Abstract

Epi-macrobenthic species richness, abundance and composition are linked with type, assemblage and structural complexity of seabed habitat within coastal ecosystems. However, the evaluation of these habitats is highly hindered by limitations related to both waterborne surveys (slow acquisition, shallow water and low reactivity) and water clarity (turbid for most coastal areas). Substratum type/diversity and bathymetric features were elucidated using a supervised method applied to airborne bathymetric LiDAR waveforms over Saint-Siméon–Bonaventure's nearshore area (Gulf of Saint-Lawrence, Québec, Canada). High-resolution underwater photographs were taken at three hundred stations across an 8-km2 study area. Seven models based upon state-of-the-art machine learning techniques such as Naïve Bayes, Regression Tree, Classification Tree, C 4.5, Random Forest, Support Vector Machine, and CN2 learners were tested for predicting eight epi-macrobenthic species diversity metrics as a function of the class number. The Random Forest outperformed other models with a three-discretized Simpson index applied to epi-macrobenthic communities, explaining 69% (Classification Accuracy) of its variability by mean bathymetry, time range and skewness derived from the LiDAR waveform. Corroborating marine ecological theory, areas with low Simpson epi-macrobenthic diversity responded to low water depths, high skewness and time range, whereas higher Simpson diversity relied upon deeper bottoms (correlated with stronger hydrodynamics) and low skewness and time range. The degree of species heterogeneity was therefore positively linked with the degree of the structural complexity of the benthic cover. This work underpins that fully exploited bathymetric LiDAR (not only bathymetrically derived by-products), coupled with proficient machine learner, is able to rapidly predict habitat characteristics at a spatial resolution relevant to epi-macrobenthos diversity, ranging from clear to turbid waters. This method might serve both to nurture marine ecological theory and to manage areas with high species heterogeneity where navigation is hazardous and water clarity opaque to passive optical sensors.

Highlights

  • The biodiversity conservation strategy usually starts with the characterization of landscapes and biological communities, focuses on habitats that support biodiversity positive anomalies [1]

  • Through only three variables derived from bathymetric LiDAR waveform, efficient predictive mapping of the biotic index was fully driven across turbid nearshore ecosystems

  • Many biological and ecological processes within temperate coastal oceanic provinces are recognized to be driven by light, temperature, nutrients and currents, all of which are influenced by bathymetry [6,12]

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Summary

Introduction

The biodiversity conservation strategy usually starts with the characterization of landscapes and biological communities, focuses on habitats that support biodiversity positive anomalies [1]. Defining a set of environmental variables which are recognized to entail direct or indirect responses from presence/absence species and linking them by an ecologically-relevant statistical model enable the acquisition of significant information aimed at conservation planning [2,3,4]. Despite the rapidly growing use of ecological spatial modelling within last decade [3,6,7,8,9], Austin [2] showed a paucity of consistency between species predictive models and ecological theory as well as little discussion about these discrepancies. Pittman et al [6] equated three modelling techniques for predicting fish species richness across shallow-water seascapes and concluded that the tree-based model was more proficient than multiple linear regression and neural networks, showing an overall map accuracy of 75% for osteichthyes

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