scholarly journals Industry 4.0 for Pharmaceutical Manufacturing: Preparing for the Smart Factories of the Future

Author(s):  
N. Sarah Arden ◽  
Adam C. Fisher ◽  
Katherine Tyner ◽  
Lawrence X. Yu ◽  
Sau L. Lee ◽  
...  
2017 ◽  
Vol 107 (04) ◽  
pp. 273-279
Author(s):  
T. Knothe ◽  
A. Ullrich ◽  
N. Weinert

Die Transformation in die „intelligente“ und vernetzte Fabrik der Zukunft folgt einem schrittweise iterativ ablaufenden Prozess. Besonderer Wert ist dabei auf die schnelle Realisierung von Prototypen und einzelnen Maßnahmen zu legen, um rasch Ergebnisse zu erzielen. Gefördert wird mit diesem Vorgehen nicht zuletzt auch das Verständnis und die Partizipationsbereitschaft der beteiligten Mitarbeiter, die somit früher in konkrete Entwicklungen eingebunden werden und diese mitgestalten können. Das Projekt „MetamoFAB“ hat Methoden sowie Hilfsmittel entwickelt, die beim Planen und Umsetzen der Transformation unterstützen. Diese wurden zudem exemplarisch in Fallbeispielen erprobt.   The transformation towards intelligent and interconnected Factories of the future follows a stepwise, iterative approach. For quickly achieving results, a fast realization of haptic prototypes is crucial. By this, not at least understanding and willingness for participation of involved employees is raised, including them early phases of the transformation. The project MetamoFAB has developed methods and tools supporting this transformation process during planning and implementation. The applicability has been demonstrated exemplarily in use cases.


2017 ◽  
Vol 21 (2) ◽  
pp. 20-27 ◽  
Author(s):  
Jozef Kováč ◽  
Peter Malega ◽  
Juraj Kováč

2019 ◽  
Vol 38 ◽  
pp. 333-340 ◽  
Author(s):  
Jens F. Buhl ◽  
Rune Grønhøj ◽  
Jan K. Jørgensen ◽  
Guilherme Mateus ◽  
Daniela Pinto ◽  
...  

CIRP Annals ◽  
2020 ◽  
Vol 69 (2) ◽  
pp. 668-692 ◽  
Author(s):  
Robert X. Gao ◽  
Lihui Wang ◽  
Moneer Helu ◽  
Roberto Teti

2019 ◽  
Vol 7 ◽  
Author(s):  
Patrik Grznár ◽  
Martin Krajčovič ◽  
Štefan Mozol ◽  
Marek Schickerle ◽  
Gabriela Gabajová ◽  
...  

The current development in production is directed towards a system called socio-cyber-physical, where humans, machine facilities, materials, technologies and the environment work together. Processes in companies are enrolling in a platform called Industry 4.0. Production is more similar to a living organism where the planned dynamic in the field of logistic and production elements of the system are exchange by emergent dynamically moving fully adaptable autonomous agents. Agents are plant facilities that have software implemented with decisions rules and are not control by human. These autonomous agents communicate and interact with each other in a protocol. In the factories of the future, presence of humans is also predicted and therefore the humanization of communication and interaction between human and agents of system must be considered. The human becomes a living agent who will communicate with others and collaborate to achieve goals. In individual workplaces, agents will serve and support humans in service, production, inspection, supply etc. but also a human will do that for agents. Although production will behave Emergent it is necessary that the activity of agents support the activities of humans in the workplace and that is not possible without communication. In this point there is a need for mastering the communication between the human and the agent and this can be done through Chatbot systems. This paper is aimed at designing a potential coordination system between humans and agents in factories of the future by using Chatbot systems.


Author(s):  
Jared T. Flowers ◽  
Gloria J. Wiens

Abstract Industry 4.0 projects ubiquitous collaborative robots in smart factories of the future, particularly in assembly and material handling. To ensure efficient and safe human-robot collaborative interactions, this paper presents a novel algorithm for estimating Risk of Passage (ROP) a robot incurs by passing between dynamic obstacles (humans, moving equipment, etc.). This paper posits that robot trajectory durations will be shorter and safer if the robot can react proactively to predicted collision between a robot and human worker before it occurs, compared to reacting when it is imminent. I.e., if the risk that obstacles may prohibit robot passage at a future time in the robot’s trajectory is greater than a user defined risk limit, then an Obstacle Pair Volume (OPV), encompassing the obstacles at that time, is added to the planning scene. Results found from simulation show that an ROP algorithm can be trained in ∼120 workcell cycles. Further, it is demonstrated that when a trained ROP algorithm introduces an OPV, trajectory durations are shorter compared to those avoiding obstacles without the introduction of an OPV. The use of ROP estimation with addition of OPV allows workcells to operate proactively smoother with shorter cycle times in the presence of unforeseen obstacles.


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