Optimal Path Planning and Cost Minimization for a Drone Delivery System Via Model Predictive Control
By: Muhammad Al-Zafar Khan, Jamal Al-Karaki
Potential Business Impact:
Drones deliver packages faster and with fewer drones.
In this study, we formulate the drone delivery problem as a control problem and solve it using Model Predictive Control. Two experiments are performed: The first is on a less challenging grid world environment with lower dimensionality, and the second is with a higher dimensionality and added complexity. The MPC method was benchmarked against three popular Multi-Agent Reinforcement Learning (MARL): Independent $Q$-Learning (IQL), Joint Action Learners (JAL), and Value-Decomposition Networks (VDN). It was shown that the MPC method solved the problem quicker and required fewer optimal numbers of drones to achieve a minimized cost and navigate the optimal path.
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