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Management system for the logistical potential of agricultural cooperatives in the context of post-war recovery in ukraine

Svitlana SudomyrNULES of Ukraine «Berezhany Agrotechnical Institute»Mariia KuliakNational Health Service of Ukraine
ABI

Аннотация

This article investigates an adaptive management system for the logistical potential of agricultural cooperatives in Ukraine’s post-war recovery, grounded in systemic, institutional, and stochastic approaches. Russia’s full-scale invasion caused catastrophic losses to the agricultural sector: direct damages>11 billion USD(as of early 2025),total indirect losses 80–83 billion USD by end-2025(per KSE, Reuters).The sector suffered>14% reduction in sown areas, widespread infrastructure destruction, logistics costs rising to 20–30% of production costs, and restricted resource access in frontline regions. Agricultural cooperatives–vulnerable segment generating<1% value added due to historical trust deficits–face intensified challenges but possess high recovery potential via short supply chains, regional clustering, and digital transformation. Despite adaptation (2025 grain harvest~60 million tonnes per USDA/FAO), persistent bottlenecks make logistical potential management critical. The study proposes a four-module model: risk-oriented planning with Monte Carlo simulation, clustering and institutional integration, digital control integrating IoT and AI-driven analytics, regional supply chain optimization with blockchain traceability ensuring EU Green Deal/Farm to Fork compliance. Empirical validation relies on panel data from 50 cooperatives(2022–2025).Multiple linear regression with robust standard errors explains 54.5% of variance in product losses(Adj.R²=0.538,p<0.001),with infrastructure damage dominant(β=26.21,p<0.001)and digitalization mitigating(β=-11.80,p<0.001).After endogeneity correction via fixed effects and instrumental variables models, digitalization effect remains significant(β≈-9.70 to – 11.20,p<0.05).Monte Carlo simulations(1000 iterations, nonlinear beta distributions for digitalization, sensitivity analysis)predict average loss reduction of 23.6% in optimized scenarios(high digitalization>0.7).Control group(digitalization≤0.55)shows 20.97% losses; treatment group(>0.55)–13.95%,difference 7.02%.These findings underscore the transformative capacity of AI,IoT, and stochastic modeling for supply chain resilience under post-conflict uncertainty, and provide implications for post-war recovery policies, European integration, and sustainable rural development. Keywords: logistical potential, agricultural cooperatives, post-war recovery, supply chain resilience, digital transformation, stochastic modeling.

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