dc.contributor.author | Mastrandrea, Nicola | |
dc.date.accessioned | 2024-06-05T11:03:33Z | |
dc.date.available | 2024-06-05T11:03:33Z | |
dc.date.issued | 2021-11-11 | |
dc.identifier.uri | http://elea.unisa.it/xmlui/handle/10556/6976 | |
dc.description | 2020 - 2021 | it_IT |
dc.description.abstract | Cloud Manufacturing is a resource-sharing paradigm that provides on-demand access
to a pool of manufacturing resources and capabilities to utilize geographically scattered
resources in a service-oriented model. These services are rapidly provisioned and
released with minimal management effort via the Industrial Internet of Things and its
underlying IT infrastructure, architecture models, and data and information exchange
protocols and standards. In this context, the tradeoff between resources’ autonomy and
independence exigencies and platform needs for centralized control and coordination is
a crucial enabler factor for implementing such vertically or horizontally integrated
cyber-physical systems for intelligent manufacturing. The introduction of resources
autonomy and network independence in a distributed cloud manufacturing system
enables platforms with equal and open access to shared resources in a more sustainable
way and potentially with higher scalability of manufacturing resources and capabilities.
This work aims to develop a framework to manage distributed operations in cloud
manufacturing based on autonomous resources. This research investigates network
architectures in the context of distributed Cloud Manufacturing systems with
autonomous and independent resources to identify critical parameters that determine
whether an efficient deployment is viable for a given scenario.
The framework includes: (i) a network architecture for a distributed Cloud
Manufacturing platform based on autonomous nodes; (ii) a Multi-agent Systems
architecture for managing communications and coordination issues in distributed
operations; (iii) an implementation of the proposed network architecture in the context
of large Additive Manufacturing networks; (iv) a unique optimization algorithm that
combines scheduling and logistics issues inside such network. Additionally, an
implementation of the Multi-Agent Systems architecture has been developed to offer
practical guidance for implementing the framework into context closer to the industry
and real life.
A literature review was conducted to analyze the research area to accomplish the goal
and objectives of this work. Next, a framework was outlined to identify, assess, and
control dynamics and issues inside the network. Two well-known and established
approaches were used to implement the communication and coordination system and
the optimization of the platform in this research: Multi-agent Systems to tackle the
dynamic task arrival, the downtime of machines, the identification of the anomalous
tasks; and Operation Research techniques to tackle logistics and to schedule global
optimization for a job order.
Results from this work are beneficial for both academia and industry in understanding
aspects involving new varieties of cloud manufacturing networks. The principal
contribution is a framework that offers new insights and outlines new issues on how to
deal with autonomous and independent resources inside a Cloud Manufacturing
platform and how to manage global optimization and long-term sustainability of such
networks. Finally, this study also introduced a novel cloud manufacturing taxonomy,
including a list of actors, a list of platform services and functionalities. [edited by Author] | it_IT |
dc.language.iso | en | it_IT |
dc.publisher | Universita degli studi di Salerno | it_IT |
dc.subject | Cloud Manufacturing | it_IT |
dc.subject | Operations Management | it_IT |
dc.subject | Industry 4.0 | it_IT |
dc.title | SCATTERED MANUFACTURING DEVELOPING A CLOUD MANUFACTURING FRAMEWORK BASED ON AUTONOMOUS RESOURCES | it_IT |
dc.type | Doctoral Thesis | it_IT |
dc.subject.miur | ING-IND/17 IMPIANTI INDUSTRIALI MECCANICI | it_IT |
dc.contributor.coordinatore | Antonelli, Valerio | it_IT |
dc.description.ciclo | XXXIII ciclo | it_IT |
dc.contributor.tutor | De Falco, Massimo | it_IT |
dc.identifier.Dipartimento | Dipartimento di Scienze Aziendali - Management & Innovation Systems/DISA-MIS | it_IT |