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arxiv 2501.10400 v1 pith:JZXEKJLW submitted 2025-01-02 physics.geo-ph physics.ao-ph

Carbon Trapping Efficiency of Hydropower Reservoirs under the Influence of a Tropical Climate

classification physics.geo-ph physics.ao-ph
keywords reservoirssedimentationcarbonefficiencyhydroelectricactivitiessedimenttrapping
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Sedimentation in hydroelectric reservoirs is strongly impacted by anthropogenic activities within their upstream drainage basins. These activities, encompassing soil erosion and various other human-induced actions, have significant consequences for sedimentation patterns. This issue has been a subject of prolonged study, as sedimentation directly undermines the water storage capacity of reservoirs, consequently diminishing the overall efficiency of hydroelectric operations. Several scientists have dedicated their efforts to addressing the matter of reservoir sedimentation. This pursuit has led to the formulation of an indicator known as Sediment Trap Efficiency (STE), serving as a metric that quantifies the proportion of sedimentation within reservoirs relative to the influx of sediment from their upstream sources. This study seeks to present findings pertaining to carbon trapping efficiency observed across seven hydroelectric reservoirs in Brazil. The objective is to demonstrate the substantial relevance of carbon accumulation within these aquatic environments within the context of the carbon balance frameworks previously established.

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