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Experimentation Phase
FieldtrialsandexperimentalvalidationofAI-drivenfarmingsolutions
Overview

Research Approach

Our experimentation phase combines controlled field trials with real-world farm testing to validate AI recommendations.

Experimental plots are carefully designed to evaluate the impact of different irrigation strategies, nitrogen application rates, and monitoring frequencies on crop performance.

High-resolution drone imagery, combined with ground-based sensor networks, provides the data foundation for training and validating our machine learning models.

Aerial view of experimental fields
Phases

Experimentation Timeline

Key milestones in our field experimentation journey.

March 2024

Field Preparation

Initial soil analysis and plot demarcation at Çukurova University, Turkey.

April 2024

Sensor Deployment

Installation of IoT sensors for soil moisture, temperature, and nutrient monitoring.

May 2024

First Drone Flights

Baseline multispectral imagery captured across all 54 experimental plots.

June - August 2024

Growing Season Monitoring

5 drone flights with 10 multispectral bands, producing 2,700 images throughout the crop growth cycle.

September 2024

Harvest Data Collection

Yield measurements and quality assessments across all experimental treatments.

October 2023 - Present

Data Analysis & Model Training

Processing field data to train and validate AI models for crop prediction.

Design

Experimental Variables

Key factors being tested across our experimental plots.

Irrigation Levels

Three irrigation treatments: 0%, 50%, and 100% of crop water requirements (100% being ideal)

Deficit (0%)Moderate (50%)Full (100%)

Nitrogen Rates

Three nitrogen application rates tested: 0, 10, and 20 g/m² (20 being ideal)

0 g/m²10 g/m²20 g/m²Experimentation.variables.nitrogen.levels.3

Monitoring Frequency

Drone imagery captured at different intervals to optimize survey scheduling

WeeklyBi-weeklyMonthly
Visual Documentation

Field Gallery

Images from our experimental sites and field work activities.

Aerial view of experimental fields
Drone capturing field imagery
Field team at work
Data analysis session
Sensor installation
Lab analysis
Insights

Challenges & Learnings

Key insights gained from our field experimentation activities.

Challenge: Weather Variability

Learning: Developed robust models that account for inter-annual climate variations

Challenge: Sensor Calibration

Learning: Established standardized protocols for consistent data quality across sites

Challenge: Data Integration

Learning: Created unified data pipeline for heterogeneous sensor and imagery data

Challenge: Scale Differences

Learning: Validated model transferability across different farm sizes and regions

Explore More

Learn about specific field studies and meet the partners conducting this research.