黑料网

News

Machine learning to increase efficiency of farming by predicting the interaction between the plant and environment

Machine learning methods will be tested in arable farming, greenhouse cultivation and plant breeding.
Jussi Gillberg. Kuva: Aalto-yliopisto.

Tekes has granted approximately 0.5 million euros to an Aalto University pilot project aiming at developing machine learning methods that will tackle the challenges facing agriculture. The project will finish by the end of 2018.

Machine learning has rarely been applied to the challenges in primary production. However, it has been estimated that as the human population grows, in 2050 the demand for food will exceed supply by 60 %. Climate change will cause significant additional challenges and improving the efficiency of primary production is necessity for food security in general.

'Machine learning methods originally developed for personalised medicine here at Aalto University in Professor Samuel Kaski's research group will be used to solve challenges of primary production. The prediction problems related to the two domains are very similar鈥, describes principal investigator Jussi Gillberg.

The pilot phase will include further methodological development. The methods will be used in the area of traditional arable farming to identify those plant varieties that are best suited for each field. In greenhouse cultivation the methods will be used to adjust the greenhouse conditions for optimal growth. In addition to these, more accurate prediction instruments will be developed for plant breeders.

Efficient and predictable cultivation

'Machine learning will be used to determine the efficient use for each field and find the best crops for the local environment. This is a matter of predicting the interaction between the plant and its environment. A crop variety that produces higher yields on a certain field can be inferior to other varieties elsewhere,' Gillberg adds.

鈥楾he most important factor in the cultivation of plants is the combined effect of the genotype, the genetic makeup of a plant, and the plant's surrounding environment. In the best case scenario, the methods and practices created in the project can be used to predict the success of plant breeding material in new conditions,' describes Director of Plant Breeding Merja Vetel盲inen from Boreal Plant Breeding.

The project's business partners include Boreal Plant Breeding Ltd, Mtech Digital Solutions Oy as well as Netled Oy, which is specialised in effective greenhouses. In co-operation with business partners, the project will examine the different options for commercialising the developed technology. The project will also include cooperation with Natural Resources Institute Finland.

Further information:

Jussi Gillberg
Doctoral Candidate
Aalto University

  • Updated:
  • Published:
Share
URL copied!

Read more news

3D brain scan on screen showing colourful neural pathways inside a semi-transparent head model
Research & Art Published:

Applications open for Innovation Postdoc in AI

A fully funded, 12鈥搈onth career track to turn your doctoral discoveries into a deep-tech startup.
Outdoor wooden daybeds with sheer beige curtains in a ruined courtyard garden with tall plants.
Cooperation, Press releases, Research & Art Published:

A Finnish working group鈥檚 artwork brings a cooling garden to Spain, which is sweltering in the heat

Through their garden art installation, a group of Finnish architects and artists proposes vegetation and a sense of community, among other things, as solutions to urban heat islands and the environmental crisis.
Five people holding large yellow emoji faces in front of them, standing side by side against a white background
Press releases, Research & Art Published:

RealYou AI will develop the next generation of personalized AI decision assistants

Researchers to build cognitive machine learning that will improve decision-making with instantly personalized intelligent assistance.
Round beige honeycomb-pattern mat with wicker baskets on bright blue background
Press releases, Research & Art Published:

Researchers identify new superconductors, unlocking process that could yield thousands more

Physicists have used machine-learning to discover two new superconductors鈥撯搃t represents a substantial step towards realising massive energy efficiency gains from superconductivity.