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February 8, 2016

A cost-effective method for mass production of printed flexible graphene-based electronic devices

The introduction of flexible electronics was a paradigm change on established technologies. Now, researchers at the Barcelona Institute of Science and Technology (BIST), present a versatile, low-cost and customizable method for patterning graphene oxide onto multiple substrates. This patented technique, published in the latest issue of ACS Nano, might also be applicable to other electronic materials.

Some methods for patterning involve long fabrication periods, high cost, great expertise and clean room facilities. Moreover, these methods are not versatile or effective for designing simple devices such as transistors or capacitors and biosensors that require effective linking of specific bioreceptors. The patterning method by ICN2 allows the transfer of onto almost any substrate in an easy, cost-effective and customizable way.

The patented method consists of three steps:

This green, low-cost and versatile approach will enable in situ transfer of multiple electronic devices such as field effect transistors (FET), LEDs, electrodes, solar cells, biosensors or supercapacitors. It requires neither a nor organic solvents. The wax-printed membranes have 50μm resolution, long-term stability and infinite shaping capability over a variety of substrates, including textile, paper, adhesive film or PET. Additionally, the technology can be implemented in a roll-to-roll hardware, speeding up the printing. It is also is promising for implementation in under-developed countries.

For further information: Download the .

More information: Luis Baptista-Pires et al. Water Activated Graphene Oxide Transfer Using Wax Printed Membranes for Fast Patterning of a Touch Sensitive Device, ACS Nano (2016).

Journal information: ACS Nano

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