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SLAV-Sim: A Framework for Self-Learning Autonomous Vehicle Simulation.

Jacob CreweAditya HumnabadkarYonghuai LiuAmr AhmedArdhendu Behera
Published in: Sensors (Basel, Switzerland) (2023)
With the advent of autonomous vehicles, sensors and algorithm testing have become crucial parts of the autonomous vehicle development cycle. Having access to real-world sensors and vehicles is a dream for researchers and small-scale original equipment manufacturers (OEMs) due to the software and hardware development life-cycle duration and high costs. Therefore, simulator-based virtual testing has gained traction over the years as the preferred testing method due to its low cost, efficiency, and effectiveness in executing a wide range of testing scenarios. Companies like ANSYS and NVIDIA have come up with robust simulators, and open-source simulators such as CARLA have also populated the market. However, there is a lack of lightweight and simple simulators catering to specific test cases. In this paper, we introduce the SLAV-Sim, a lightweight simulator that specifically trains the behaviour of a self-learning autonomous vehicle. This simulator has been created using the Unity engine and provides an end-to-end virtual testing framework for different reinforcement learning (RL) algorithms in a variety of scenarios using camera sensors and raycasts.
Keyphrases
  • low cost
  • machine learning
  • climate change
  • virtual reality
  • randomized controlled trial
  • life cycle
  • deep learning
  • mass spectrometry