TY - GEN
T1 - A robust planning framework for cognitive robots
AU - Karapinar, Sertac
AU - Altan, Dogan
AU - Sariel-Talay, Sanem
PY - 2012
Y1 - 2012
N2 - A cognitive robot should construct a plan to attain its goals. While it executes the actions in its plan, it may face several failures due to both internal and external issues. We present a taxonomy to classify these failures that may be encountered during the execution of cognitive tasks. The taxonomy presents a wide range of failure types. To recover from most of these failures presented in this taxonomy, we propose a Robust Planning Framework for cognitive robots. Our framework combines planning, reasoning and learning procedures into each other for robust execution of cognitive tasks. Failures can be detected and handled by reasoning and replanning, respectively. The framework also facilitates learning new hypotheses incrementally based on experience. It can successfully detect and recover from temporary failures on a selected set of actions executed by a Pioneer3DX robot. It has been shown that our preliminary results for hypothesis learning in failure scenarios are promising.
AB - A cognitive robot should construct a plan to attain its goals. While it executes the actions in its plan, it may face several failures due to both internal and external issues. We present a taxonomy to classify these failures that may be encountered during the execution of cognitive tasks. The taxonomy presents a wide range of failure types. To recover from most of these failures presented in this taxonomy, we propose a Robust Planning Framework for cognitive robots. Our framework combines planning, reasoning and learning procedures into each other for robust execution of cognitive tasks. Failures can be detected and handled by reasoning and replanning, respectively. The framework also facilitates learning new hypotheses incrementally based on experience. It can successfully detect and recover from temporary failures on a selected set of actions executed by a Pioneer3DX robot. It has been shown that our preliminary results for hypothesis learning in failure scenarios are promising.
UR - http://www.scopus.com/inward/record.url?scp=84875578547&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:84875578547
SN - 9781577355717
T3 - AAAI Workshop - Technical Report
SP - 102
EP - 108
BT - Cognitive Robotics - Papers from the 2012 AAAI Workshop, Technical Report
T2 - 2012 AAAI Workshop
Y2 - 23 July 2012 through 23 July 2012
ER -