DOAJ Open Access 2021

PSO-Based Soft Lunar Landing with Hazard Avoidance: Analysis and Experimentation

Andrea D’Ambrosio Andrea Carbone Dario Spiller Fabio Curti

Abstrak

The problem of real-time optimal guidance is extremely important for successful autonomous missions. In this paper, the last phases of autonomous lunar landing trajectories are addressed. The proposed guidance is based on the Particle Swarm Optimization, and the differential flatness approach, which is a subclass of the inverse dynamics technique. The trajectory is approximated by polynomials and the control policy is obtained in an analytical closed form solution, where boundary and dynamical constraints are a priori satisfied. Although this procedure leads to sub-optimal solutions, it results in beng fast and thus potentially suitable to be used for real-time purposes. Moreover, the presence of craters on the lunar terrain is considered; therefore, hazard detection and avoidance are also carried out. The proposed guidance is tested by Monte Carlo simulations to evaluate its performances and a robust procedure, made up of safe additional maneuvers, is introduced to counteract optimization failures and achieve soft landing. Finally, the whole procedure is tested through an experimental facility, consisting of a robotic manipulator, equipped with a camera, and a simulated lunar terrain. The results show the efficiency and reliability of the proposed guidance and its possible use for real-time sub-optimal trajectory generation within laboratory applications.

Penulis (4)

A

Andrea D’Ambrosio

A

Andrea Carbone

D

Dario Spiller

F

Fabio Curti

Format Sitasi

D’Ambrosio, A., Carbone, A., Spiller, D., Curti, F. (2021). PSO-Based Soft Lunar Landing with Hazard Avoidance: Analysis and Experimentation. https://doi.org/10.3390/aerospace8070195

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Informasi Jurnal
Tahun Terbit
2021
Sumber Database
DOAJ
DOI
10.3390/aerospace8070195
Akses
Open Access ✓