Machining—Recent Advances, Applications and Challenges

The Special Issue Machining—Recent Advances, Applications and Challenges is intended as a humble collection of some of the hottest topics in machining. The manufacturing industry is a varying and challenging environment where new advances emerge from one day to another. In recent years, new manufact...

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Year of Publication:2019
Language:English
Physical Description:1 electronic resource (554 p.)
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520 |a The Special Issue Machining—Recent Advances, Applications and Challenges is intended as a humble collection of some of the hottest topics in machining. The manufacturing industry is a varying and challenging environment where new advances emerge from one day to another. In recent years, new manufacturing procedures have retained increasing attention from the industrial and scientific community. However, machining still remains the key operation to achieve high productivity and precision for high-added value parts. Continuous research is performed, and new ideas are constantly considered. This Special Issue summarizes selected high-quality papers which were submitted, peer-reviewed, and recommended by experts. It covers some (but not only) of the following topics: High performance operations for difficult-to-cut alloys, wrought and cast materials, light alloys, ceramics, etc.; Cutting tools, grades, substrates and coatings. Wear damage; Advanced cooling in machining: Minimum quantity of lubricant, dry or cryogenics; Modelling, focused on the reduction of risks, the process outcome, and to maintain surface integrity; Vibration problems in machines: Active and passive/predictive methods, sources, diagnosis and avoidance; Influence of machining in new concepts of machine–tool, and machine static and dynamic behaviors; Machinability of new composites, brittle and emerging materials; Assisted machining processes by high-pressure, laser, US, and others; Introduction of new analytics and decision making into machining programming. We wish to thank the reviewers and staff from Materials for their comments, advice, suggestions and invaluable support during the development of this Special Issue. 
546 |a English 
653 |a in situ estimation 
653 |a modeling 
653 |a simulation 
653 |a variable pitch 
653 |a X-ray diffraction 
653 |a cutting edge preparation 
653 |a plastic zone 
653 |a flank milling 
653 |a surface roughness 
653 |a power consumption 
653 |a cutting tool 
653 |a fatigue 
653 |a additive manufacturing 
653 |a optimization 
653 |a trochoidal step 
653 |a surface topography 
653 |a sinusoidal grid 
653 |a milling 
653 |a desirability approach 
653 |a electrochemical discharge machining 
653 |a fast simulation 
653 |a Inconel 718 
653 |a secondary adhesion wear 
653 |a machinability 
653 |a hybrid stacks drilling 
653 |a cooling rate 
653 |a shape memory alloy 
653 |a residual stress 
653 |a diameter variation 
653 |a turning 
653 |a computer vision 
653 |a workholding 
653 |a on-machine monitoring 
653 |a chip morphology 
653 |a dry-cutting 
653 |a turning machine tools 
653 |a SACE-drilled hole depth 
653 |a residual stresses 
653 |a cryogenic machining 
653 |a prime machining costs 
653 |a PVD Ti0.41Al0.59N/Ti0.55Al0.45N coating 
653 |a single point incremental sheet forming 
653 |a butt weld joint 
653 |a dish angle 
653 |a machining characteristic 
653 |a DSC test 
653 |a segmented diamond blade 
653 |a cutting tool wear 
653 |a ultra-precision machining 
653 |a ceramics 
653 |a shape memory effect 
653 |a current density 
653 |a fractal dimension 
653 |a crack growth rate 
653 |a drilling 
653 |a force–temperature correlation through analytical modeling 
653 |a finite element model 
653 |a analytic solution 
653 |a aluminium 
653 |a taguchi method 
653 |a multi-objective optimization 
653 |a real-time prediction 
653 |a Gamma-TiAl 
653 |a cutting temperature 
653 |a EN 31 steel 
653 |a superalloys 
653 |a material-removal rate 
653 |a glass machining 
653 |a corner radius 
653 |a thin-wall machining 
653 |a vibration 
653 |a GPU 
653 |a titanium aluminides 
653 |a minimum quantity lubrication 
653 |a machining temperatures at two deformation zones 
653 |a finite element method 
653 |a roughness 
653 |a slight materials 
653 |a high computational efficiency 
653 |a dynamic 
653 |a adhesive 
653 |a heat transfer analysis 
653 |a connections 
653 |a stability 
653 |a vibrations 
653 |a trochoidal milling 
653 |a magnesium alloys 
653 |a specific cutting energy 
653 |a laser-assisted machining 
653 |a artificial neutral network 
653 |a microscopic analysis 
653 |a Milling stability 
653 |a topography 
653 |a weight loss 
653 |a modal testing 
653 |a sustainable machining 
653 |a dry 
653 |a damping 
653 |a ductile machining 
653 |a Inconel® 718 
653 |a modelling 
653 |a cutting edge microgeometry 
653 |a electropulsing 
653 |a PCD 
653 |a cutting geometry 
653 |a fixture 
653 |a artificial neural networks 
653 |a spark-assisted chemical engraving 
653 |a machining 
653 |a specific energy consumption 
653 |a heat transfer search algorithm 
653 |a material removal rate 
653 |a prediction 
653 |a CFRP/UNS A92024 
653 |a tool wear 
653 |a titanium alloy 
653 |a multi-beam laser 
653 |a chip compression ratio 
653 |a design of experiments 
653 |a concrete 
653 |a ANN 
653 |a titanium 
653 |a chatter 
653 |a response surface methodology 
653 |a machine tool 
653 |a superelastic nitinol 
653 |a optimal machining conditions 
653 |a machine vision 
653 |a steel sheet 
653 |a cutting process 
653 |a fracture mechanism 
653 |a self-excitation 
653 |a tool insert condition 
653 |a induction assisted milling 
653 |a hole quality 
653 |a GA 
653 |a titanium alloys 
653 |a microlens array 
653 |a parameter identification 
653 |a Taguchi method 
653 |a weld reinforcement 
653 |a slow tool servo 
653 |a cutting parameters 
653 |a flank super abrasive machining (SAM) 
653 |a stiffness properties 
653 |a grey relational analysis 
653 |a deflection 
653 |a computer numerical control 
653 |a grain density 
653 |a surface grinding 
653 |a the cutting force components 
653 |a Huber–Mises stress 
653 |a WEDM 
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