2021
DOI: 10.1007/s00170-021-07782-0
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Assessment of researches and case studies on Cloud Manufacturing: a bibliometric analysis

Abstract: Cloud computing technology has been studied in the context of industry 4.0 as a tool applied to manufacturing services and resources. Such concept is widely known as Cloud Manufacturing. This paper aims at mapping the current state of academic researches on this field, promoting the understanding of trends, references and practical applications in real-life conditions. A bibliometric analysis was conducted using two different databases -Scopus and Web of Sciences -and VOSviewer's text mining tools and techniqu… Show more

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Cited by 11 publications
(5 citation statements)
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References 62 publications
(58 reference statements)
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“…A Gaussian distribution was established for the generative probabilistic model behind the HMM, and the iteration number and hidden state number were solved as parameters. A penalization approach was applied to choose the optimal number of hidden states and iterations of training, using the Bayesian information criterion (BIC) [59,64], which selects the model minimizing the Bayesian posterior probability, defined, M * BIC : where the previous model M i is modified by i , a parameter vector with a length K i and N observations, * i , the maximum likelihood estimator of i and log likelihood L M i .…”
Section: Intention Training and Smoothingmentioning
confidence: 99%
See 1 more Smart Citation
“…A Gaussian distribution was established for the generative probabilistic model behind the HMM, and the iteration number and hidden state number were solved as parameters. A penalization approach was applied to choose the optimal number of hidden states and iterations of training, using the Bayesian information criterion (BIC) [59,64], which selects the model minimizing the Bayesian posterior probability, defined, M * BIC : where the previous model M i is modified by i , a parameter vector with a length K i and N observations, * i , the maximum likelihood estimator of i and log likelihood L M i .…”
Section: Intention Training and Smoothingmentioning
confidence: 99%
“…The incorporation of the cloud network, not covered indepth in this paper, makes the system easy to implement, as all processing may be performed using cloud computing [64]. Additionally, this system is kept low cost, as it does not require expensive, dedicated equipment or communication lines.…”
Section: Validation Of System Designmentioning
confidence: 99%
“…VOSviewer software was used to analyze and retrieve the keywords of "industrial-level knowledge graph" in the WOS database for the period of February 2022, and to cluster and analyze more than 700 documents related to it in the last 10 years, Figure 2 reveals a keyword co-occurrence graph in which the keywords of the authors and other related terms often used in titles and abstracts are taken into account, and each keyword in the graph is represented by a circle , the size of the circle is proportional to its frequency of occurrence, the position indicates the relationship between two different keywords and the line indicates the connection and association of concepts [7] . The data analysis process using VOSviewer software is mainly divided into 3 steps.…”
Section: Knowledge Graph Of Mechatronics Product Areamentioning
confidence: 99%
“…There is a growing interest in assessing the current state of academic studies. The bibliometric analysis method was used in many studies of service research, including ecosystem services evaluation (Chen et al, 2020), cloud manufacturing (Morelli and Ignacio, 2021), service innovation research (Sakata et al, 2013), smart cities research (Guo et al, 2019), research on goods and service tax (Dhar and Khandelwal, 2020), innovation metrics (Ferasso and Cherobim, 2017), service supply chain (Nagariya et al, 2019) and knowledge development in thoughtful tourism research (Johnson and Samakovlis, 2019). They all add essential pieces to service research.…”
Section: Introductionmentioning
confidence: 99%