. Kalaiselvi, G. Dhivyaarthi, Monitoring of Hydroponics Plant and Prediction of Leaf Disease using IOT, in 2021 International Conference on Advancements in Electrical, Electronics, Communication, Computing and Automation, ICAECA, (2021). [Google Scholar]
- E. Elango, A. Hanees, B. Shanmuganathan, M. I. Kareem Basha, Precision Agriculture: A Novel Approach on AI-Driven Farming. in Signals and Communication Technology. (2024). [Google Scholar]
- R. Kavitha, T. Shanthi, P. Maithili, J. Roopika, K. Naveen Kumar, K. Saravanakumar, Deep Learning and Internet of Things based Detection of Diseases and Prediction of Pesticides in Fruits, in Seventh International Conference on Trends in Electronics and Informatics Proceedings, ICOEI, (2023). [Google Scholar]
- K. Khuwaja, A. Aliza, N. Mukhtiar, R. Tarcă, D. Noje, M. Juman, B. Ali, Sustainable Agriculture: An IoT-Based Solution for Early Disease Detection in Greenhouses, In 17th International Conference on Engineering of Modern Electric Systems (EMES), (2023). [Google Scholar]
- R. Cantini, F. Marozzo, A. Orsino, Deep Learning Meets Smart Agriculture: Using LSTM Networks to Handle Anomalous and Missing Sensor Data in the Compute Continuum. in Internet of Things. (2024). [Google Scholar]
- Subeesh, C. R. Mehta, Automation and digitization of agriculture using artificial intelligence and internet of things. Artificial Intelligence in Agriculture. 5, (2021). [Google Scholar]
- R.K.G. Radhakrishnan, U. Marimuthu, P.K. Balachandran, A.M.M. Shukry, T. Senjyu, an intensified marine predator algorithm (MPA) for designing a solar-powered BLDC motor used in EV systems. Sustainability. 14, (2022). [Google Scholar]
- P. Indira, I.S. Arafat, R. Karthikeyan, S. Selvarajan, P.K. Balachandran, Fabrication and investigation of agricultural monitoring system with IoT & AI. SN Applied Sciences. 5, (2023). [CrossRef] [Google Scholar]
Current usage metrics show cumulative count of Article Views (full-text article views including HTML views, PDF and ePub downloads, according to the available data) and Abstracts Views on Vision4Press platform.
Data correspond to usage on the plateform after 2015. The current usage metrics is available 48-96 hours after online publication and is updated daily on week days.
Initial download of the metrics may take a while.