Status : Verified
Personal Name Esguerra, Givette Kristine Y.
Resource Title Development of an artificial neural network (ANN)-based prediction model for the occurrence of algal blooms in Laguna de Bay based on in situ data and remotely sensed data
Date Issued 06 June 2019
Abstract Algal blooms pertain to an undesirable formation of unicellular freely-floating algal scum caused by the rapid growth of phytoplankton, which can become a hazard for the water body ecosystem. Laguna de Bay serves as both a source of livelihood and water supply for the residents in the region and the risk of algal blooms should be detected for safe and efficient management. The research presents a method for predicting the amount of phytoplankton to alert the monitoring agencies of incidences of high phytoplankton as a scalable and inexpensive early-warning tool. The study primarily focuses on the development of a prediction model based on the following water quality parameters measured by the Laguna Lake Development Authority (LLDA) from 2008 to 2018: nitrate, orthophosphate, water temperature, turbidity, chlorophyll-a, and phytoplankton counts. Gaps in the data were augmented with data from Moderate Resolution Imaging Spectroradiometer (MODIS) satellite images for sea surface temperature (SST), found to be in good agreement to field values. The system predicts the phytoplankton counts of the next month using three months of previous values of the water quality parameters, modeled through the multilayer perceptron neural network method. The research uses a walk-forward validation method to obtain the root-mean-square-error (RMSE) of the model. Each station was modeled separately and the results present some
stations (Stations 2 and 4) as having statistically less RMSE, whereas other stations have statistically no significant difference with the zero rule algorithm baseline model and the ordinary least square regression.
Degree Course MS Environmental Engineering
Language English
Keyword algal blooms, artificial neural networks, laguna de bay, laguna lake, multilayer perceptron, phytoplankton count
Material Type Thesis/Dissertation