Materials Map

Discover the materials research landscape. Find experts, partners, networks.

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The Materials Map is an open tool for improving networking and interdisciplinary exchange within materials research. It enables cross-database search for cooperation and network partners and discovering of the research landscape.

The dashboard provides detailed information about the selected scientist, e.g. publications. The dashboard can be filtered and shows the relationship to co-authors in different diagrams. In addition, a link is provided to find contact information.

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Materials Map under construction

The Materials Map is still under development. In its current state, it is only based on one single data source and, thus, incomplete and contains duplicates. We are working on incorporating new open data sources like ORCID to improve the quality and the timeliness of our data. We will update Materials Map as soon as possible and kindly ask for your patience.

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Khanna, Sakshum

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in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (7/7 displayed)

  • 2024Experimental investigations on microstructure and mechanical properties of wall structure of SS309L using wire-arc additive manufacturing8citations
  • 2023A parametric study and experimental investigations of microstructure and mechanical properties of multi-layered structure of metal core wire using wire arc additive manufacturing10citations
  • 2022Multi-Response Optimization of Al2O3 Nanopowder-Mixed Wire Electrical Discharge Machining Process Parameters of Nitinol Shape Memory Alloy27citations
  • 2022Experimental investigations on mechanical properties of multi-layered structure fabricated by GMAW-based WAAM of SS316L103citations
  • 2022Effect of multi-walled structure on microstructure and mechanical properties of 1.25Cr-1.0Mo steel fabricated by GMAW-based WAAM using metal-cored wire25citations
  • 2021Parametric Optimization and Effect of Nano-Graphene Mixed Dielectric Fluid on Performance of Wire Electrical Discharge Machining Process of Ni55.8Ti Shape Memory Alloy46citations
  • 2021Parametric Optimization and Effect of Nano-Graphene Mixed Dielectric Fluid on Performance of Wire Electrical Discharge Machining Process of Ni55.8Ti Shape Memory Alloy46citations

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Patel, Vivek
3 / 20 shared
Vora, Jay
5 / 10 shared
Chaudhari, Rakesh
5 / 10 shared
Raja, Bansi D.
1 / 1 shared
Patel, Vivek K.
3 / 6 shared
Bhatt, Rushikesh
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Vaghasia, Vatsal
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Giasin, Khaled
1 / 48 shared
Prajapati, Parth
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Doshi, Mikesh
1 / 1 shared
Parmar, Heet
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Parikh, Nipun
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Ayesta Rementeria, Izaro
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López De Lacalle Marcaide, Luis Norberto
1 / 23 shared
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Co-Authors (by relevance)

  • Patel, Vivek
  • Vora, Jay
  • Chaudhari, Rakesh
  • Raja, Bansi D.
  • Patel, Vivek K.
  • Bhatt, Rushikesh
  • Vaghasia, Vatsal
  • Giasin, Khaled
  • Prajapati, Parth
  • Doshi, Mikesh
  • Parmar, Heet
  • Parikh, Nipun
  • Ayesta Rementeria, Izaro
  • López De Lacalle Marcaide, Luis Norberto
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article

Multi-Response Optimization of Al2O3 Nanopowder-Mixed Wire Electrical Discharge Machining Process Parameters of Nitinol Shape Memory Alloy

  • Giasin, Khaled
  • Khanna, Sakshum
  • Prajapati, Parth
  • Patel, Vivek K.
Abstract

<jats:p>Shape memory alloy (SMA), particularly those having a nickel–titanium combination, can memorize and regain original shape after heating. The superior properties of these alloys, such as better corrosion resistance, inherent shape memory effect, better wear resistance, and adequate superelasticity, as well as biocompatibility, make them a preferable alloy to be used in automotive, aerospace, actuators, robotics, medical, and many other engineering fields. Precise machining of such materials requires inputs of intellectual machining approaches, such as wire electrical discharge machining (WEDM). Machining capabilities of the process can further be enhanced by the addition of Al2O3 nanopowder in the dielectric fluid. Selected input machining process parameters include the following: pulse-on time (Ton), pulse-off time (Toff), and Al2O3 nanopowder concentration. Surface roughness (SR), material removal rate (MRR), and recast layer thickness (RLT) were identified as the response variables. In this study, Taguchi’s three levels L9 approach was used to conduct experimental trials. The analysis of variance (ANOVA) technique was implemented to reaffirm the significance and adequacy of the regression model. Al2O3 nanopowder was found to have the highest contributing effect of 76.13% contribution, Ton was found to be the highest contributing factor for SR and RLT having 91.88% and 88.3% contribution, respectively. Single-objective optimization analysis generated the lowest MRR value of 0.3228 g/min (at Ton of 90 µs, Toff of 5 µs, and powder concentration of 2 g/L), the lowest SR value of 3.13 µm, and the lowest RLT value of 10.24 (both responses at Ton of 30 µs, Toff of 25 µs, and powder concentration of 2 g/L). A specific multi-objective Teaching–Learning-Based Optimization (TLBO) algorithm was implemented to generate optimal points which highlight the non-dominant feasible solutions. The least error between predicted and actual values suggests the effectiveness of both the regression model and the TLBO algorithms. Confirmatory trials have shown an extremely close relation which shows the suitability of both the regression model and the TLBO algorithm for the machining of the nanopowder-mixed WEDM process for Nitinol SMA. A considerable reduction in surface defects owing to the addition of Al2O3 powder was observed in surface morphology analysis.</jats:p>

Topics
  • surface
  • nickel
  • corrosion
  • wear resistance
  • defect
  • titanium
  • wire
  • biocompatibility