Integrated Intelligent and Predictive Control: A Multi-Agent Adaptive Type-2 Fuzzy Control Architecture

We propose a novel two-layer multi-agent architecture aimed at efficient real-time control of large-scale and complex-dynamics systems. The proposed architecture integrates intelligent control approaches (which have a low computation time and fit real-time applications) with model-predictive control (which takes care of the optimality requirements of control). The bottom control layer (intelligent-control module) includes several distributed intelligent-control agents, the design parameters of which are tuned by the top layer (model-predictive control module). The model-predictive control module fulfills two significant roles: looking ahead to the effects of the control decisions, and coordinating the intelligent-control agents of the lower control layer. The resulting multi-agent control system has a very low computation time, and provides adaptivity, control coordination, and aims at excellent performance. Additionally, we give a general treatment of type-2 fuzzy membership functions, and introduce two categories for them: probabilistic-fuzzy (which is a novel concept introduced in this paper) and fuzzy-fuzzy (which is a new treatment of the existing type-2 fuzzy membership functions). The performance of the proposed modeling and control approaches are assessed via a case study involving a simple urban traffic network: the results show that the novel concept of probabilistic-fuzzy membership function outperforms the type-1 and type-2 membership functions that have already been introduced in the literature. Furthermore, the proposed two-layer integrated multi-agent control architecture significantly outperforms a multi-agent decentralized fuzzy control system (without coordination among the agents), while requiring a comparable computation time.

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