Quamo Toolbox for Qualitative Modelling and Process Supervision
نویسندگان
چکیده
The paper proposes the Qualitative Modelling Toolbox (QuaMo Toolbox), a MATLAB compatible toolbox used to synthesise, analyse, supervise and control dynamic systems described by qualitative models. The nature of the qualitative models become obvious from the fact that they do not refer to the numerically precise signal but to symbolic signal values. Therefore the toolbox is useful in applications where signals have to be supervised with respect to some safety regions such as in supervisory control or diagnosis.
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