Abstract
This paper introduces an innovative automatic 3D reconstruction method tailored for digital twin creation, employing robotic systems to enhance asset monitoring and maintenance within the energy industry. Utilizing depth images and LiDAR scans, our method constructs real-time, voxel-based 3D maps, crucial for the autonomous navigation and interaction of robots with their environment.
The core of our approach involves a Truncated Signed Distance Function (TSDF) and a Euclidean Signed Distance Function (ESDF), stored within a voxel grid to facilitate accurate environment meshing and path planning. This reconstruction is vital for creating detailed digital twins, allowing for precise representation and monitoring, which is crucial for operational efficiency and safety in complex industrial settings. Our method has been rigorously tested across various benchmark datasets and hardware configurations (GPUs and CPUs), highlighting its high precision and fidelity in digital twin generation. The resultant digital twins enable better predictive maintenance by providing a real-time asset condition assessment and facilitating anomaly detection.
However, the current reconstruction accuracy is limited in capturing minute details of small objects, indicating a need for further refinement for specific use cases involving detailed micrometric analysis. Despite these limitations, our method significantly reduces the time and cost associated with digital twin creation, enhancing decision-making and minimizing human intervention through improved remote monitoring capabilities.
Moreover, by integrating real-time data from diverse sources such as sensors, drones, and robots with digital twin models, stakeholders can gain comprehensive insights into asset performance, fostering improved collaboration and informed decision-making. This integration not only enhances the operational efficiency but also ensures the safety and productivity of energy facilities by enabling prompt and effective interventions.
In conclusion, our work not only advances the technological capabilities in automated 3D reconstruction for digital twin creation but also addresses the practical implications of such advancements in the energy sector, paving the way for more autonomous and efficient asset management practices.