ABSTRACT
Early
detection of oil spills and quick interventions are key elements in reducing
the menace caused by oil spills in our environment. In this research work, oil
spills classification system based on laser fluorosensor spectra data was
modeled and simulated. This is to distinguish oil spills from various backgrounds
and to classify oil spills into different products. Artificial Neural Network
(ANN) toolbox in Matlab/Simulink with MLP (multi-layer perceptron) based
supervised architecture was used for the simulation. Using the data in form of
90-channel spectra as inputs, the ANN presents the analysis and estimation
results of oil products and various backgrounds as outputs. The network was
trained to understand numerous spectra data of laser fluorosensor for different
oil spill products (light oil, medium oil, and heavy oil) and various backgrounds
(water, sand and stone). The trained network was tested using data set to the
network. A back propagation learning algorithm with an optimizer based on
gradient descent method was used during the training of the network. The effect
of different number of hidden layers (2, 3, and 4) and the different number of neurons (7,7), (7,7,7), (7,7,7,7),
(7,8), (9,7), (8,10) and (10,10) in
hidden layers was checked on the overall performance and accuracy of the MLP
artificial neural network and the results were compared. It was found that the
ANN with MLP based supervised architecture performed well when the number of
neurons in hidden layers is the same ((7,7), (7,7,7), (7,7,7,7), (10,10)) and
an average of 100% classification result was achieved. The network however
performed badly when it was trained with different number of neurons ((7,8),
(9,7), (8,10), in the hidden layers and an average of 18.3% classification
result was achieved. It
was also found that laser fluorosensors must be operated at wavelengths between
308 nm and 340 nm to produce well distinguished fluorescence
spectra. Finally, it has been noted from this research work that laser
fluorosensors are currently the most effective remote sensors as they can
detect oil spills in almost all backgrounds (land, water, ice, snow etc.).
-- (2023). Analysis And Simulation Of A Remote Sensing System For Detection And Classification Of Oil Spills Using Laser Fluorosensor. Mouau.afribary.org: Retrieved Nov 23, 2024, from https://repository.mouau.edu.ng/work/view/analysis-and-simulation-of-a-remote-sensing-system-for-detection-and-classification-of-oil-spills-using-laser-fluorosensor-7-2
--. "Analysis And Simulation Of A Remote Sensing System For Detection And Classification Of Oil Spills Using Laser Fluorosensor" Mouau.afribary.org. Mouau.afribary.org, 20 Jun. 2023, https://repository.mouau.edu.ng/work/view/analysis-and-simulation-of-a-remote-sensing-system-for-detection-and-classification-of-oil-spills-using-laser-fluorosensor-7-2. Accessed 23 Nov. 2024.
--. "Analysis And Simulation Of A Remote Sensing System For Detection And Classification Of Oil Spills Using Laser Fluorosensor". Mouau.afribary.org, Mouau.afribary.org, 20 Jun. 2023. Web. 23 Nov. 2024. < https://repository.mouau.edu.ng/work/view/analysis-and-simulation-of-a-remote-sensing-system-for-detection-and-classification-of-oil-spills-using-laser-fluorosensor-7-2 >.
--. "Analysis And Simulation Of A Remote Sensing System For Detection And Classification Of Oil Spills Using Laser Fluorosensor" Mouau.afribary.org (2023). Accessed 23 Nov. 2024. https://repository.mouau.edu.ng/work/view/analysis-and-simulation-of-a-remote-sensing-system-for-detection-and-classification-of-oil-spills-using-laser-fluorosensor-7-2