Problem of Mathematical Data Interpretation. I. Lumped-Parameter Systems
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The problem of interpretation of data obtained in experimental studies is considered as a nonclassical mathematical problem, which is generally ill-posed in many cases. Additional information in the form of equations of local constraints that define its closed or open mathematical model is used. Regularization procedures are described, which make it possible to find applicable solutions consistent with available data.
Keywordsexperimental data mathematical model interpretation ill-posedness regularization model order reduction generalized solution variational method
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