Tropical high‐Andean wetlands, locally known as ‘bofedales’, are key ecosystems sustaining biodiversity, carbon sequestration, water provision and livestock farming. Bofedales' contribution to dry season baseflows and sustaining water quality is crucial for downstream water security. The sensitivity of bofedales to climatic and anthropogenic disturbances is therefore of growing concern for watershed management. This study aims to understand seasonal water storage and release characteristics of bofedales by combining remote sensing analysis and ground‐based monitoring for the wet and dry seasons of late 2019 to early 2021, using the glacierised Vilcanota‐Urubamba basin (Southern Peru) as a case study. A network of five ultrasound loggers was installed to obtain discharge and water table data from bofedal sites across two headwater catchments. The seasonal extent of bofedales was mapped by applying a supervised machine learning model using Random Forest on imagery from Sentinel‐2 and NASADEM. We identified high seasonal variability in bofedal area with a total of 3.5% and 10.6% of each catchment area, respectively, at the end of the dry season (2020), which increased to 15.1% and 16.9%, respectively, at the end of the following wet season (2021). The hydrological observations and bofedal maps were combined into a hydrological conceptual model to estimate the storage and release characteristics of the bofedales, and their contribution to runoff at the catchment scale. Estimated lag times between 1 and 32 days indicate a prolonged bofedal flow contribution throughout the dry season (about 74% of total flow). Thus, our results suggest that bofedales provide substantial contribution to dry season baseflow, water flow regulation and storage. These findings highlight the importance of including bofedales in local water management strategies and adaptation interventions including nature‐based solutions that seek to support long‐term water security in seasonally dry and rapidly changing Andean catchments.
<p>Tropical high-Andean wetlands, locally called bofedales, represent key ecosystems sustaining biodiversity, carbon sequestration, human water provision and fodder production for livestock farming. They are highly sensitive to climatic and anthropogenic disturbances, such as changes in precipitation patterns, glacier retreat and peat extraction, and are thus of major concern for watershed management. However, the eco-hydrological dynamics and responses of bofedales to impacts from global change are little explored.</p><p>In this study we map seasonal bofedales extent in the glaciated Vilcanota-Urubamba basin (Southern Peru) at unprecedented spatial resolution in the region. Therefore, we developed a supervised classification based on the Machine Learning algorithm Random Forest. As a baseline, Sentinel-2 MSI Surface Reflectance imagery between 2020 and 2021 and NASADEM elevation data were included. A total of 27 vegetation and topographic indices were computed and iteratively selected with cross-validated feature selection. As a result, the Wide Dynamic Range Vegetation Index, Normalised Difference Infrared Index and Compound Topographic Index adopt a major role for successful wetland extent classification. We identify a total wetland area of 282 km&#178; (630 km&#178;) at the end of the dry (wet) season in 2020 (2021). The observed high seasonal variability in bofedales extent within the study region suggests the presence of a pronounced intra-annual hydrological regime of drying, soaking and wetting.</p><p>For a more thorough assessment of the suggested pattern, we combined borehole water level and outlet river stage data from an arduino sensor network covering five bofedales sites in two micro-watersheds. These confirmed distinct wetting and drying regimes with all levels reducing and increasing during the dry and wet season, respectively, indicating a strong relationship between wetland area extent and water table levels. Based on these findings and a scoping review, a conceptual hydrological model has been proposed. As an initial attempt for model parameterisation, we undertook a statistical analysis, cross-correlating borehole levels, river stage and precipitation inputs to identify lag-times related to the intra-annual storage dynamics of the bofedales. A 4-hour lag-time was observed for outlet river stage to precipitation. However, results for water table response to precipitation were varied, with lag-times from 1 to 46 days, likely owing to the complex topography and hydrological processes within these ecosystems.</p><p>Our combined study of supervised wetland classification and eco-hydrological in-situ analysis provides first insights to understanding of high-Andean wetland dynamics. The proposed conceptual model offers a framework to further assess the capacity and residence times of bofedales that can support local decision-making. In view of severe impacts from climate and land use changes, locally tailored conservation and adaptation practices are urgently needed including innovative water storage enhancement interventions. These can be combined with traditional bofedales management by local, native livestock herders. In this regard, nature-based solutions, such as headwater and wetland protection and the implementation of additional water storage, can provide a cost-effective and flexible solution. These interventions leverage natural processes that sustain ecosystem services and increase the buffer function of bofedales to water loss from e.g. glacier shrinkage in headwaters and increasing water demand further downstream.</p>
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