TY - GEN
T1 - Component ontological representation of function for diagnosis
AU - Kumar, Amruth N.
AU - Upadhyaya, Shambhu J.
PY - 1994
Y1 - 1994
N2 - Using function instead of fault probabilities for candidate discrimination during model based diagnosis has the advantages that function is more readily available, and facilities explanation generation. However, current representations of function have been context dependent and state based, making them inefficient and time consuming. In this paper, we propose Classes as a scheme of representation of function for diagnosis based on component ontology principles, i.e., we define component functions (called classes) with respect to their ports. The scheme is space and time-wise linear in complexity, and hence, efficient. It is also domain-independent and scalable to representation of complex devices. We demonstrate the utility of our representation for the diagnosis of a printer buffer board.
AB - Using function instead of fault probabilities for candidate discrimination during model based diagnosis has the advantages that function is more readily available, and facilities explanation generation. However, current representations of function have been context dependent and state based, making them inefficient and time consuming. In this paper, we propose Classes as a scheme of representation of function for diagnosis based on component ontology principles, i.e., we define component functions (called classes) with respect to their ports. The scheme is space and time-wise linear in complexity, and hence, efficient. It is also domain-independent and scalable to representation of complex devices. We demonstrate the utility of our representation for the diagnosis of a printer buffer board.
UR - https://www.scopus.com/pages/publications/0028282178
M3 - Conference contribution
AN - SCOPUS:0028282178
SN - 081865550X
T3 - Proceedings of the Conference on Artificial Intelligence Applications
SP - 448
EP - 454
BT - Proceedings of the Conference on Artificial Intelligence Applications
PB - Publ by IEEE
T2 - Proceedings of the 10th Conference on Artificial Intelligence for Applications
Y2 - 1 March 1994 through 4 March 1994
ER -