IMAIJun 21, 2022

Large region targets observation scheduling by multiple satellites using resampling particle swarm optimization

arXiv:2206.10178v149 citationsh-index: 13
Originality Incremental advance
AI Analysis

This work addresses the increasing complexity of satellite scheduling for large region observation, which is incremental as it builds on existing optimization methods.

The paper tackles the Earth observation satellite scheduling problem for large region targets by proposing a greedy initialization-based resampling particle swarm optimization algorithm, which improves scheduling results by 5.42% over traditional particle swarm optimization and 15.86% over a greedy algorithm.

The last decades have witnessed a rapid increase of Earth observation satellites (EOSs), leading to the increasing complexity of EOSs scheduling. On account of the widespread applications of large region observation, this paper aims to address the EOSs observation scheduling problem for large region targets. A rapid coverage calculation method employing a projection reference plane and a polygon clipping technique is first developed. We then formulate a nonlinear integer programming model for the scheduling problem, where the objective function is calculated based on the developed coverage calculation method. A greedy initialization-based resampling particle swarm optimization (GI-RPSO) algorithm is proposed to solve the model. The adopted greedy initialization strategy and particle resampling method contribute to generating efficient and effective solutions during the evolution process. In the end, extensive experiments are conducted to illustrate the effectiveness and reliability of the proposed method. Compared to the traditional particle swarm optimization and the widely used greedy algorithm, the proposed GI-RPSO can improve the scheduling result by 5.42% and 15.86%, respectively.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes