迈向可持续和智能加工:介质辅助加工的能源足迹和刀具状态监测

Q2 Engineering Journal of Machine Engineering Pub Date : 2023-05-24 DOI:10.36897/jme/166463
H. Dogan, Llyr Jones, S. Hall, A. Shokrani
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引用次数: 0

摘要

减少能源消耗是实现净零制造目标的必要条件。在考虑刀具和切削液蕴含能量的情况下,研究了不同冷却/润滑方式加工Ti-6Al-4V合金的总能量足迹。以前的研究集中在降低与机床和切削液相关的能耗上。然而,本研究的研究表明了刀具蕴含能的重要性。新的冷却/润滑方法,如ws2 -油悬浮,可以通过延长刀具寿命来减少加工的能源足迹。通常在刀具使用寿命结束之前就更换刀具,以防止对工件的损坏,有效地浪费了刀具的一部分蕴含能量。通过训练和验证深度学习方法,可以根据来自无线传感刀架的传感器信号识别何时需要更换工具。结果表明,该网络能够对90%以上的工具进行正确分类。这使得在更换刀具之前充分利用刀具的整个使用寿命,从而减少加工过程的总体能源足迹
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Towards Sustainable and Intelligent Machining: Energy Footprint and Tool Condition Monitoring for Media-Assisted Processes
Reducing energy consumption is a necessity towards achieving the goal of net-zero manufacturing. In this paper, the overall energy footprint of machining Ti-6Al-4V using various cooling/lubrication methods is investigated taking the embodied energy of cutting tools and cutting fluids into account. Previous studies concentrated on reducing the energy consumption associated with the machine tool and cutting fluids. However, the investigations in this study show the significance of the embodied energy of cutting tool. New cooling/lubrication methods such as WS 2 -oil suspension can reduce the energy footprint of machining through extending tool life. Cutting tools are commonly replaced early before reaching their end of useful life to prevent damage to the workpiece, effectively wasting a portion of the embodied energy in cutting tools. A deep learning method is trained and validated to identify when a tool change is required based on sensor signals from a wireless sensory toolholder. The results indicated that the network is capable of classifying over 90% of the tools correctly. This enables capitalising on the entirety of a tool’s useful life before replacing the tool and thus reducing the overall energy footprint of machining processes
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来源期刊
Journal of Machine Engineering
Journal of Machine Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
2.70
自引率
0.00%
发文量
36
审稿时长
25 weeks
期刊介绍: ournal of Machine Engineering is a scientific journal devoted to current issues of design and manufacturing - aided by innovative computer techniques and state-of-the-art computer systems - of products which meet the demands of the current global market. It favours solutions harmonizing with the up-to-date manufacturing strategies, the quality requirements and the needs of design, planning, scheduling and production process management. The Journal'' s subject matter also covers the design and operation of high efficient, precision, process machines. The Journal is a continuator of Machine Engineering Publisher for five years. The Journal appears quarterly, with a circulation of 100 copies, with each issue devoted entirely to a different topic. The papers are carefully selected and reviewed by distinguished world famous scientists and practitioners. The authors of the publications are eminent specialists from all over the world and Poland. Journal of Machine Engineering provides the best assistance to factories and universities. It enables factories to solve their difficult problems and manufacture good products at a low cost and fast rate. It enables educators to update their teaching and scientists to deepen their knowledge and pursue their research in the right direction.
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