Бібліографічний опис:
Prypeshniuk Volodymyr. Ocean surface visibility prediction. Ukrainian Catholic University, Faculty of Applied Sciences, Department of Computer Sciences. Lviv 2023, 39 p.
Короткий опис (реферат):
Seawater transparency is an indispensable ecological parameter with substantial impacts on the health and productivity of aquatic ecosystems. Its significance spans
across various industries, including environment protection, fishing and tourism.
The fluctuating nature of aquatic systems and their intricate interplay with human
activities often induce substantial variability in seawater transparency. This underlines the pressing necessity for effective predictive tools in the stewardship and
preservation of our invaluable water resources.
Despite the clear importance of water transparency, ocean forecasting remains
a considerably understudied field, some work has been done on using satellite for
monitoring, but literature is scarce for forecasting with only few simple models explored. There is an evident gap in research and tools focused on predicting changes
in this crucial ecosystem, underlining the novelty and urgency of our work.
In this research, we aim is to develop a forecasting model that not only excels
in precision and speed, but is also flexible enough to encompass a vast array of
potential future scenarios. We primarily employed SimVP, a spatio-temporal convolutional neural network, for ocean forecasting purposes. This model was trained
using the earth observation data from the Copernicus Marine Service. This data
were collected for 20 years of daily observation of water transparency in the marine
environment surrounding the UK, with a spatial resolution of 4km x 4km.
Our findings showed that SimVP substantially outperformed the baseline models (AutoRegressive Integrated Moving Average (ARIMA) and Simple Exponential
Smoothing (SES)) in predicting the next day seawater transparency, demonstrating
an improvement of 17.4%, and a notable reduction in the Root Mean Square Error
(RMSE) from 2.63 to 2.24, and improvement in inference time efficiency in 66.3 times
(334.6 -> 5.04 seconds). We show that this method better performs better on regions
with minor variation like Irish Sea or English Channel, and performs worse on regions with high variations like Atlantic Ocean or North Sea.
Our study demonstrates the advantage of adopting the spatio-temporal neural
network architectures for ocean monitoring and paves the way for future research
in adopting advanced machine learning techniques in this field.