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Department of Chemistry and Materials Science

AI-yarn project (Bioinnovation)

AI-guided biohybrid assembly platform for e-textiles (Aalto University Bioinnovation Center project)
AIyarn project main image. Photo by Aalto University / Matteo Iannacchero, Maija Vaara
Photo by Matteo Iannacchero & Maija Vaara / Aalto University

Full title of the project: AI-guided biohybrid assembly platform for e-textiles (Aalto University Bioinnovation Center project)

Highlights:

Matteo

Matteo Iannacchero, a developer of bio-based yarns: ‘I value the freedom of science’

In his doctoral research conducted at Aalto University’s Bioinnovation Center, Iannacchero uses machine learning to develop ecologically sustainable electronic yarns. This is an opportunity to come up with something completely new.

News
Nordic Textiles Podcast logo

A podcast hosted by Alicja Lawrynowicz and Matteo Iannacchero, in which they discuss the innovative world of smart textiles, uniquely framed by Nordic perspectives. Different guests will show different points of view: from academic research to innovation on a larger scale.

Biomaterial in water

Research

Bioinnovation Center's research focuses on sustainable textiles and packaging. Currently we have fifteen research projects ongoing. Read more about the first research projects here.

Aalto University Bioinnovation Center

More about the project:

Electronic textiles, e-textiles or smart textiles are terms that are interchangeably used for digitally enhanced fabrics. The electronic components in e-textiles augment their aesthetic appeal or enable new functionality, like wearable electronics. Common problems hindering the commercialization of current e-textiles are durability (e.g., brittleness), user discomfort due to integrated bulky electronics, and sustainability. In AI-yarn, we address these challenges by developing novel biomaterial-based yarns for e-textiles. This will be achieved by combining different biodegradable and/or biobased materials (i.e. cellulose, potato viruses, PLA) for a fully bio-based assembly line for electrically active yarns.

With machine learning, namely Bayesian optimization, we optimize filaments' and yarns' functional properties starting from the main variables that affect them. This approach allows to save time as the experiments suggested by the algorithm are specifically aimed to find the global maximum (or minimum), using a probabilistic function in the desired variables-space. 

AI-yarn will produce novel biomaterial yarns and deliver the first use-case of artificial intelligence (AI) for bioinnovations. 
 

Interdisciplinary collaboration 

In AI-yarn, two young PIs combine their complementary expertise in biomaterials and computer science for the first time in a funded project. In this interdisciplinary project, machine learning techniques facilitate and accelerate biomaterials synthesis. Machine learning unlocks unprecedented opportunities for materials and process optimization, unveils previously unseen correlations between materials characteristics and functional properties, and aids in the discovery of new compounds. 

Scientific, societal and bioinnovative impact 

To the best of our knowledge, AI-yarn would deliver the first functional biohybrid material for e-textiles and provide sustainable options of smart textiles. Scientifically, AI-yarn establishes a new paradigm of AI-guided biomaterials research and accelerated materials development.

As a fundamental interdisciplinary project, AI-yarn enables completely bio-based functional conductive and triboelectric yarns and fabrics. We will also create an alternative for Ag-coated conductive yarns commonly applied in current e-textiles. We believe that our biohybrid platform will significantly improve the flexibility and durability of Ag nanowire-based conductive yarns. This opens new opportunities for the ever-growing application areas of e-textiles. 

Project team

Fiber structure formation exploiting interfacial complexation. Photo by Aalto University, Matteo Iannacchero
Fiber structure formation exploiting interfacial complexation. Photo: Matteo Iannacchero / Aalto University

Matteo Iannacchero, Doctoral Candidate

"I am currently working on the production of functionalised fibres suitable for the creation of e-textiles, but in general on the use of AI for the production of optimal materials. 

The goal of this project is precisely the combination of laboratory work (data acquisition) and machine learning (data processing) that allows artificial intelligence to predict the optimal reaction conditions to obtain the best desired properties.

The complexity of the use of AI depends on the number of variables involved, but it has an enormous advantage in the study of any reaction or process since it can discover the position, in an n-dimensional space of variables, of the points of greatest interest, i.e. those that can guarantee an optimised functional product."

Research work: Exploiting the triboelectric effect of PLA fabrics

Leveraging machine learning and crafted textile design to maximize sustainable energy generation exploiting the triboelectric effect of PLA fabrics

When two surfaces come into contact and separate, we can observe an exchange of electrical charge, or 'triboelectric effect'. If we connect these two surfaces to a circuit, we can detect the charge and possibly harvest it (if a device for energy storage is available).

Using bio-degradable and bio-based PLA (polylactic acid) yarn, the goal is to develop garments that can exploit this phenomenon and harvest electricity through human motion. Machine learning will be used to evaluate and optimize the parameters that affect this phenomenon.

This research work is part of 'AI-yarn' project and is being implemented in collaboration with Prof. Lena Kramer Pedersen from VIA University College. A prototype of this work was exhibited at 'Designs for a Cooler Planet' festival in Marsio (Aalto University) in September-October 2024, as well as Dutch Design Week in October 2024.

Publications

Matteo Iannacchero, Joakim Löfgren, Mithila Mohan, Patrick Rinke*, Jaana Vapaavuori* 2025 Materials and Design

Zahra Madani, Matteo Iannacchero, Fevzihan Basarir, Jaana Vapaavuori 2024 Semiconducting Fibers. Preparation, Advances, and Applications

Mustasin Mahmood Sakif*, Tiina Vuohijoki, Johanna Virkki, Matteo Iannacchero*, Pedro Silva, Jaana Vapaavuori 2024 IEEE International Conference on Flexible and Printable Sensors and Systems (FLEPS) Proceedings

Sofia Guridi Sotomayor, Matteo Iannacchero, Emmi Pouta 2024 CHI '24: Proceedings of the 2024 CHI Conference on Human Factors in Computing Systems ACM

Research output: Artistic and non-textual form

Jaana Vapaavuori, Zahra Madani, Pedro Santos Silva, Mithila Mohan, Maija Vaara, Matteo Iannacchero, Laura Koskelo, Giulnara Launonen 2024 Designs for a Cooler Planet - Espoo, Finland. Duration: 6 Sept 2024 → 3 Oct 2024. Research output: Artistic and non-textual form › Exhibition › Art in coproduction › peer-review

Pirjo Kääriäinen (Curator), Susanna Ahola (Curator) et al. 2024 Designs for a Cooler Planet - Espoo, Finland. Duration: 6 Sept 2024 → 3 Oct 2024. Research output: Artistic and non-textual form › Exhibition › Art in coproduction › peer-review

Sofia Guridi Sotomayor, Matteo Iannacchero 2023 Dutch Design Week - Eindhoven, Netherlands. Duration: 21 Oct 2023 → 29 Oct 2023. Research output: Artistic and non-textual form › Exhibition › Art in coproduction › peer-review

Sofia Guridi Sotomayor, Matteo Iannacchero 2023 Textile Intersections - Loughborough University, London, United Kingdom. Duration: 20 Sept 2023 → 23 Sept 2023. Research output: Artistic and non-textual form › Exhibition › Art in coproduction › peer-review

Sofia Guridi Sotomayor, Matteo Iannacchero 2023 Helsinki Design Week: Designs for a Cooler Planet - Helsinki, Finland. Duration: 6 Sept 2023 → 6 Oct 2023. Research output: Artistic and non-textual form › Exhibition › Art in coproduction › peer-review

Engagement activities

Talks and presentations at conferences and seminars

Other engagement activities

  • "BEYOND ENTANGLED: A collection of research stories from the Beyond e-Textiles project 2021-2025" : CASE 13 'Machine learning triboelectric PLA' by Lena Kramer Pedersen and Matteo Iannacchero
  • "SCALES in Textiles Conference Booklet" : Exhibition project 'Triboelectricity and decoration of knitted PLA fabrics'
BEYOND ENTANGLED: A collection of research stories from the Beyond e-Textiles project 2021-2025

Nordic Network on Smart Light-Conversion Textiles Beyond Electric Circuits, 2021-2025 (Nordic Programme for Interdisciplinary Research – NordForsk / ID: 103894)

SCALES in Textiles, booklet title image. Image by Mithila Mohan, Aalto University

Conference booklet | SCALES in Textiles - a three-day conference hosted by Aalto University on April 8–10, 2025, bringing together the ArcInTex network and the Beyond e-Textiles project.

Contact information

Project team: 
Doctoral Candidate Matteo Iannacchero (CHEM MMD) (matteo.iannacchero@aalto.fi)
Professor Jaana Vapaavuori (CHEM MMD) (jaana.vapaavuori@aalto.fi)
Professor Patrick Rinke (SCI CEST) (patrick.rinke@aalto.fi)

This project is a project of the Aalto University Bioinnovation Center which focuses on innovations in sustainable bio-based materials, especially on textiles and packaging. Its target is to accelerate the transition to a circular economy and bioeconomy, and to create opportunities for sustainable economic growth in Finland. 

More about Bioinnovation Center's research

Related content:

Multifunctional Materials Design

Group led by Professor Jaana Vapaavuori

MMD webpage main image. GIF image by Aalto University, Giulnara Launonen

Computational Electronic Structure Theory (CEST)

CEST is developing electronic structure and machine learning methods and applying them to computational materials science problems.

CEST researchers standing in a group

Aalto University Bioinnovation Center

To achieve human wellbeing in planetary boundaries, we need new sustainable solutions to wisely use our natural resources. The Bioinnovation Center especially focuses on innovations in sustainable bio-based materials, with special focus on textiles and packaging.

Photo: Artistic paper sample

ModelCom project

Autonomously adapting and communicating modular textiles

ModelCom webpage, main image, nylon yarn helix. Photo by Aalto University, Maija Vaara

Beyond e-Textiles project (NorTex)

Nordic network on smart light-conversion textiles beyond electric circuits

Beyond e-Textiles webpage, main image. Image by Aalto University, Giulnara Launonen, Maija Vaara, Mithila Mohan
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