Enhancing Crop Water Management: A Logistic Regression Approach Integrated with IoT for Smart Irrigation
DOI:
https://doi.org/10.58599/IJSMCSE.2024.1104Keywords:
Logistic regression, Water management, Precision agriculture, Crop water needs, Smart irrigation, Internet of ThingsAbstract
This study explores the integration of logistic regression with Internet of Things (IoT) technology to optimize water management in agriculture. Efficient irrigation systems are vital for boosting crop yields while preserving water resources, which is becoming more important due to the growing demand for food and the challenges caused by climate change. The suggested method makes use of Internet of Things (IoT) sensors to gather weather predictions, soil moisture levels, humidity, and temperature readings in real time. In order to determine how much water crops will use, this data is utilized to train a logistic regression model. Supervised learning is made possible by generating labelled data through the analysis of expert knowledge and past irrigation practices. The model's performance is evaluated using metrics such as accuracy, precision, recall, and F1-score. Once validated, the logistic regression model is deployed within the IoT system to provide real-time predictions of crop water requirements. Through automation and data-driven decision-making, farmers can optimize irrigation schedules, minimize water wastage, and enhance crop productivity. This integrated approach represents a significant step towards sustainable agriculture and resource-efficient farming practices.
References
[1]. Manjunathan Alagarsamy, Sterlin Rani Devakadacham, Hariharan Subramani, Srinath Viswanathan, Jazizevelyn Johnmathew, and Kannadhasan Suriyan. Automation irrigation system using arduino for smart crop field productivity. Int J Reconfigurable & Embedded Syst ISSN, 2089(4864):4864, 2023.
[2]. S Gnanavel, M Sreekrishna, N DuraiMurugan, M Jaeyalakshmi, and S Loksharan. The smart iot based automated irrigation system using arduino uno and soil moisture sensor. In 2022 4th International Conference on Smart Systems and Inventive Technology (ICSSIT), pages 188–191. IEEE, 2022.
[3]. G Rajakumar, M Saroja Sankari, D Shunmugapriya, and SP Uma Maheswari. Iot based smart agricultural monitoring system. Asian J. Appl. Sci. Technol, 2:474–480, 2018.
[4]. Janak Patel, Ektakumari Patel, and Priya Pati. Sensor and cloud based smart irrigation system with arduino: A technical review. Int. J. Eng. Appl. Sci. Technol, 3(11):25–29, 2019.
[5]. Sudeepta Mishra, VK Chaithanya Manam, et al. A comparative study of unsupervised learning techniques and natural language processing in network traffic classification. In 2023 IEEE International Conference on Advanced Networks and Telecommunications Systems (ANTS), pages 138–143. IEEE, 2023.
[6]. N Revathy, T Guhan, S Nandhini, S Ramadevi, and R Dhipthi. Iot based agriculture monitoring system using arduino uno. In 2022 International Conference on Computer Communication and Informatics (ICCCI), pages 01–05. IEEE, 2022.
[7]. R Sharmikha Sree, S Meera, RA Kalpana, et al. Automated irrigation system and detection of nutrient content in the soil. In 2020 International Conference on Power, Energy, Control and Transmission Systems (ICPECTS), pages 1–3. IEEE, 2020.
[8]. Asim Unmesh, Rahul Jain, Jingyu Shi, VK Chaithanya Manam, Hyung-Gun Chi, Subramanian Chidambaram, Alexander Quinn, and Karthik Ramani. Interacting objects: A dataset of object-object interactions for richer dynamic scene representations. IEEE Robotics and Automation Letters, 9(1):451–458, 2023.
[9]. Aamo Iorliam, Sylvester Bum, Iember S Aondoakaa, Iveren Blessing Iorlıam, and Yahaya Shehu. Machine learning techniques for the classification of iot-enabled smart irrigation data for agricultural purposes. Gazi University Journal of Science Part A: Engineering and Innovation, 9(4):378–391, 2022.
[10]. Anusha Kumar, Aremandla Surendra, Harine Mohan, K Muthu Valliappan, and N Kirthika. Internet of things based smart irrigation using regression algorithm. In 2017 International Conference on Intelligent Computing, Instrumentation and Control Technologies (ICICICT), pages 1652–1657. IEEE, 2017.
[11]. Umasankar Ch, Sateesh Kumar Reddy Ch, and G Anand Babu. Comprehensiveness of uml in reservoir automation system using zigbee and gsm.
Published
Issue
Section
License
Copyright (c) 2024 International Journal of Scientific Methods in Computational Science and Engineering
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.