Project cooperationUpdated on 28 December 2025
Strengthening forest research for the support of Ukraine HORIZON-CL6-2027-01-CIRCBIO-10
Professor at Vytautas Magnus University
Kaunas, Lithuania
About
Ukraine’s forest sector needs fast, evidence-based recovery and long-term resilience under the compounded impacts of war, climate change, and biodiversity loss. A key bottleneck is the lack of a fully digital, transparent, and continuously updated forest cadastre and monitoring capability that can directly support governance, restoration planning, and EU acquis alignment. Our proposal delivers an integrated “forest data-to-policy” pipeline that turns heterogeneous sensing and inventory data into verifiable cadastre updates, risk analytics, and auditable timber legality/traceability.
Overall objective
Build and pilot a National Digital Forest Recovery Platform that (i) digitalises and modernises cadastre workflows, (ii) establishes a continuous forest monitoring system (remote sensing + IoT + field validation), and (iii) enables trusted, privacy-preserving traceability across timber/biomass value chains—supporting policy, enforcement, education, and EU integration.
Why we can deliver
We bring a rare end-to-end capability spanning Forest 4.0 digital transformation (blockchain + IoT + AI), secure identity and smart contracts for timber legality and accountability, and AI-driven monitoring from sensors and satellites:
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Blockchain-driven identity management (SSDI) for sustainable forest supply chains with throughput/latency evaluation on Ethereum-like setups.
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Blockchain-enabled smart contracts for timber traceability with quantified throughput, energy/transaction trends, and gas-fee complexity insights.
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Adaptive sensor clustering for dynamic forest ecosystems (QFCM + RL adaptation), improving energy efficiency and robustness for WSN-based monitoring.
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AI monitoring at scale: YOLO-based individual tree detection from RGB satellite imagery with high detection performance; plus wildfire prediction and early detection using weather/audio signals.
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Decision models for resilience: regeneration dynamics (Markov + time-series decomposition), and optimisation of wood supply chains under uncertainty (two-stage stochastic MILP).
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Digital twin foundations: reinforcement-learning adaptive digital twin for forest ecosystems; plus research on scalable consensus (including quantum-inspired directions) for real-time environmental data integrity.
Similar opportunities
Project cooperation
Robertas Damaševičius
Professor at Vytautas Magnus University
Kaunas, Lithuania
Expertise
Forest environment monitoring solutions
Robertas Damaševičius
Professor at Vytautas Magnus University
Kaunas, Lithuania
Project cooperation
Miguel Coelho
Innovation Manager at Bondalti Water