2021
DOI: 10.1016/j.jclepro.2020.125556
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Adaptive predictive control for peripheral equipment management to enhance energy efficiency in smart manufacturing systems

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Cited by 9 publications
(5 citation statements)
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References 24 publications
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“…The experimental results of the proposed methodology on ball milling processes showed a 3%-4% reduction in total energy consumption. Kellens et al [45] demonstrated a power measurement for a metal-cutting process to reduce standby energy and optimize the process parameters. Bermeo-Ayerbe et al [46] presented adaptive predictive control for equipment management to enhance energy efficiency.…”
Section: Smart Manufacturingmentioning
confidence: 99%
“…The experimental results of the proposed methodology on ball milling processes showed a 3%-4% reduction in total energy consumption. Kellens et al [45] demonstrated a power measurement for a metal-cutting process to reduce standby energy and optimize the process parameters. Bermeo-Ayerbe et al [46] presented adaptive predictive control for equipment management to enhance energy efficiency.…”
Section: Smart Manufacturingmentioning
confidence: 99%
“…Bermeo-Ayerbe et al. [ 74 ] proposed an adaptive predictive control mechanism that manages the devices' energy consumption profile in the industrial environment. The method reduced energy consumption by 2% and sudden power peaks of more than 11%.…”
Section: Advancement In Energy Efficiency Modellingmentioning
confidence: 99%
“…In the case of a production enterprise, a methodology for developing it into a smart and sustainable production enterprise with sensing is developed by Chavarría-Barrientos et al [7]. Furthermore, an increasement in energy efficiency in a smart production system by controlling peripheral equipment is done by Bermeo-Ayerbe et al [4]. Alavian et al [2] developed a programmable production advisor that is able to find the current status of the system and improvements of a smart production system.…”
Section: Smart Production Systemmentioning
confidence: 99%
“…Production system Reliability Carbon Geometric Setup cost emission programming Leung [21] EPQ Production process NA Degree = 1 Variable Liu [22] NA NA NA Degree = 0 NA Liu [23] NA NA NA Signomial NA Sadjadi et al [25] NA Production process NA Considered Variable Ahmed and Sarkar [1] Sustainable NA Considered NA NA Chavarrían-Barrientos [7] Smart and sustainable NA NA NA NA Jafarian et al [17] NA NA NA Considered NA Kusiak [20] Smart NA NA NA NA Tiwari et al [31] Sustainable NA Considered NA NA Wang et al [32] Constant NA Considered NA NA Asim et al [3] Hybrid Cost NA NA Reduced Cao and Wang [5] NA NA NA Fuzzy NA Chassein and Goerigk [6] NA NA NA Robust NA Dressler et al [11] NA NA NA Considered NA El-Wakeel et al [12] NA NA NA Considered NA Ghavami et al [13] NA NA NA Fuzzy NA Guchhait et al [16] Constant Unreliable SCM NA NA NA Sarkar [26] Multi-stage, multi-cycle NA NA NA Reduced Alavian et al [2] Smart NA NA NA NA Ghobakhloo [14] Smart NA NA NA NA Nahas [24] Production line Unreliable NA NA NA Sarkar et al [27] Single-stage, clean NA NA NA Constant Sarkar and Sarkar [30] Sustainable, smart, NA Considered NA Reduced multi-stage Bermeo-Ayerbe et al [4] Smart NA NA NA NA Chen et al [8] Multi…”
Section: Table 1 Authors Contribution Tablementioning
confidence: 99%