Coordination, as an art of managing interdependency among activities,
will be extensively studied in this book under the multi-agent system
paradigm. To model the information essential to agent coordination, this
book proposes a Fuzzy Subjective Task Structure (FSTS) model, through
which agent coordination is viewed as a Decision-Theoretic Planning
problem, to which reinforcement learning can be applied. Two learning
algorithms, "coarse-grained" and "fine-grained" are presented to address
agent coordination at two different levels. The "coarse-grained"
algorithm operates at one level and tackles hard system constraints,
while the "fine-grained" at another level and for soft constraints.
Besides reinforcement learning, this book also proposes a bio-inspired
approach to agent coordination. A dynamic coordination model inspired by
biological metabolic system is presented. Agent coordination is achieved
as every agent performs iteratively a dynamic optimization process,
which utilizes explicitly the global dynamics captured through the
metabolic model. All research results presented in this book are
experimentally evaluated to be effective and useful in practice.