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Naji, M. |
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Motta, Antonella |
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Aletan, Dirar |
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Mohamed, Tarek |
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Ertürk, Emre |
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Taccardi, Nicola |
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Kononenko, Denys |
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Petrov, R. H. | Madrid |
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Alshaaer, Mazen | Brussels |
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Bih, L. |
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Casati, R. |
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Muller, Hermance |
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Kočí, Jan | Prague |
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Šuljagić, Marija |
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Kalteremidou, Kalliopi-Artemi | Brussels |
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Azam, Siraj |
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Ospanova, Alyiya |
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Blanpain, Bart |
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Ali, M. A. |
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Popa, V. |
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Rančić, M. |
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Ollier, Nadège |
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Azevedo, Nuno Monteiro |
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Landes, Michael |
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Rignanese, Gian-Marco |
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Nocke, Andreas
in Cooperation with on an Cooperation-Score of 37%
Topics
Publications (34/34 displayed)
- 2023Weft-knitted active joints for smart composite applications
- 2023Development of fiber-based piezoelectric sensors for the load monitoring of dynamically stressed fiber-reinforced compositescitations
- 2023Characterization of the Viscoelastic Properties of Yarn Materials:citations
- 2023Advancing Smart Textiles: Structural Evolution of Knitted Piezoresistive Strain Sensors for Enabling Precise Motion Capturecitations
- 2022Integrated Temperature and Position Sensors in a Shape-Memory Driven Soft Actuator for Closed-Loop Controlcitations
- 2022Protective Coating for Electrically Conductive Yarns for the Implementation in Smart Textilescitations
- 2022Melt Spinning of Elastic and Electrically Conductive Filament Yarns and their Usage as Strain Sensorscitations
- 2021High-speed, helical and self-coiled dielectric polymer actuatorcitations
- 2021Development of an Elastic, Electrically Conductive Coating for TPU Filamentscitations
- 2021Non-monotonic sensor behavior of carbon particle-filled textile strain sensorscitations
- 2021Fundamentals and working mechanisms of artificial muscles with textile application in the loopcitations
- 2021Melt Spinning of Highly Stretchable, Electrically Conductive Filament Yarnscitations
- 2020Entwicklung eines neuartigen Prüfverfahrens zur Untersuchung der Zugfestigkeit von Fasersträngen für textile Bewehrungsstrukturen
- 2020In-situ load-monitoring of CFRP components using integrated carbon rovings as strain sensors
- 2019Influence of thickness ratio and integrated weft yarn column numbers in shape memory alloys on the deformation behavior of adaptive fiber-reinforced plasticscitations
- 2019Development of an adaptive morphing wing based on fiber-reinforced plastics and shape memory alloyscitations
- 2019Adaptive fiber-reinforced plastics based on open reed weaving and tailored fiber placement technologycitations
- 2019Integrated textile-based strain sensors for load monitoring of dynamically stressed CFP components
- 2019Adaptive hinged fiber reinforced plastics with tailored shape memory alloy hybrid yarncitations
- 2019On the development of a function-integrative sleeve for medical applications
- 2019Integrierbare textilbasierte Dehnungssensoren für das Load-Monitoring dynamisch beanspruchter CFK-Bauteile
- 2018Development and testing of controlled adaptive fiber-reinforced elastomer composites.citations
- 2018Multifunctional components from carbon concrete composites C³ - integrated, textile-based sensor solutions for in situ structural monitoring of adaptive building envelopescitations
- 2018Development and testing of controlled adaptive fiber-reinforced elastomer compositescitations
- 2018Multifunctional components from carbon concrete composite C³ – integrated, textile-based sensor solutions for in situ structural monitoring of adaptive building envelopescitations
- 2017Multi-layered sensor yarns for in situ monitoring of textile reinforced compositescitations
- 2016Automated detection of yarn orientation in 3D-draped carbon fiber fabrics and preforms from eddy current datacitations
- 2016Measurement methods of dynamic yarn tension in a ring spinning processcitations
- 2016Manufacturing technology of integrated textile-based sensor networks for in situ monitoring applications of composite wind turbine bladescitations
- 2015Methods for adhesion/friction reduction of novel wire-shaped actuators, based on shape memory alloys, for use in adaptive fiber-reinforced plastic compositescitations
- 2015Integrative manufacturing of textile-based sensors for spatiallyl-resolved structural health monitoring tasks of large-scaled composite components.citations
- 2014Defect detection in carbon fiber non-crimp fabrics and CRFP with high-frequency eddy current technique ; Fehlererkennung an glatten Kohlenstofffasergeweben und CFRP mittels Hochfrequenzwirbelstrom-Technik
- 2013High temperature resistant insulated hybrid yarns for carbon fiber reinforced thermoplastic compositescitations
- 2013Development and characterization of textile-processable actuators based on shape-memory alloys for adaptive fiber-reinforced plasticscitations
Places of action
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article
Non-monotonic sensor behavior of carbon particle-filled textile strain sensors
Abstract
<p>Carbon particle-filled elastomers are a widely researched option to be used as piezoresistive strain sensors for soft robotics or human motion monitoring. Therefore, various polymers can be compounded with carbon black (CB), carbon nanotubes (CNT) or graphene. However, in many studies, the electrical resistance strain response of the carbon particle-filled elastomers is non-monotonic in dynamic evaluation scenarios. The non-monotonic material behavior is also called shoulder phenomenon or secondary peak. Until today, the underlying cause is not sufficiently well understood. In this study, several influencing test parameters on the shoulder phenomena are explored, such as strain level, strain rate and strain history. Moreover, material parameters such as CNT content and anisotropy are varied in melt-spun CNT filled thermoplastic polyurethane (TPU) filament yarns, and their non-monotonic sensor response is evaluated. Additionally, a theoretical concept for the underlying mechanism and thereupon-based model is presented. An equivalent circuit model is used, which incorporates the visco-elastic properties and the characteristic of the percolation network formed by the conductive filler material. The simulation results are in good agreement when compared to the experimental results.</p>