2021
DOI: 10.1049/cim2.12007
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RETRACTED: A novel method of material demand forecasting for power supply chains in industrial applications

Abstract: Based on research on big data, data mining and other relevant technical theories, a power material demand analysis system is designed and implemented based on big data technology. The main aim of the study is to forecast material demand and provide data support for decision-makers. The system includes a data centre subsystem and an application subsystem. At the same time, two kinds of collaborative transmission process models of supply chain information are established, and simulation analysis is carried out o… Show more

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Cited by 6 publications
(4 citation statements)
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“…e fundamental challenge is to fix the optimization problem of a complicated web, set the optimal solution in the computer formula as per the planning purpose, encounter the restriction situations of the physical and logical network activity, and create the optimum design strategy that use the optimization approach [9]. Artificial intelligence, or AI, has the ability to lessen energy waste, lower electricity prices, and accelerate the introduction of clean renewable energy sources in global power networks [10,11].…”
Section: Artificial Intelligence Technology and Power Systemmentioning
confidence: 99%
“…e fundamental challenge is to fix the optimization problem of a complicated web, set the optimal solution in the computer formula as per the planning purpose, encounter the restriction situations of the physical and logical network activity, and create the optimum design strategy that use the optimization approach [9]. Artificial intelligence, or AI, has the ability to lessen energy waste, lower electricity prices, and accelerate the introduction of clean renewable energy sources in global power networks [10,11].…”
Section: Artificial Intelligence Technology and Power Systemmentioning
confidence: 99%
“…To update the cell status, multiply the two outcomes together. e expression is shown in formulas ( 2) and (3).…”
Section: Lstm Algorithmmentioning
confidence: 99%
“…Hence, there is an urgency to develop a system that has high research value as well as has application aspects. Versatile design along with the safety parameters is much needed in the industry [1][2][3]. China's annual elevator demand still maintains a 5%-7% growth, mainly due to the abolition and renewal of old elevators, which cannot meet the requirements of safety, energy saving, environmental protection, secondary technical supervision, and new regulations and policies [4].…”
Section: Introductionmentioning
confidence: 99%
“…et al (2021),Wang et al (2020b),,Xiao et al (2021),Amalnick et al (2019),Spiliotis et al (2020),Abolghasemi et al (2020),Lalou et al (2020),Nikolopoulos et al (2021),Gustriansyah et al (2020), Feizabadi (2020,He and Yin (2021), Inedi et al (2020), Bajaj et al (2020), Weng et al (2019), Matthew & Abdullah (2021), Garrido-Labrador et al (2020), van Belle et al (2021), Meng (2021), Li and Kockelman (2022), Croce et al (2021 Massaro et al (2021), Yu et al (2021e), Cho (2020), Dou et al (2021), Zhang and Mu (2021), Chen et al (2020b), Aktepe et al (2021), Jiang et al (2021a), Xu et al (2021a), Li et al (2021c), Chandriah and Naraganahalli (2021), Liu et al (2021), Ye et al (2020). Demand sensing Sathyan et al (2021), Pereira and Frazzon (2021), Martínez et al (2020), Grzybowska et al (2020), Bhutada et al (2020), van Steenbergen and Mes (2020), Jain and Kumar (2020), Li et al (2021a), Bilgic et al (2021), Taghikhah et al (2021), Türk et al (2021), Shokouhyar et al (2021), Barnes et al (2021), Wu et al (2021), García-Barrios et al (2021), Anglou et al (2021), Wei et al (2020), Migdał-Najman et al (2020) Demand shaping Safara (2020), Verma et al (2020), Lam et al (2021), Lisnawati and Sinaga (2020), Xu et al (2021b), Song and Xue (2021), Kalinin et al (2020), Iftikhar and Khan (2020), Shahbazi et al (2020), Yang et al (2021c), Li et al (2021b) Other Konishi et al (2021), Jo and Lee (2021), Brandtner et al (2021), Vijayaragavan et al (2020), Alqwadri et al (2021)…”
mentioning
confidence: 98%