How Structural Measurement is done?
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rnIndustry and scientific research both demand methods to support the management of complex engineering development processes in such a way that identifies and highlight the characteristics of their structural complexity. This property leads to the development of a systematic and scientific rigorous approach to modeling and analysis process, exhibited by its application to two case studies of automotive design. This process is typically known as structural measurement.
rnA research proposes a structural measurement system that makes use of complexity metrics to exhibit various patterns of the interplay of process entities in the spirit of a Balanced Scorecard, all the while adapted to the needs of process improvement. The metrics are used to draw inferences about the process’s behavior. This way, knowledge about a process can be extracted from existing process models, or new process models can be structured systematically by addressing desirable patterns.
rnThe metrics are lead by a meta-model for process modeling. The meta-model uses multiple-domain matrices, integrating existing process models across common domains and relationships. The modeling method is enhanced with additional constructs of modeling that act as a bridging between existing dependency models and established process models.
rnMoreover, the analysis approach is operationalized by a framework to select the metrics in accordance with the goals of the process analysis. To this end, the metrics are classified and allocated to the common goals of process analysis with regard to the structure of a process, producing eight different guidelines. To enable a flexible application, a modular set-up consisting of three steps is chosen: As a starting point, the strategic level is addressed using common goals of process analysis. Then, these goals are concretized by typical questions that can be posed in their context. Finally, these questions are answered using the metrics and parts of the meta-model.
rnVisit our website for more information on Structural Instrumentation, Environmental Measurements and Monitoring Survey.
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