Spatio-temporal economic planning weighted routing model for agricultural land-use management in peri-urban zones: a case study of the Kyiv agglomeration

Authors

  • V. Nazarenko National University of Life and Environmental Sciences of Ukraine image/svg+xml

DOI:

https://doi.org/10.31548/zemleustriy2026.02.05

Keywords:

digital agriculture, weight-based routing, middleware, UAV–IoT–satellite integration, peri-urban Kyiv, logistics costs, land-use change, FAIR/OGC interoperability, decision support, sustainability metrics

Abstract

Ukraine’s agricultural sector faces a compound set of economic and spatial pressures: peri-urban land-use transformation, disrupted logistics, volatile fuel costs, and restricted mobility in wartime conditions. These challenges are especially evident in the Kyiv agglomeration, where agricultural operations increasingly depend on rapid re-planning under changing constraints. This study presents and evaluates a weights-based real-time routing platform for digital agriculture in Ukraine, integrated into a FAIR/OGC-aligned middleware architecture that consolidates multi-source data streams (satellite EO, UAV imagery when permitted, IoT telemetry, road and congestion layers, and administrative–economic registers). The platform operationalizes routing as a continuous decision-support service by allowing users to tune explicit weights across four criteria: time, direct cost, CO₂e, and operational risk, while enforcing land-use and safety restrictions through hard spatial masks and soft penalty layers.

Empirical testing was conducted over four pilot weeks in the peri-urban belt of Kyiv using a controlled-scenario design with three weekly templates: Baseline (A), Stress (B: high fuel prices and higher transport risk), and Sustainability-adjusted (C). The middleware maintained continuous advisory generation under intermittent UAV availability and short-lived network outages by employing store-and-forward edge buffers, asynchronous refresh, and lineage capture; exported route advisories were reproducible as CSV/GeoJSON with full provenance. Scenario results show strong sensitivity of weekly logistics costs to fuel-driven cost bands: compared with Scenario A, Scenario B increased direct logistics costs by 12.44%. In comparison, Scenario C increased costs by 6.22%. Tactical re-weighting protected time performance (approximately −1.15% total travel time in B and C). In comparison, feasibility remained high (≥95% of jobs served within service windows), and restricted-edge violations remained zero due to enforced masks. CO₂e totals remained stable across scenarios under uniform emission factors, highlighting the need for differentiated low-carbon corridors or fleet classes in future pilots.

The results indicate that a standards-based middleware platform combined with weight-based routing can serve as a practical tool for land-use governance and agricultural economics by linking spatial constraints, cost dynamics, and auditable sustainability indicators within a single operational workflow.

Received: 27.03.2026;

Accepted: 07.04.2026;

Author Biography

  • V. Nazarenko, National University of Life and Environmental Sciences of Ukraine

    Associate Professor in the computer systems, networks, and cybersecurity department

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Published

2026-06-30

Issue

Section

Land Management and Land Planning

How to Cite

Nazarenko, V. (2026). Spatio-temporal economic planning weighted routing model for agricultural land-use management in peri-urban zones: a case study of the Kyiv agglomeration. Land Management, Cadastre and Land Monitoring, 2. https://doi.org/10.31548/zemleustriy2026.02.05