American rivers are transporting more sediment in less time
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Understanding how sediment is produced, mobilized, and delivered through river networks is essential for addressing challenges in water quality, infrastructure management, and landscape evolution. Yet, long-term assessments of sediment dynamics have been hindered by sparse sampling that misses the short-lived events responsible for most annual transport. This study develops a deep learning framework that combines high-frequency turbidity sensors and long-term hydrometeorological datasets to reconstruct daily suspended-sediment flux across 175 minimally regulated U.S. catchments from 1985–2023. By leveraging LSTM models and data-driven attribution techniques, the work produces a continental-scale record capable of resolving multi-decadal shifts in both sediment yield and the timing of transport. Results show that many rivers deliver a greater portion of their annual sediment load in shorter, more extreme pulses; the median time required to transport 90% of the load shrank from 69 days to 50 days, with one-third of basins exhibiting increased temporal inequality. To explain these trends, interpretable machine-learning methods were applied to quantify the relative influence of hydroclimatic forcing and land-use disturbance. Analysis of those drivers reveals that deforestation, urban expansion, and intensifying precipitation events collectively drive the observed acceleration and concentration of sediment transport. By reconstructing a detailed sediment history for U.S. rivers, this thesis provides a new basis for understanding how climate and land-use change are reshaping sediment regimes. The findings have direct implications for sediment budgeting, aquatic habitat protection, reservoir and flood-control infrastructure, and the design of best-management practices.