Year
2023
File Attachment
finalpaper_400_0512070555.pdf544.79 KB
Abstract
Monitoring and characterization of nuclear facilities is an essential activity of nuclear
nonproliferation, materials control, and safeguards. Such inferences are best supported by
plentiful, persistent, close-range sensors operating under control of the inference system, but those
resources are not always available for real-world nonproliferation problems. We identify
challenges and associated mitigation strategies related to integrating few, non-persistent, remote,
third-party sensors into an autonomous monitoring and inference system. We present promising
results from applying a prototype ML/AI system employing the proposed strategies to two testbed
facilities and discuss ongoing efforts to improve knowledge management and update, uncertainty
quantification, and ML/AI model interpretation and explanation.