An energy-efficient learning solution for the Agile Earth Observation Satellite Scheduling Problem
Journal:
arXiv
Published Date:
Mar 3, 2025
Abstract
The Agile Earth Observation Satellite Scheduling Problem (AEOSSP) entails
finding the subset of observation targets to be scheduled along the satellite's
orbit while meeting operational constraints of time, energy and memory. The
problem of deciding what and when to observe is inherently complex, and becomes
even more challenging when considering several issues that compromise the
quality of the captured images, such as cloud occlusion, atmospheric
turbulence, and image resolution. This paper presents a Deep Reinforcement
Learning (DRL) approach for addressing the AEOSSP with time-dependent profits,
integrating these three factors to optimize the use of energy and memory
resources. The proposed method involves a dual decision-making process:
selecting the sequence of targets and determining the optimal observation time
for each. Our results demonstrate that the proposed algorithm reduces the
capture of images that fail to meet quality requirements by > 60% and
consequently decreases energy waste from attitude maneuvers by up to 78%, all
while maintaining strong observation performance.