A Machine Learning-based Approach for Smart Agriculture Monitoring and Decision Support

dc.contributor.authorAnkit Jain, Anita Shukla, Imran Ullah Khan
dc.date.accessioned2026-07-02T04:49:26Z
dc.date.issued2026
dc.descriptionBook Title: Advanced Image Processing and Video Intelligence Applications Book Author(s)/Editor(s): Ravinder M., Arti Ranjan, Youddha Beer Singh
dc.description.abstractThe field of machine learning is expanding and has a wide range of potential uses in agriculture. Machine learning is used to forecast pests and illnesses, decrease water usage, and increase crop yields, which is a topic of investigation for farmers and agricultural experts. Machine learning is capable of improving resource efficacy along with food production sustainability for farmers in the future. Numerous factors either directly or indirectly affect crop growth. Among these are the climate parameters. We can boost productivity by employing machine learning to monitor and regulate these parameters. In addition, there is a need for technological solutions to address a number of issues, including fire alerts, maintaining humidity levels and appropriate temperatures, and meeting the needs of sophisticated plants while monitoring unauthorized entry into agricultural areas. The significance of an appropriate and satisfactory supply of power cannot be understated. By using a NodeMCU Wi-Fi module, the technology offers a practical and effective solution to the issues identified in the Indian farming system. Various sensors such as those for temperature, fire, light, PIR, humidity, and soil moisture, have been utilized to monitor and regulate a variety of technological issues. Using IOT and machine learning, the projected system uses a Wi-Fi module to display real-time data that can be watched online from any location in the world. The farmer is automatically notified by this module about the need for water, site temperature, moisture and humidity, light, fire warning, and unwelcome occupancy or encroachment. Using the machine learning principle, an experiment was conducted with varying soil and plant levels. It was established that the sensor exhibited sufficient sensitivity to yield consistent results under varying water level situations for diverse combinations of plants and soil.
dc.identifier.isbn979-8-89881-592-9
dc.identifier.urihttps://doi.org/10.2174/97988988159121260101
dc.identifier.urihttp://136.232.12.194:4000/handle/123456789/1915
dc.language.isoen_US
dc.publisherBentham Science
dc.subjectAutomatic farming
dc.subjectBlynk server
dc.subjectHumidity sensor
dc.subjectMachine learning
dc.subjectNode MCU
dc.subjectPIR sensor
dc.subjectSoil moisture sensor
dc.titleA Machine Learning-based Approach for Smart Agriculture Monitoring and Decision Support
dc.typeBook chapter

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