Content area
In multi-UAV-assisted mobile edge computing (MEC), insufficient consideration of collaborative computation in inter-UAV communication can significantly reduce computational service capabilities. For this problem, we present a multi-UAV-assisted MEC offloading optimization model that jointly optimizes task offloading decision, UAV resource allocation, UAV trajectories and establish collaborative computation through inter-UAV communication. First, to solve the multi-UAV-assisted MEC offloading optimization issue, we define a weighted utility function that balances delay and energy consumption. Then, to tackle the continuous nature of the computation-offloading problem and the coexistence of discrete and continuous variables, the PPO algorithm is enhanced by integrating an average reward objective function and a hybrid action generation offloading mechanism. Finally, we propose a multi-UAV-assisted MEC computing offloading optimization method to improve the utility function. Experiments show that the proposed method significantly enhances system utility.
Details
Deep learning;
Communication;
Resource allocation;
Edge computing;
Mobile computing;
Unmanned aerial vehicles;
Semantic web;
Heuristic;
Pareto optimum;
Energy consumption;
Optimization models;
Scheduling;
Continuity (mathematics);
Decision making;
Computation offloading;
Algorithms;
Information systems;
Energy efficiency;
Utility functions;
Optimization algorithms;
Semantics
