- The paper demonstrates that the CoDeGa model effectively adapts to unpredictable extraterrestrial terrains, enabling robust autonomous scooping.
- It employs deep Gaussian processes and meta-learning techniques to select optimal scooping actions from imagery data in a realistic testbed environment.
- Deployment on NASA's OWLAT confirms the model's transferability and adaptability, offering promising insights for future space exploration missions.
Introduction
Exploration in extraterrestrial environments, such as those on ocean worlds, presents unique technical challenges that necessitate high levels of autonomy in robotic landers. This paper details an experience report on the application of an advanced machine learning approach for terrain sampling autonomy. Such an autonomous system has been developed to tackle the task of scooping materials on planetary bodies within our solar system, which is essential for the scientific analysis of these alien worlds.
Adaptation to Unpredictable Terrains
The Deep Meta-Learning with Controlled Deployment Gaps (CoDeGa) model discussed in the paper leverages an innovative training approach using deep Gaussian processes. It is tailored to handle the unpredictability of extraterrestrial terrains. The CoDeGa model focuses particularly on scooping action selection, utilizing imagery data to inform decision-making. The transferability and adaptive nature of the model are assessed through its application to a sophisticated testbed, the Ocean Worlds Lander Autonomy Testbed (OWLAT), developed by NASA's Jet Propulsion Laboratory, offering a significant step up from earlier low-fidelity testbeds in terms of realism.
Deployment Experiences and Validation
The authors describe the employment of the aforementioned model on OWLAT and outline their findings in regard to model transferability across different fidelity testbeds, adaptability to novel environments, and the salient points of deploying AI algorithms in space exploration contexts. Experiments conducted with OWLAT confirmed the model's ability to adapt to substantial environmental variations, suggesting promising implications for its use in future space missions.
Conclusion and Implications
The success of deploying CoDeGa in the OWLAT high-fidelity testbed demonstrates the practicality of utilizing AI and machine learning algorithms in physical robotic systems for space exploration. Its performance affirms that learning-based approaches can be transferred from controlled settings to real-world-like environments, providing a pathway towards enhancing autonomy and efficiency of sample collection processes in future extraterrestrial missions. The deployment also underscores the value of machine learning techniques in dynamically dealing with uncertainties and domain shifts that are inherent in outer space exploration.