2020
DOI: 10.1016/j.ijepes.2019.105508
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Industry 4.0 based process data analytics platform: A waste-to-energy plant case study

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Cited by 118 publications
(44 citation statements)
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“…Before the test and results, it appeared that the impacts were negative, due to the extensive use of materials, energy, and information, and a poor discharge of waste, but the situation has been transformed into one with more positive impacts. This can be facilitated by the use of big data analytics in Industry 4.0 to produce only what is needed and factoring how the waste can be turned to energy use that does not cause pollution to the environment [112].…”
Section: Deploymentmentioning
confidence: 99%
“…Before the test and results, it appeared that the impacts were negative, due to the extensive use of materials, energy, and information, and a poor discharge of waste, but the situation has been transformed into one with more positive impacts. This can be facilitated by the use of big data analytics in Industry 4.0 to produce only what is needed and factoring how the waste can be turned to energy use that does not cause pollution to the environment [112].…”
Section: Deploymentmentioning
confidence: 99%
“…While the technology evolves rather fast and it requires organizations to be adapted in a fast pace. There are a very large set of publications digging in different types of applications [45][46][47][48].…”
Section: Manufacturing Casementioning
confidence: 99%
“…The process data analytics platform was built around the concept of industry 4.0 for studying the syngas heating values and flue gas temperatures in waste to energy plants. A neural network-NARX model developed to evaluate the performance of waste to the energy system well described the dynamic behavior of the system compared with conventional statistical techniques [1].…”
Section: Of 33mentioning
confidence: 99%
“…The key challenges industries are facing today are data collection, storage, integration, processing, and analysis. The scientific literature addressing these problems is scarce [1,2]. The analysis of such raw industrial data using advanced data analytics and AI algorithms can identify significant operational savings and suggest areas of useful technological improvements, i.e., the optimum industrial outputs, better product quality, and sustainable growth of the industries.…”
Section: Introductionmentioning
confidence: 99%