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DIGITMAN

Occupant-based DIGITal predictive MANagement to improve the built environment

Graziano SALVALAI (docente coordinatore), Manuela GRECCHI

DIGITMAN develops a predictive approach, based on occupancy data integrated into a common digital framework, to improve building stocks management by supporting the correct allocation of technical and economic resources during the real operation of buildings. A TRL 5 will be reached, and a prototype tool will be tested in a relevant environment.
Integrating dynamic occupancy data into whole life-cycle digital logbooks and using these data to predict the impact of alternative strategies are relatively unexplored fields. Moreover, a common digital framework for building management, based on common languages/interfaces/data matching methods, is still lacking as underlined by the EU.
The proposed predictive approach will be based on a set of analytic methods (e.g., ML, MAS) applied to the main pillars of building management (operation, maintenance, safety) and multicriteria approaches, thanks also to the availability of experimental data from 30 buildings managed by three local public authorities.

DABC role

The research group of the ABC department leads the WP “Operation predictive module development”. The goal of this work package is to create a standardized predictive model applicable to educational buildings. The model will be developed using data from the infrastructures of the Politecnico di Milano – Polo Territoriale di Lecco.

Partners

Università Politecnica delle Marche (coordinator), Università degli Studi di Bologna