A Decentralized Multi-Robot Dataset for Early Deadlock Forecasting in Smart Factory Navigation
收藏Zenodo2026-02-02 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.18391070
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资源简介:
This dataset supports research on decentralized early deadlock forecasting in multi-robot smart factory environments. It contains 100 simulated executions of two autonomous Carter robots navigating a shared factory space while visiting six predefined stations according to fixed high-level plans. Each robot executes one of five high-level plans, yielding 25 unique plan combinations, each repeated four times to capture stochastic variations in deadlock and collision occurrence.
Each simulation includes:
Robot trajectories (pose, velocity, orientation) at 30 Hz
Navigation context tags (approaching station/ stopped at station/ stopped (unknown))
Event labels (deadlock and collision flags)
Synchronized camera streams (front and back cameras per robot)
Navigation maps and Nav2 parameter files
Robots navigate autonomously using Isaac Sim, ROS 2 Humble, and Nav2. Logging includes timestamps and relevant sensor data, enabling experiments in early prediction, perception-aware forecasting, and neurosymbolic reasoning.
The dataset is ideal for:
Training models to forecast deadlocks from partial observations of a single robot
Evaluating early warning and reliability trade-offs in safety-critical settings
Developing interpretable neurosymbolic pipelines combining trajectories, events, and camera
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Zenodo创建时间:
2026-01-31



