Development of Sensor Network Data Analysis Management and Information System for Smart Factories
Abstract views: 55 / PDF downloads: 22
Keywords:
Industry 4.0, Smart Factory, Sensor, Management and Information SystemAbstract
Nowadays, with the rapidly developing technology, many innovations have entered our lives.
One of these technological advancements is Industry 4.0, known as the 4th Industrial Revolution, which
is a set of values consisting of the internet of things, internet services and cyber-physical system. The
Internet of Things (IoT) is used to send the received sensor data over the internet networks. IoT enables
data sharing and centralized control mechanisms without the need for any human intervention. The paper
aims to both reduce costs and ensure high efficiency. An intelligent system created with sensor networks
written in C# language provides great comfort for the personal usage and company. In Smart Factories,
which are equipped with automation systems that enable increased efficiency in production, real-time
monitoring and remote control, it is aimed to ensure that the development in any section is achieved from
a common point. Smart Factory Management Information System is a computer-based information
system that produces management reports by creating and summarizing transaction records of data
transferred through the sensors. This system in the Smart Factory provides energy efficiency in response
to the growing energy requirements. It also provides person in charge with ease in accessing information,
timely access, cost savings and system security. With the system to be built in this study, it is aimed to
control the smart system more easily in visual manner and to create a smart factory management and
information system that meets the requirements of Industry 4.0 with solid contribution.
Downloads
References
SJÖDIN, David R., et al. Smart Factory Implementation and Process Innovation: A Preliminary Maturity Model for Leveraging Digitalization in Manufacturing Moving to smart factories presents specific challenges that can be addressed through a structured approach focused on people, processes, and technologies. Research-technology management, 2018, 61.5: 22-31.
SHIRASE, Keiichi; NAKAMOTO, Keiichi. Simulation technologies for the development of an autonomous and intelligent machine tool. International Journal of Automation Technology, 2013, 7.1: 6-15.
WAN, Jiafu, et al. Artificial intelligence for cloud-assisted smart factory. IEEE Access, 2018, 6: 55419-55430.
OSTERRIEDER, Philipp; BUDDE, Lukas; FRIEDLI, Thomas. The smart factory as a key construct of industry 4.0: A systematic literature review. International Journal of Production Economics, 2020, 221: 107476.
BOLANAKIS, Dimosthenis E. A survey of research in microcontroller education. IEEE Revista Iberoamericana de Tecnologias del Aprendizaje, 2019, 14.2: 50-57.
VISHAL, Kumar; KUSHWAHA, Ajay Shriram. Mobile application development research based on xamarin platform. In: 2018 4th International Conference on Computing Sciences (ICCS). IEEE, 2018. p. 115-118.
Pulkit Sethi, “Xamarin Application Architecture,” 17-Jan-2018. [Online]. Available: https://blog.kloud.com.au/2018/01/17/xamarinapplication-architecture. [Accessed: 19-Jul-2018]