AJA | Environmental sensors for real-time forest ecosystem monitoring

AJA | Environmental sensors for real-time forest ecosystem monitoring

DE
EN
Forest health solution built upon an innovative sensor technology for real-time ecosystem monitoring

The startup foldAI has developed sensors to screen health status of forests providing forest managers with a rich understanding of their forest ecosystems, and a decision toolbox to deploy immediate mitigating actions. The team’s solution, Aja, used in the sensors is  a framework for ecosystem management based on deep technology. By harnessing state-of-art Machine Learning on precise, real-time sensor data, Aja can not only detect forest threats as they happen, but even predict their arising and forecast their unfolding. Aja improves forest health, resilience and bioeconomical performance by introducing lean processes to a broad ecosystem management community. It helps reducing greenhouse emissions by scaling high resolution forest management through a fully automated and affordable solution for more than 30 Million forest owners in Europe, Russia and North America. The solution builds on embedded Machine Learning, and biochemical and environmental signal processing on high-dimensional data. Use cases comprise the assessment of environmental impacts enabling greater accuracy in the evaluation of the environmental consequences of a strategy or policy, risks assessment including alerts to threats, biodiversity quantification and ecosystem health tracking. Aja’s significant carbon reduction impact has been independently certified by The Climate Impact Forecast.

Région d'origine
2861876
Potentiel de durabilité
Sustainable forest management is strongly supported by real time data on the forest's health status
Impact sur l'environnement et la biodiversité

The solution helps to monitor ecosystem functions of forests and biodiversity, thereby improving risk management 

Domaine principal
Inventaire, diagnostic, monitoring
Getsion forestière, sylviculture, services écosystémiques, résilience
Perturbations forestières, risque, réponse aux calamités
Mots-clés
forest monitoring; sensors; machine learning; biodiversity
Défi concerné
1. Améliorer la résilience de la forêt et son adaptation au changement climatique
Type de solution
Capteurs, équipement de mesure
Solution digitale
Oui
Innovation
Oui
Pays d'origine
Allemagne
Région d'origine
2861876
Echelle d'application
Transfrontalière/Multilatérale
Début et fin d'année
2019 -
Informations de contact
Propriétaire ou auteur
foldAI
Dr. Friedrich Förster
Rapporteur
Dr. Marie-Charlotte Hoffmann
References and Resources
Projet sous lequel cette fiche d'information a été créée
Rosewood 4.0