4.7 Article

Spatio-Temporal Dynamics of Total Suspended Sediments in the Belize Coastal Lagoon

Journal

REMOTE SENSING
Volume 15, Issue 23, Pages -

Publisher

MDPI
DOI: 10.3390/rs15235625

Keywords

Belize coastal lagoon; total suspended sediments; machine learning; spatio-temporal analyses

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Increased tourism and population growth in Belize have led to coastal development, impacting coastal ecosystems. Accurate monitoring and prediction of water quality parameters are crucial to understand the influence of human activities on coastal systems. This study utilized machine learning algorithms and time-series analysis to estimate Total Suspended Sediments (TSS) using satellite data in Belize and successfully validated the results. The findings contribute to real-time water quality monitoring and achieving sustainable development goals.
Increased tourism in Belize over the last decade and the growth of the local population have led to coastal development and infrastructure expansion. Land use alteration and anthropogenic activity may change the sediment and nutrient loads in coastal systems, which can negatively affect ecosystems via mechanisms such as reducing photosynthetically active radiation fields, smothering sessile habitats, and stimulating eutrophication events. Accurate monitoring and prediction of water quality parameters such as Total Suspended Sediments (TSS), are essential in order to understand the influence of land-based changes, climate, and human activities on the coastal systems and devise strategies to mitigate negative impacts. This study implements machine learning algorithms such as Random Forests (RF), Extreme Gradient Boosting (XGB), and Deep Neural Networks (DNN) to estimate TSS using Sentinel-2 reflectance data in the Belize Coastal Lagoon (BCL) and validates the results using TSS data collected in situ. DNN performed the best and estimated TSS with a testing R2 of 0.89. Time-series analysis was also performed on the BCL's TSS trends using Bayesian Changepoint Detection (BCD) methods to flag anomalously high TSS spatio-temporally, which may be caused by dredging events. Having such a framework can ease the near-real-time monitoring of water quality in Belize, help track the TSS dynamics for anomalies, and aid in meeting and maintaining the sustainable goals for Belize.

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