This study combines the Google Earth Engine (GEE) and machine learning algorithms (Random Forest and XgBoost) to analyze waterbird distribution patterns and the ecological constraints of the urbanization across Belgium's top 10 urban regions. By integrating INBO winter surveys (1991–2016) and eBird data (1973–2024), we developed a multi-scale model incorporating 25 natural and 2 anthropogenic factors. The results show that: (1) Under the “global modeling, local validation” framework, the Random Forest (RF) model shows superior generalization and stability compared to XgBoost (XgB). While XgB excels in computational speed, RF provides balanced performance across the full urban gradient, making it the optimal tool for developing national-scale conservation baselines. (2) Urbanization intensity acts as critical ecological filters reshaping habitat patterns. This drives a “core-periphery” distribution in metropolises like Brussels and also causes functional habitat collapse in industrial regions like Charleroi and Liège, whereas cities with “Blue-Green” networks (e.g., Antwerp) exhibit remarkable resilience. (3) Gap analysis reveals a “High suitability, low protection,” pattern. Cities like Kortrijk and Ghent face the most severe deficits, with protection gaps exceeding 99%, whereas Liège exhibits significant spatial conflict (>25%). Consequently, differentiated planning strategies are proposed: establishing flexible “urban micro-reserves” to fill legal vacuums in gap areas and defining conservation “red lines” for conflict zones, thereby providing scientific support for biodiversity governance in high-density urban landscapes. • “Global modeling, local validation” confirms RF's superior robustness in urban waterbird habitats. • Urban intensity acts as critical filter reshaping waterbirds habitat patterns across diverse. • Gap analysis reveals a “high suitability, low protection” most urban region. • Proposed “Urban Micro-Reserves” mitigate conflicts in Belgian built-up areas.
Jiang et al. (Wed,) studied this question.