Kulkarni et al., 2019 - Google Patents
Smart soil nutrients analysis and prediction of the level of nutrients using a botKulkarni et al., 2019
- Document ID
- 14341549976431650719
- Author
- Kulkarni N
- Thakur A
- Rajwal T
- Tornekar R
- Patil S
- Publication year
- Publication venue
- 2019 3rd International Conference on Recent Developments in Control, Automation & Power Engineering (RDCAPE)
External Links
Snippet
In today's world, there is an increase in population growth. Fertilizers are being used to increase crop productivity, but for producing more crop, nutrient level of soil and crop monitoring is more important. This is one of the main factors for the production of rich and …
- 239000002689 soil 0 title abstract description 79
Similar Documents
Publication | Publication Date | Title |
---|---|---|
Raj et al. | Precision farming in modern agriculture | |
Ahmad et al. | A review of best management practices for potato crop using precision agricultural technologies | |
Colaço et al. | How will the next-generation of sensor-based decision systems look in the context of intelligent agriculture? A case-study | |
CN118225181B (en) | Agricultural environment monitoring system based on multi-mode information fusion | |
Kulkarni et al. | Smart soil nutrients analysis and prediction of the level of nutrients using a bot | |
Güven et al. | Smart farming technologies for sustainable agriculture: From food to energy | |
Hossain et al. | Iot based smart soil fertilizer monitoring and ml based crop recommendation system | |
Madhumathi et al. | Soil nutrient analysis using colorimetry method | |
CN118278960B (en) | Tracing method and tracing system for agricultural product safety information | |
Latha et al. | Technology for kisan samanvayam: Nutrition intelligibility of groundnut plant using IoT-ML framework | |
Priyadharsini et al. | AI-ML based approach in plough to enhance the productivity | |
Prasad et al. | System model for smart precision farming for high crop yielding | |
Rathore | Application of artificial intelligence in agriculture including horticulture | |
Haldorai et al. | Crop Yield Prediction Using Optimized Convolutional Neural Network Model Based on Environmental and Phenological Data | |
Gupta et al. | Computational Intelligence in Agriculture | |
AlKameli et al. | Automatic learning in agriculture: a survey | |
Ramzan et al. | An Ingenious IoT Based Crop Prediction System Using ML and EL | |
Thapaswini et al. | A Methodology for Crop Price Prediction Using Machine Learning | |
Senapaty et al. | IoT-Enabled Soil Nutrient Analysis and Crop Recommendation Model for Precision Agriculture. Computers 2023, 12, 61 | |
Ito et al. | Analysis of vegetation indices by time series clustering of drone rice monitoring data | |
Lewis-Beck et al. | Monitoring crop growth in the us corn Belt with SMOS level 2 tau | |
Sharma et al. | A Review on Plant Growth Monitoring using Artificial Intelligence and the Internet of Things | |
Navaneethan et al. | Advanced Technologies for Precision Agriculture and Farming | |
Padmanabhuni et al. | IOT-Based Fertilizer Recommendation System Using a Hybrid Boosting Algorithm | |
Pal et al. | Smart Agricultural System Using IoT 2.0 |