ROAISYFeb 14, 2024

A Digital Twin prototype for traffic sign recognition of a learning-enabled autonomous vehicle

arXiv:2402.09097v11 citationsh-index: 36PoEM Companion
Originality Synthesis-oriented
AI Analysis

This addresses system integration challenges for autonomous vehicle testing, but appears incremental as it combines existing standards and tools.

The paper tackles traffic sign recognition and lane keeping for autonomous vehicles by developing a digital twin prototype using co-simulation with multiple modeling tools, concluding with illustrative simulations.

In this paper, we present a novel digital twin prototype for a learning-enabled self-driving vehicle. The primary objective of this digital twin is to perform traffic sign recognition and lane keeping. The digital twin architecture relies on co-simulation and uses the Functional Mock-up Interface and SystemC Transaction Level Modeling standards. The digital twin consists of four clients, i) a vehicle model that is designed in Amesim tool, ii) an environment model developed in Prescan, iii) a lane-keeping controller designed in Robot Operating System, and iv) a perception and speed control module developed in the formal modeling language of BIP (Behavior, Interaction, Priority). These clients interface with the digital twin platform, PAVE360-Veloce System Interconnect (PAVE360-VSI). PAVE360-VSI acts as the co-simulation orchestrator and is responsible for synchronization, interconnection, and data exchange through a server. The server establishes connections among the different clients and also ensures adherence to the Ethernet protocol. We conclude with illustrative digital twin simulations and recommendations for future work.

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