Neural networks to retrieve in water constituents applied to radiative transfer models simulating coastal water conditions
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https://hdl.handle.net/10037/32943Dato
2023-02-16Type
Journal articleTidsskriftartikkel
Peer reviewed
Sammendrag
Estimation of chlorophyll (CHL) using ocean colour remote sensing (OCRS) signals in
coastal waters is difficult due to the presence of two other constituents altering the
light signal: coloured dissolved organic material (CDOM) and mineral suspended
sediments (MSS). Artificial neural networks (NNs) have the capacity to deal with signal
complexity and are a potential solution to the problem. Here NNs are developed to
operate on two datasets replicating MODIS Aqua bands simulated using Hydrolight
5.2. Artificial noise is added to the simulated signal to improve realism. Both datasets
use the same ranges of in water constituent concentrations, and differ by the type of
logarithmic concentration distributions. The first uses a Gaussian distribution to
simulate samples from natural water conditions. The second uses a flat distribution
and is intended to allow exploration of the impact of undersampling extremes at both
high and low concentrations in the Gaussian distribution. The impact of the
concentration distribution structure is assessed and no benefits were found by
switching to a flat distribution. The normal distribution performs better because it
reduces the number of low concentration samples that are relatively difficult to
resolve against varying concentrations of other constituents. In this simulated
environment NNs have the capacity to estimate CHL with outstanding
performance compared to real in situ algorithms, except for low values when
other constituents dominate the light signal in coastal waters. CDOM and MSS
can also be predicted with very high accuracies using NNs. It is found that
simultaneous retrieval of all three constituents using multitask learning (MTL)
does not provide any advantage over single parameter retrievals. Finally it is
found that increasing the number of wavebands generally improves NN
performance, though there appear to be diminishing returns beyond ~8 bands. It
is also shown that a smaller number of carefully selected bands performs better than
a uniformly distributed band set of the same size. These results provide useful insight
into future performance for NNs using hyperspectral satellite sensors and highlight
specific wavebands benefits.
Forlag
Frontiers MediaSitering
Hadjal, Paterson, McKee. Neural networks to retrieve in water constituents applied to radiative transfer models simulating coastal water conditions. Frontiers in Remote Sensing. 2023;4Metadata
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