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A word cloud is a visual representation of the most frequently used words in a text or a set of texts. The words appear in different sizes, with the size of each word being proportional to its frequency of occurrence in the text. The more frequently a word is used, the larger it appears in the word cloud. This technique allows for a quick visualization of the most important themes and concepts in a text.
In the context of this page, the word cloud was generated from the publications of the author {}. The words in this cloud come from the titles, abstracts, and keywords of the author's articles and research papers. By analyzing this word cloud, you can get an overview of the most recurring and significant topics and research areas in the author's work.
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Anahid, M. J., Heydarnia, H., Niknam, S. A., & Mehmanparast, H. (2020). Evaluating the sensitivity of acoustic emission signal features to the variation of cutting parameters in milling aluminum alloys: Part A: frequency domain analysis. Proceedings of the Institution of Mechanical Engineers, Part B: Journal of Engineering Manufacture, 235(10), 1558-1568. External link
Asadi, R., Yeganefar, A., & Niknam, S. A. (2019). Optimization and prediction of surface quality and cutting forces in the milling of aluminum alloys using ANFIS and interval type 2 neuro fuzzy network coupled with population-based meta-heuristic learning methods. International Journal of Advanced Manufacturing Technology, 105(5-6), 2271-2287. External link
Kamalizadeh, S., Niknam, S. A., Balazinski, M., & Turenne, S. (2022). The Use of TOPSIS Method for Multi-Objective Optimization in Milling Ti-MMC. Metals, 12(11), 18 pages. External link
Kamalizadeh, S., Niknam, S. A., Asgari, A., & Balazinski, M. (2018). Tool wear characterization in high-speed milling of titanium metal matrix composites. International Journal of Advanced Manufacturing Technology, 100(9-12), 2901-2913. External link
Musavi, S. H., Sepehrikia, M., Davoodi, B., & Niknam, S. A. (2022). Performance analysis of developed micro-textured cutting tool in machining aluminum alloy 7075-T6: assessment of tool wear and surface roughness. International Journal of Advanced Manufacturing Technology, 119(5-6), 3343-3362. External link
Memarianpour, M., Niknam, S. A., Turenne, S., & Balazinski, M. (2021). Study of the effects of initial cutting conditions and transition period on ultimate tool life when machining inconel 718. Materials, 14(3), 592 (13 pages). Available
Memarianpour, M., Niknam, S. A., Turenne, S., & Balazinski, M. (2020). Initial Tool Wear Behavior in High-Speed Turning of Inconel 718. Transactions of the Canadian Society for Mechanical Engineering, 44(3), 395-404. External link
Memarianpour, M., Niknam, S. A., Turenne, S., & Balazinski, M. (2018, December). Initial Tool Wear Mechanism in Dry and Lubricated Turning of Inconel 718 [Paper]. International Conference on Advances in Engineering Research and Application (ICERA 2018), Thai Nguyen, Vietnam. External link
Niknam, S. A., & Jalali, A. (2020). Effects of lubricants and flow rates on the surface roughness and chip thickness when MQL turning of aero-engine aluminum alloys 6061-T6 and 7076-T6. International Journal of Advanced Manufacturing Technology, 110(7-8), 2015-2022. External link
Niknam, S. A., Saberi, M., Kouam, J., Hashemi, R., Songmene, V., & Balazinski, M. (2019). Ultrafine and fine particle emission in turning titanium metal matrix composite (Ti-MMC). Journal of Central South University, 26(6), 1563-1572. External link
Niknam, S. A., Kouam, J., Songméné, V., & Balazinski, M. (2018). Dry and semi-dry turning of titanium metal matrix composites (Ti-MMCs). Procedia CIRP, 77, 62-65. Available
Niknam, S. A., Kamalizadeh, S., Asgari, A., & Balazinski, M. (2018). Turning titanium metal matrix composites (Ti-MMCs) with carbide and CBN inserts. International Journal of Advanced Manufacturing Technology, 97(1-4), 253-265. External link
Niknam, S. A., Balazinski, M., & Songmené, V. (2017). To characterize and optimize the surface quality attributes in slot milling operation. International Journal of Advanced Manufacturing Technology, 97(1-4), 727-746. External link
Safavi, M., Balazinski, M., Mehmanparast, H., & Niknam, S. A. (2020). Experimental characterization of tool wear morphology and cutting force profile in dry and wet turning of titanium metal matrix composites (Ti-MMCs). Metals, 10(11), 14 pages. Available
Saberi, M., Niknam, S. A., & Hashemi, R. (2020). On the impacts of cutting parameters on surface roughness, tool wear mode and size in slot milling of A356 metal matrix composites reinforced with silicon carbide elements. Proceedings of the Institution of Mechanical Engineers, Part B: Journal of Engineering Manufacture, 235(10), 1655-1667. External link