Abstract

The versatility of the neural network (NN) technique allows it to be successfully applied in many fields of science and to a great variety of problems. For each problem or class of problems, a generic NN technique (e.g., multilayer perceptron (MLP)) usually requires some adjustments, which often are crucial for the development of a successful application. In this paper, we introduce a NN application that demonstrates the importance of such adjustments; moreover, in this case, the adjustments applied to a generic NN technique may be successfully used in many other NN applications. We introduce a NN technique, linking chlorophyll “a” (chl-a) variability—primarily driven by biological processes—with the physical processes of the upper ocean using a NN-based empirical biological model for chl-a. In this study, satellite-derived surface parameter fields, sea-surface temperature (SST) and sea-surface height (SSH), as well as gridded salinity and temperature profiles from 0 to 75m depth are employed as signatures of upper-ocean dynamics. Chlorophyll-a fields from NOAA’s operational Visible Imaging Infrared Radiometer Suite (VIIRS) are used, as well as Moderate Resolution Imaging Spectroradiometer (MODIS) and Sea-Viewing Wide Field-of-View Sensor (SeaWiFS) chl-a concentrations. Different methods of optimizing the NN technique are investigated. Results are assessed using the root-mean-square error (RMSE) metric and cross-correlations between observed ocean color (OC) fields and NN output. To reduce the impact of noise in the data and to obtain a stable computation of the NN Jacobian, an ensemble of NN with different weights is constructed. This study demonstrates that the NN technique provides an accurate, computationally cheap method to generate long (up to 10 years) time series of consistent chl-a concentration that are in good agreement with chl-a data observed by different satellite sensors during the relevant period. The presented NN demonstrates a very good ability to generalize in terms of both space and time. Consequently, the NN-based empirical biological model for chl-a can be used in oceanic models, coupled climate prediction systems, and data assimilation systems to dynamically consider biological processes in the upper ocean.

Highlights

  • The neural network (NN) technique is a generic machinelearning technique

  • We evaluate the performance of the NN to emulate chl-a concentration and the NN’s ability to generate a long consistent time series of chl-a concentrations, examining the impact of (i) extending the training set, (ii) optimizing NN inputs, (iii) optimizing outputs, and (iv) adding additional outputs that correlate with primary output

  • Aiming at improving the predictive skill of the previously developed NN, this effort evaluated several optimization methods, developing (1) an empirical biological model for chl-a capable of long-term prediction of global chl-a fields and (2) a NN capable of simulating a longterm global chl-a data set that is consistent with observations from three ocean color (OC) sensors (SeaWiFS, Moderate Resolution Imaging Spectroradiometer (MODIS), and Visible Imaging Infrared Radiometer Suite (VIIRS))

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Summary

Introduction

The neural network (NN) technique is a generic machinelearning technique The versatility of this technique allows it to be successfully applied in many fields of science and to a great variety of problems. We developed a NN-based empirical Biological Model for Chlorophyll Concentration (BMChC) in the upper ocean. Such a model is needed for the assimilation. A new approach, based on a neural network (NN) technique, was developed that allows filling large spatial (up to global-size) and temporal (up to year-long) gaps in ocean color (chl-a) fields produced by the Joint Polar Satellite System (JPSS) Visible Infrared Imaging Radiometer Suite (VIIRS) satellite.

Optimization of NN Performance
Findings
Discussion and Conclusions
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