2022
DOI: 10.1051/mfreview/2022012
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Application of vibration singularity analysis, stochastic tool wear, and GPR-MOPSO hybrid algorithm to monitor and optimise power consumption in high-speed milling

Dung Hoang Tien,
Tran Duc Quy,
Thoa Pham Thi Thieu
et al.

Abstract: Power consumption in manufacturing direct affects production costs and the environment. Therefore, the process of evaluating and researching power consumption in the machining process is very important. During high-speed milling, the power consumption varie`s due to tool wear and radial deviation. Therefore, a new model power consumption optimization is proposed based on cutting mode factors taking into account tool wear and radial deviation. In the existing power consumption models, studies on the effects of … Show more

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Cited by 1 publication
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“…-The position of the elite solutions used in the revision method helps maintain the diversity of solutions, and demonstrate strength and high convergence. While, some optimization algorithms omitted this methodology, or this the problem about other remaining algorithms like PSO and GA [7][8][9] results in a pre-mature convergence of algorithm and plighting in local optima.…”
Section: Introductionmentioning
confidence: 99%
“…-The position of the elite solutions used in the revision method helps maintain the diversity of solutions, and demonstrate strength and high convergence. While, some optimization algorithms omitted this methodology, or this the problem about other remaining algorithms like PSO and GA [7][8][9] results in a pre-mature convergence of algorithm and plighting in local optima.…”
Section: Introductionmentioning
confidence: 99%