Title :
System Health Awareness in Total-Ionizing Dose Environments
Author :
Diggins, Zachary J. ; Mahadevan, Nagabhushan ; Pitt, E. Bryn ; Herbison, Daniel ; Karsai, Gabor ; Sierawski, Brian D. ; Barth, Eric J. ; Reed, Robert A. ; Schrimpf, Ronald D. ; Weller, Robert A. ; Alles, Michael L. ; Witulski, Arthur F.
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Vanderbilt Univ., Nashville, TN, USA
Abstract :
Understanding the relationship between the impact of radiation at the component and system levels is challenging. This paper discusses a hierarchical approach, based on Bayesian theory, to establish a mechanism for determining system health based on the status of, and interactions between, the radiation response of component parts. When the Bayesian network is trained with a combination of experimental data, data from similar parts, simulations, and expert estimates, a quantitative estimate of the Total-Ionizing Dose (TID) response of a system can be obtained. Bayesian networks enable inference about system-level functional performance, the dose exposure, and the sensitivity of different components to TID, thus providing a framework for TID awareness in design and operation of systems. A case study of a robotic system consisting of commercial components is presented.
Keywords :
belief networks; radiation hardening (electronics); semiconductor device reliability; Bayesian network; Bayesian theory; TID; radiation impact; system health awareness; total-ionizing dose environments; Bayes methods; Data models; Regulators; Robot sensing systems; Uncertainty; Voltage control; Bayesian network; Fukushima; commercial off the shelf (COTS); nuclear power; radiation hardness assurance; robot; total-ionizing dose;
Journal_Title :
Nuclear Science, IEEE Transactions on
DOI :
10.1109/TNS.2015.2440993