An IoT Low-Cost Fertilizer for Crop Recommendation using Machine Learning

dc.contributor.authorSEKFAL Zahret el Afrah
dc.contributor.authorDJEMAI Imad Eddine Ismail
dc.date.accessioned2025-11-02T10:14:07Z
dc.date.available2025-11-02T10:14:07Z
dc.date.issued2024-06-27
dc.description.abstractAgriculture plays a crucial role in sustaining the world's growing population, yet farmers face challenges in optimizing crop production and resource management. This thesis introduces an innovative IoT device empowered by machine learning (ML) to monitor soil nutrients and offer precise crop recommendations. The device integrates sensors such as, an NPK sensor and MAX485 TTL to gather real-time data on soil composition, humidity, temperature, rainfall, ph, and nutrient levels. This data is then transmitted to a server via protocol. ML algorithms analyse the collected data to generate tailored recommendations, including optimal crop choices, suitable fertilizer types, and application rates based on crop needs and soil conditions. Field experiments validate the system's efficacy compared to traditional methods, demonstrating its ability to boost crop productivity, optimize resource allocation, and promote sustainable agricultural practices for enhanced food security.
dc.identifier.urihttps://dspace.univ-oran1.dz/handle/123456789/4792
dc.language.isoen
dc.subjectMachine Learning ; Internet of Things (IoT) ; Agriculture ; Crop Recommendation ; Soil Nutrients ; Sensor
dc.titleAn IoT Low-Cost Fertilizer for Crop Recommendation using Machine Learning
dc.typeThesis
grade.ExaminateurHAMDANI Nesrine, MCA, University Of Oran, ISTA
grade.GradeMaster
grade.PrésidentTAHRI Ghrissi, MCB, University Of Oran, ISTA
grade.RapporteurDAHANE Amine, MCA, University Of Oran, ISTA
la.SpécialitéInstrumentation and Metrology
la.coteIM07
Fichiers
Bundle original
Voici les éléments 1 - 1 sur 1
Vignette d'image
Nom :
M.I 07.pdf
Taille :
4 MB
Format :
Adobe Portable Document Format
Description :