Abstract

The blooms of Noctiluca in the Gulf of Oman and the Arabian Sea have been intensifying in recent years, posing now a threat to regional fisheries and the long-term health of an ecosystem supporting a coastal population of nearly 120 million people. We present the results of a local-scale data analysis to investigate the onset and patterns of the Noctiluca blooms, which form annually during the winter monsoon in the Gulf of Oman and in the Arabian Sea. Our approach combines methods in physical and biological oceanography with machine learning techniques. In particular, we present a robust algorithm, the variable-length Linear Dynamic Systems (vLDS) model, that extracts the causal factors and latent dynamics at the local-scale along each individual drifter trajectory, and demonstrate its effectiveness by using it to generate predictive plots for all variables and test macroscopic scientific hypotheses. The vLDS model is a new algorithm specifically designed to analyze the irregular dataset from surface velocity drifters, in which the multivariate time series trajectories are having variable or unequal lengths. The test results provide local-scale statistical evidence to support and check the macroscopic physical and biological Oceanography hypotheses on the Noctiluca blooms; it also helps identify complementary local trajectory-scale dynamics that might not be visible or discoverable at the macroscopic scale. The vLDS model also exhibits a generalization capability (as a machine learning methodology) to investigate important causal factors and hidden dynamics associated with ocean biogeochemical processes and phenomena at the population-level and local trajectory-scale.

Highlights

  • IntroductionWe obtain a robust model, the variable-length Linear Dynamic System Model (vLDS mode, hereafter) that is capable of identifying the causal factors and dynamics at the local-scale population-level along each individual drifter trajectory

  • We have introduced a new model variable-length Linear Dynamic Systems (vLDS) and showed that it offers a new local-scale trajectorybased data analysis tool to recover biogeochemical mechanisms underlying chaotic drifter trajectories that might be unobservable at the macroscopic scale or accessible only in controlled laboratory experiments

  • The latent dynamics recovered by vLDS predictions, on the other hand, is not Robust learning algorithms for capturing oceanic dynamics of Noctiluca blooms using linear dynamical models a linear correlation

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Summary

Introduction

We obtain a robust model, the variable-length Linear Dynamic System Model (vLDS mode, hereafter) that is capable of identifying the causal factors and dynamics at the local-scale population-level along each individual drifter trajectory. The difficulty of analyzing this dataset lies in its irregularity, in which all the multivariate time series trajectories do not share an equal length. This renders the conventional multivariate Linear Dynamical System (LDS) method unsuitable. Statistical, the vLDS model available in the supplementary materials (S1 Software) is a powerful tool that helps: 1) discover local trajectory-scale causal relationships in a high-dimensional dataset, 2) identify complementary local trajectory-scale dynamics that might not be discoverable at the macroscopic scale or accessible in controlled laboratory experiments, and 3) obtain a generalizable machine learning methodology to probe important local trajectory-scale causal factors and hidden dynamics for other trajectory-based datasets in marine ecology

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