In modern Cyber Physical Production Systems (CPPS) workers interact with hybrid networked cyber and engineered physical elements that record data (e.g., using sensors), analyse them using connected services and support decision making, according to the Human-In-the-Loop paradigm. In this paper we present an approach for modelling Resilient Cyber Physical Production Systems (R-CPPS). The approach is conceived as: (i) data-driven, because recovery actions, modelled in a service-oriented architecture, are activated by sensor data measures collected on the CPPS subsystems and the surrounding production environment; (ii) context-based, since recovery services are associated with the steps of the production process as well as with the hierarchical organisation of the CPPS components involved in the recovery actions. The approach provides runtime selection of services, where the sensor data measures are used as service inputs and service outputs are displayed to the operators who supervise the CPPS subsystem on which recovery actions must be performed, enabling fast and effective resilience also in a Human-In-the-Loop scenario. The feasibility of the approach is demonstrated in a food industry case study.

A data-driven context-based approach for modelling Resilient Cyber Physical Production Systems

Bagozi A.;Bianchini D.;de Antonellis V.
2021-01-01

Abstract

In modern Cyber Physical Production Systems (CPPS) workers interact with hybrid networked cyber and engineered physical elements that record data (e.g., using sensors), analyse them using connected services and support decision making, according to the Human-In-the-Loop paradigm. In this paper we present an approach for modelling Resilient Cyber Physical Production Systems (R-CPPS). The approach is conceived as: (i) data-driven, because recovery actions, modelled in a service-oriented architecture, are activated by sensor data measures collected on the CPPS subsystems and the surrounding production environment; (ii) context-based, since recovery services are associated with the steps of the production process as well as with the hierarchical organisation of the CPPS components involved in the recovery actions. The approach provides runtime selection of services, where the sensor data measures are used as service inputs and service outputs are displayed to the operators who supervise the CPPS subsystem on which recovery actions must be performed, enabling fast and effective resilience also in a Human-In-the-Loop scenario. The feasibility of the approach is demonstrated in a food industry case study.
2021
CEUR Workshop Proceedings
Altre Amm. Pubb. Italiane
Sergio Greco, Maurizio Lenzerini, Elio Masciari, Andrea Tagarelli
PE6_10 Web and information systems, database systems, information retrieval and digital libraries
Comitato scientifico
Inglese
no
29th Italian Symposium on Advanced Database Systems, SEBD 2021
2021
Pizzo Calabro (VV), Italy
Nazionale
STAMPA
2994
243
250
8
CEUR-WS
Context-aware resilience; Human-in-the-loop; Resilient cyber physical production system; Service-oriented architecture
no
Goal 9: Industry, Innovation, and Infrastructure
none
Bagozi, A.; Bianchini, D.; de Antonellis, V.
273
info:eu-repo/semantics/conferenceObject
3
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11379/554624
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