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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in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (16/16 displayed)

  • 2022Piezoresistive 3D graphene-PDMS spongy pressure sensors for IoT enabled wearables and smart products29citations
  • 20213D Printed Graphene-Coated Flexible Lattice as Piezoresistive Pressure Sensor15citations
  • 2021Optimizing harbor seal whisker morphology for developing 3D-printed flow sensor10citations
  • 2021Optimizing harbor seal whisker morphology for developing 3D-printed flow sensor10citations
  • 2021Biomimetic Soft Polymer Microstructures and Piezoresistive Graphene MEMS Sensors using Sacrificial Metal 3D Printing48citations
  • 2021Fabrication of polymeric microstructurescitations
  • 2021Bioinspired PDMS-graphene cantilever flow sensors using 3D printing and replica moulding36citations
  • 2021Bioinspired PDMS-graphene cantilever flow sensors using 3D printing and replica moulding36citations
  • 2020PDMS Flow Sensors With Graphene Piezoresistors Using 3D Printing and Soft Lithography5citations
  • 2019Bioinspired Cilia Sensors with Graphene Sensing Elements Fabricated Using 3D Printing and Casting64citations
  • 2019Fish-inspired flow sensing for biomedical applicationscitations
  • 2019Laser-Sustained Plasma (LSP) Nitriding of Titanium: A Review49citations
  • 2019Laser-sustained plasma (LSP) nitriding of titanium:A review49citations
  • 2017A two-step laser-sustained plasma nitriding process for deep-case hardening of commercially pure titanium23citations
  • 2017Enhancement of CP-titanum wear resistance using a two-step CO2 laser-sustained plasma nitriding process20citations
  • 2016Effect of CO 2 Laser-Sustained Nitrogen Plasma on Heat and Mass Transfer During Laser-Nitriding of Commercially-Pure Titanium8citations

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Sengupta, Debarun
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Kottapalli, Ajay Giri Prakash
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Jayawardhana, Bayu
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Smit, Quinten
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Zheng, Xingwen
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Harish, Vinayak Sagar
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Cao, Ming
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Pei, Yutao T.
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Todd, Judith A.
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Copley, Stephen M.
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Co-Authors (by relevance)

  • Sengupta, Debarun
  • Kottapalli, Ajay Giri Prakash
  • Jayawardhana, Bayu
  • Smit, Quinten
  • Zheng, Xingwen
  • Harish, Vinayak Sagar
  • Cao, Ming
  • Pei, Yutao T.
  • Todd, Judith A.
  • Copley, Stephen M.
  • Segall, Albert E.
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article

Bioinspired PDMS-graphene cantilever flow sensors using 3D printing and replica moulding

  • Kottapalli, Ajay Giri Prakash
  • Jayawardhana, Bayu
  • Kamat, Amar M.
Abstract

<p>Flow sensors found in animals often feature soft and slender structures (e.g. fish neuromasts, insect hairs, mammalian stereociliary bundles, etc) that bend in response to the slightest flow disturbances in their surroundings and heighten the animal's vigilance with respect to prey and/or predators. However, fabrication of bioinspired flow sensors that mimic the material properties (e.g. low elastic modulus) and geometries (e.g. high-aspect ratio (HAR) structures) of their biological counterparts remains a challenge. In this work, we develop a facile and low-cost method of fabricating HAR cantilever flow sensors inspired by the mechanotransductory flow sensing principles found in nature. The proposed workflow entails high-resolution 3D printing to fabricate the master mould, replica moulding to create HAR polydimethylsiloxane (PDMS) cantilevers (thickness = 0.5-1 mm, width = 3 mm, aspect ratio = 20) with microfluidic channel (150 μm wide 90 μm deep) imprints, and finally graphene nanoplatelet ink drop-casting into the microfluidic channels to create a piezoresistive strain gauge near the cantilever's fixed end. The piezoresistive flow sensors were tested in controlled airflow (0-9 m s-1) inside a wind tunnel where they displayed high sensitivities of up to 5.8 kΩ m s-1, low hysteresis (11% of full-scale deflection), and good repeatability. The sensor output showed a second order dependence on airflow velocity and agreed well with analytical and finite element model predictions. Further, the sensor was also excited inside a water tank using an oscillating dipole where it was able to sense oscillatory flow velocities as low as 16-30 μm s-1 at an excitation frequency of 15 Hz. The methods presented in this work can enable facile and rapid prototyping of flexible HAR structures that can find applications as functional biomimetic flow sensors and/or physical models which can be used to explain biological phenomena.</p>

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  • casting