
Year 1 Research Project
Digital Twin and Machine-Learning for Optimized Sensor-Driven Precision Agriculture Utilizing Autonomous Ground and Aerial Delivery
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Description
BACKGROUND
The overall guiding motivation is to provide useful tools to enable rapid path planning for autonomous vehicle operators in real-time and to train operators in large surface area food systems. This work develops a digital twin and machine-learning optimization framework for model problems combining:
- Fluid-dynamics of released objects ranging from powders to encapsulated packets and sensors
- Ground-based vehicle or aircraft (unmanned or manned) dynamics
- Energy-efficient path planning of multiple ground or air vehicles
- Lidar-based and hyperspectral data extraction for agricultural mapping for planning and assessment.
GOALS
Specifically, we will develop clean and easy-to-use digital tools that are repeatedly in demand by food system researchers such as:
- Data collection
- Compression and assimilation from the environment
- Rapid ODE and PDE solvers
- Neural nets and genetic algorithms with embedded detailed models of fundamental physics (fluid flow, heat transfer, stress analysis, electromagnetism, optics, robotics, etc.)
IMPACT
The framework is designed to enable digital twin type technologies to run at much faster rates, in order to enable machine-learning to optimize the planning.
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Photos
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Team

Tarek Zohdi
Principal Investigator

Ana Arias
Co Principal Investigator

Mason Earles
Collaborator

Isaya Kisekka
Collaborator

Ethan Ligon
Collaborator

Xin Liu
Collaborator

Simo Mäkiharju
Collaborator

Khalid Mosalam
Collaborator

Mark Mueller
Collaborator

Ilias Tagkopoulos
Collaborator
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Publications

Journal Article ⏐ IEEE Access 2022Journal Article ⏐ IEEE Access 2022