Regional patterns and drivers of nitrogen trends in a human-impacted
watershed and management implications
Abstract
Nutrient enrichment is a major issue to many inland and coastal
waterbodies worldwide, including Chesapeake Bay. River water quality
integrates the spatial and temporal changes of watersheds and forms the
foundation for disentangling the effects of anthropogenic inputs.
However, many water-quality studies are focused on limited portions of
the watershed or a subset of potential drivers. We demonstrate with the
Chesapeake Bay Nontidal Monitoring Network (84 stations) that advanced
machine learning approaches – i.e., hierarchical clustering and random
forest – can be combined to better understand the regional patterns and
drivers of total nitrogen (TN) trends in large monitoring networks.
Cluster analysis revealed the regional patterns of short-term TN trends
(2007-2018) and categorized the stations to three distinct clusters,
namely, V-shape (n = 25), monotonic decline (n = 35), and monotonic
increase (n = 26). Random forest models were developed to predict the
clusters using watershed characteristics and major N sources, which
provided information on regional drivers of TN trends. We show
encouraging evidence that improved nutrient management has resulted in
declines in agricultural nonpoint sources, which in turn contributed to
water quality improvement. Additionally, water-quality improvements are
more likely in watersheds underlain by carbonate rocks, reflecting the
relatively quick groundwater transport of this terrain. However, TN
trends are degrading in forested watersheds, suggesting new sources of N
in forests. Finally, TN trends were predicted for the entire Chesapeake
Bay watershed at the scale of 979 river segments, providing fine-level
information that can facilitate targeted watershed management,
especially in unmonitored areas. More generally, this combined use of
clustering and classification approaches can be applied to other
monitoring networks to address similar questions.