应用振动奇异性分析、刀具随机磨损和GPR-MOPSO混合算法监测和优化高速铣削能耗

IF 1.9 Q3 ENGINEERING, MANUFACTURING Manufacturing Review Pub Date : 2022-01-01 DOI:10.1051/mfreview/2022012
D. Hoang Tien, Tran Duc Quy, Thoa Pham Thi Thieu, N. D. Trinh
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引用次数: 1

摘要

制造业的电力消耗直接影响到生产成本和环境。因此,对机械加工过程中的功耗进行评估和研究是非常重要的。在高速铣削过程中,由于刀具磨损和径向偏差,功率消耗会发生变化。为此,提出了一种考虑刀具磨损和径向偏差的基于切削方式因素的模型功耗优化方法。在现有的功率消耗模型中,没有对径向偏差和刀具磨损的影响进行深入的研究。结合切削力分析模型和小波奇异振动点分析,建立了高速铣削过程中刀具的随机磨损。模型考虑了刀具随机磨损和刃口几何等非线性过程。为了优化电力消耗,建立电力消耗实时预测模型,提出了一种基于高斯过程回归(GPR)和多目标粒子群优化(MOPSO)的GPR - MOPSO混合算法。为了验证所提出的监测和优化模型的可行性,建立了高速铣削实验流程。结果表明,该改进模型与厂商手册中选择的工艺参数相比,能耗降低20.38%。
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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
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 radial deviation and tool wear have not been thoroughly investigated. Stochastic tool wears established during high-speed milling is established in combination with the cutting force analysis model and wavelet singularity vibration point analysis. The nonlinear processes due to stochastic tool wear and cutting edge geometry were considered in the model. To optimize power consumption and establish a model for the real-time prediction of power consumption, a new GPR–MOPSO hybrid algorithm was developed based on Gaussian process regression (GPR) and multi-objective particle swarm optimizations (MOPSO). In order to verify the feasibility proposed monitoring and optimization model, experimental processes high-speed milling have been established. Results showed that the presented improvement model will reduce power consumption by 20.38% compared with manufacturer manuals chosen process parameters.
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来源期刊
Manufacturing Review
Manufacturing Review ENGINEERING, MANUFACTURING-
CiteScore
5.40
自引率
12.00%
发文量
20
审稿时长
8 weeks
期刊介绍: The aim of the journal is to stimulate and record an international forum for disseminating knowledge on the advances, developments and applications of manufacturing engineering, technology and applied sciences with a focus on critical reviews of developments in manufacturing and emerging trends in this field. The journal intends to establish a specific focus on reviews of developments of key core topics and on the emerging technologies concerning manufacturing engineering, technology and applied sciences, the aim of which is to provide readers with rapid and easy access to definitive and authoritative knowledge and research-backed opinions on future developments. The scope includes, but is not limited to critical reviews and outstanding original research papers on the advances, developments and applications of: Materials for advanced manufacturing (Metals, Polymers, Glass, Ceramics, Composites, Nano-materials, etc.) and recycling, Material processing methods and technology (Machining, Forming/Shaping, Casting, Powder Metallurgy, Laser technology, Joining, etc.), Additive/rapid manufacturing methods and technology, Tooling and surface-engineering technology (fabrication, coating, heat treatment, etc.), Micro-manufacturing methods and technology, Nano-manufacturing methods and technology, Advanced metrology, instrumentation, quality assurance, testing and inspection, Mechatronics for manufacturing automation, Manufacturing machinery and manufacturing systems, Process chain integration and manufacturing platforms, Sustainable manufacturing and Life-cycle analysis, Industry case studies involving applications of the state-of-the-art manufacturing methods, technology and systems. Content will include invited reviews, original research articles, and invited special topic contributions.
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