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FedRobo: Federated Learning Driven Autonomous Inter Robots Communication For Optimal Chemical Sprays

Authors :
Ferdaus, Jannatul
Pisupati, Sameera
Hasan, Mahedi
Paladugu, Sathwick
Publication Year :
2024

Abstract

Federated Learning enables robots to learn from each other's experiences without relying on centralized data collection. Each robot independently maintains a model of crop conditions and chemical spray effectiveness, which is periodically shared with other robots in the fleet. A communication protocol is designed to optimize chemical spray applications by facilitating the exchange of information about crop conditions, weather, and other critical factors. The federated learning algorithm leverages this shared data to continuously refine the chemical spray strategy, reducing waste and improving crop yields. This approach has the potential to revolutionize the agriculture industry by offering a scalable and efficient solution for crop protection. However, significant challenges remain, including the development of a secure and robust communication protocol, the design of a federated learning algorithm that effectively integrates data from multiple sources, and ensuring the safety and reliability of autonomous robots. The proposed cluster-based federated learning approach also effectively reduces the computational load on the global server and minimizes communication overhead among clients.<br />Comment: This research article is going to be submitted to a best-fit conference. We are looking for a conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.06382
Document Type :
Working Paper