With the growing global competition, the importance of innovations for the success of many companies is increasing significantly. An important concept in an innovation process is the innovation communities, which develop and implement innovative ideas. The modeling of such non-physical systems is not a simple task. However, this can be performed with the agent-based modeling technique in a more natural way than by diferential equations. Unfortunately, the resulting agent-based model is not well-suited for control design. By using input and output data, it is possible to approximate an agent-based model as a Takagi-Sugeno (TS) fuzzy model. In this work, approximation of an agent-based model as a TS fuzzy model is presented.
«
With the growing global competition, the importance of innovations for the success of many companies is increasing significantly. An important concept in an innovation process is the innovation communities, which develop and implement innovative ideas. The modeling of such non-physical systems is not a simple task. However, this can be performed with the agent-based modeling technique in a more natural way than by diferential equations. Unfortunately, the resulting agent-based model is not well-...
»