We propose a novel Energy-Predictive Drone Service (EPDS) framework for efficient package delivery within a skyway network. The EPDS framework incorporates a formal modeling of an EPDS and an adaptive bidirectional Long Short-Term Memory (Bi-LSTM) machine learning model. This model predicts the energy status and stochastic arrival times of other drones operating in the same skyway network. Leveraging these predictions, we develop a heuristic optimization approach for composite drone services. This approach identifies the most time-efficient and energy-efficient skyway path and recharging schedule for each drone in the network. We conduct extensive experiments using a real-world drone flight dataset to evaluate the performance of the proposed framework.
@article{arxiv.2508.01671,
title = {Energy-Predictive Planning for Optimizing Drone Service Delivery},
author = {Guanting Ren and Babar Shahzaad and Balsam Alkouz and Abdallah Lakhdari and Athman Bouguettaya},
journal= {arXiv preprint arXiv:2508.01671},
year = {2025}
}
Comments
37 pages, 16 figures. This is an accepted paper, and it is going to appear in the Expert Systems with Applications journal