Close proximity operations around small bodies are extremely challenging due to their uncertain dynamical environment. Autonomous guidance and navigation around small bodies require fast and accurate modeling of the gravitational field for potential on-board computation. In this paper, we investigate a model-based, data-driven approach to compute and predict the gravitational acceleration around irregular small bodies. More specifically, we employ Extreme Learning Machine (ELM) theories to design, train and validate Single-Layer Feedforward Networks (SLFN) capable of learning the relationship between the spacecraft position and the gravitational acceleration. ELM-base neural networks are trained without iterative tuning therefore dramatical...
We present an approximation scheme for gravitational forces near arbitrarily shaped small bodies. Th...
To accomplish more ambitious scientific goals of interplanetary nanosatellite missions, a certain se...
We present an approach for using machine learning to automatically discover the governing equations ...
Close proximity operations around small bodies are extremely challenging due to their uncertain dyna...
Close proximity operations around small bodies are extremely challenging due to their uncertain dyna...
To perform close proximity operations under a low-gravity environment, relative and absolute positio...
Computational intelligence techniques have been used in a wide range of application areas. This pape...
Asteroids' and comets' geodesy is of increasing interest in a wide range of fields ranging from astr...
Recent missions to small bodies in the past decade (e.g., Rosetta, Hayabusa 2, and OSIRIS-REx) have ...
Small bodies environment is usually difficult to be modelled for a number of reasons. Among the othe...
Proximity operations around asteroids are challenging because of the difficulties in the real-time ...
Exploring small planetary bodies, such as asteroids, is essential in understanding our planetary ev...
The Application of Machine-learning Algorithms for On-board Asteroid Shape Model Determination proje...
The number of objects in space is increasing over time, and therefore it is desired to find more eff...
In this paper, we present an approach to pinpoint landing based on what we consider to be the next e...
We present an approximation scheme for gravitational forces near arbitrarily shaped small bodies. Th...
To accomplish more ambitious scientific goals of interplanetary nanosatellite missions, a certain se...
We present an approach for using machine learning to automatically discover the governing equations ...
Close proximity operations around small bodies are extremely challenging due to their uncertain dyna...
Close proximity operations around small bodies are extremely challenging due to their uncertain dyna...
To perform close proximity operations under a low-gravity environment, relative and absolute positio...
Computational intelligence techniques have been used in a wide range of application areas. This pape...
Asteroids' and comets' geodesy is of increasing interest in a wide range of fields ranging from astr...
Recent missions to small bodies in the past decade (e.g., Rosetta, Hayabusa 2, and OSIRIS-REx) have ...
Small bodies environment is usually difficult to be modelled for a number of reasons. Among the othe...
Proximity operations around asteroids are challenging because of the difficulties in the real-time ...
Exploring small planetary bodies, such as asteroids, is essential in understanding our planetary ev...
The Application of Machine-learning Algorithms for On-board Asteroid Shape Model Determination proje...
The number of objects in space is increasing over time, and therefore it is desired to find more eff...
In this paper, we present an approach to pinpoint landing based on what we consider to be the next e...
We present an approximation scheme for gravitational forces near arbitrarily shaped small bodies. Th...
To accomplish more ambitious scientific goals of interplanetary nanosatellite missions, a certain se...
We present an approach for using machine learning to automatically discover the governing equations ...