tion different in MASs. We have discussed different
aspects of “real-time coordination” in MAS and sug-
gested an interval based paradigm to address the par-
ticular related issues. Finally, we suggest “timers” to
introduce real-time in interval-based integrated real-
time coordination.
The approach discussed here would let both MAS
and real-time communities to see each other’s re-
quirements and prospectus in their domains. More
precisely, the agent community to see coordination
in MASs deal differently than it has been and the
real-time community to take a more realistic picture
about the agents’ functionality and effectiveness in
MASs. Clearly there is much left to be done. As a
future work, we plan to work on a formalism based
on Allen’s interval algebra for our suggested approach
for integrated real-time agent coordination.
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