To read this content please select one of the options below:

Assessing the implementation feasibility of intelligent production systems based on cloud computing, industrial internet of things and business social networks

Jiabao Sun (Lyceum of the Philippines University Batangas Campus, Batangas, Philippines) (School of Information and Mechanical and Electrical Engineering, Yuanpei College of Shaoxing University, Shaoxing, China)
Ting Yang (School of Information and Mechanical and Electrical Engineering, Yuanpei College of Shaoxing University, Shaoxing, China)
Zhiying Xu (School of Information and Mechanical and Electrical Engineering, Yuanpei College of Shaoxing University, Shaoxing, China)

Kybernetes

ISSN: 0368-492X

Article publication date: 18 October 2021

Issue publication date: 17 May 2022

280

Abstract

Purpose

The increasing demands for customized services and frequent market variations have posed challenges to managing and controlling the manufacturing processes. Despite the developments in literature in this area, less consideration has been devoted to the growth of business social networks, cloud computing, industrial Internet of things and intelligent production systems. This study recognizes the primary factors and their implications for intelligent production systems' success. In summary, the role of cloud computing, business social network and the industrial Internet of things on intelligent production systems success has been tested.

Design/methodology/approach

Intelligent production systems are manufacturing systems capable of integrating the abilities of humans, machines and processes to lead the desired manufacturing goals. Therefore, identifying the factors affecting the success of the implementation of these systems is necessary and vital. On the other hand, cloud computing and the industrial Internet of things have been highly investigated and employed in several domains lately. Therefore, the impact of these two factors on the success of implementing intelligent production systems is examined. The study is descriptive, original and survey-based, depending on the nature of the application, its target and the data collection method. Also, the introduced model and the information collected were analyzed using SMART PLS. Validity has been investigated through AVE and divergent validity. The reliability of the study has been checked out through Cronbach alpha and composite reliability obtained at the standard level for the variables. In addition, the hypotheses were measured by the path coefficients and R2, T-Value and GOF.

Findings

The study identified three variables and 19 sub-indicators from the literature associated that impact improved smart production systems. The results showed that the proposed model could describe 69.5% of the intelligence production systems' success variance. The results indicated that business social networks, cloud computing and the industrial Internet of things affect intelligent production systems. They can provide a novel procedure for intelligent comprehensions and connections, on-demand utilization and effective resource sharing.

Research limitations/implications

Study limitations are as below. First, this study ignores the interrelationships among the success of cloud computing, business social networks, Internet of things and smart production systems. Future studies can consider it. Second, we only focused on three variables. Future investigations may focus on other variables subjected to the contexts. Ultimately, there are fewer experimental investigations on the impact of underlying business social networks, cloud computing and the Internet of things on intelligent production systems' success.

Originality/value

The research and analysis outcomes are considered from various perspectives on the capacity of the new elements of Industry 4.0 for the manufacturing sector. It proposes a model for the integration of these elements. Also, original and appropriate guidelines are given for intelligent production systems investigators and professionals' designers in industry domains.

Keywords

Citation

Sun, J., Yang, T. and Xu, Z. (2022), "Assessing the implementation feasibility of intelligent production systems based on cloud computing, industrial internet of things and business social networks", Kybernetes, Vol. 51 No. 6, pp. 2044-2064. https://doi.org/10.1108/K-04-2021-0272

Publisher

:

Emerald Publishing Limited

Copyright © 2021, Emerald Publishing Limited

Related articles