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Reinforcement learning for online testing of autonomous driving systems : a replication and extension study

Informazioni aggiuntive

Autori
Giamattei L., Biagiola M., Pietrantuono R., Russo S., Tonella P.
Tipo
Articolo pubblicato in rivista scientifica
Anno
2024
Lingua
Inglese
Sommario
In a recent study, Reinforcement Learning (RL) used in combination with many-objective search, has been shown to outperform alternative techniques (random search and many-objective search) for online testing of Deep Neural Network-enabled systems. The empirical evaluation of these techniques was conducted on a state-of-the-art Autonomous Driving System (ADS). This work is a replication and extension of that empirical study. Our replication shows that RL does not outperform pure random test generation in a comparison conducted under the same settings of the original study, but with no confounding factor coming from the way collisions are measured. Our extension aims at eliminating some of the possible reasons for the poor performance of RL observed in our replication: (1) the presence of reward components providing contrasting feedback to the RL agent; (2) the usage of an RL algorithm (Q-learning) which requires discretization of an intrinsically continuous state space. Results show that our new RL agent is able to converge to an effective policy that outperforms random search. Results also highlight other possible improvements, which open to further investigations on how to best leverage RL for online ADS testing.
Parole chiave
Reinforcement learning, Autonomous driving systems, Online testing, Replication study, Extension study
Periodico
Empirical Software Engineering
Volume
30
Numero ( Mese )
1
Pagine (o numero dell’articolo)
19
ISSN
1382-3256, 1573-7616

Diffusione

Licenza
CC BY-NC-ND
Visibilità
Pubblico
Status open access
Hybrid