2020
DOI: 10.1109/access.2020.3011254
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Top-Down Human-Cyber-Physical Data Fusion Based on Reinforcement Learning

Abstract: With the development of industrial Internet and artificial intelligence, data fusion in crossdomains and cross-layers have become an inevitable trend. Most of the data fusion involved in the production process of hot rolling are concentrated on the level of sensors, Internet of Things (IoT) and the Internet; but human data are not well integrated. In order to avoid the human factor from becoming the bottleneck of the entire production schedule, this paper proposes a ternary data fusion model based on reinforce… Show more

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Cited by 14 publications
(5 citation statements)
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“…As depicted in Figure 5.1, we additionally removed four studies (SHA; ZEADALLY, 2015;DAI et al, 2017;JIANG;CHEN;LIU, 2021;HÄNEL et al, 2021) that obtained a score inferior to five, which in our judgment, denotes irrelevance to our SLR. Thus, our final selection includes 57 studies that are aligned with the primary objective of our SLR.…”
Section: Quality Assessmentmentioning
confidence: 99%
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“…As depicted in Figure 5.1, we additionally removed four studies (SHA; ZEADALLY, 2015;DAI et al, 2017;JIANG;CHEN;LIU, 2021;HÄNEL et al, 2021) that obtained a score inferior to five, which in our judgment, denotes irrelevance to our SLR. Thus, our final selection includes 57 studies that are aligned with the primary objective of our SLR.…”
Section: Quality Assessmentmentioning
confidence: 99%
“…Several works (PROPER; BORK; POELS, 2021; GÓMEZ-BERBÍS; AMESCUA-SECO, 2019;SAHLAB et al, 2021; AZZAM et al, 2019;JIRKOVSKY;OBITKO;MARIK, 2017) proposed an ontology, and the use of a RDF graph to relate the conceptual data model and domain data. Based on three ontologies,(CHEN et al, 2020) proposed a data model based on an ontological layer and a method addressing data fusion and entity resolution. We also found four studies (CHEVALLIER; FINANCE;…”
mentioning
confidence: 99%
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“…For instance, a hybrid approach was built to gain an effective representation of sentence semantics and output the maximum probability sequence for chemicalnamed entity recognition [4]. A reinforcement learning approach was deployed to collect knowledge from the ternary space of humans, cyberspace and the Internet of Things (IoT) [21]. The interdependencies between different time series and the before-and-after relations of time series were mined using a CNN and LSTM, respectively [22].…”
Section: B Industrial Kg Constructionmentioning
confidence: 99%
“…RL, a branch of ML in which an agent learns to make sequential decisions through interactions with an environment, is considered in [44], [53], [54], [67], [77]. The research focused on the context of planning and control in the business plan and logistics industrial systems.…”
mentioning
confidence: 99%