Abstract

Seabed sediment composition is an important component of benthic habitat and there are many approaches for producing maps that convey sediment information to marine managers. Random Forest is a popular statistical method for thematic seabed sediment mapping using both categorical and quantitative supervised modelling approaches. This study compares the performance and qualities of these Random Forest approaches to predict the distribution of fine-grained sediments from grab samples as one component of a multi-model map of sediment classes in Frobisher Bay, Nunavut, Canada. The second component predicts the presence of coarse substrates from underwater video. Spatial and non-spatial cross-validations were conducted to evaluate the performance of categorical and quantitative Random Forest models and maps were compared to determine differences in predictions. While both approaches seemed highly accurate, the non-spatial cross-validation suggested greater accuracy using the categorical approach. Using a spatial cross-validation, there was little difference between approaches—both showed poor extrapolative performance. Spatial cross-validation methods also suggested evidence of overfitting in the coarse sediment model caused by the spatial dependence of transect samples. The quantitative modelling approach was able to predict rare and unsampled sediment classes but the flexibility of probabilistic predictions from the categorical approach allowed for tuning to maximize extrapolative performance. Results demonstrate that the apparent accuracies of these models failed to convey important differences between map predictions and that spatially explicit evaluation strategies may be necessary for evaluating extrapolative performance. Differentiating extrapolative from interpolative prediction can aid in selecting appropriate modelling methods.

Highlights

  • There is growing pressure on marine ecosystems due to human use, especially near coasts where interactions between terrestrial and marine drivers have the potential to generate large cumulative impacts [1]

  • In the “muddy/sandy” classification, 79.38% of samples fall into the “muddy” class, with the remaining 20.62% in “sandy.” Coarse substrates were observed in 20.06% of raster cells containing underwater video observations (e.g., Figure 7; Table 1)

  • The ability of the quantitative approach to predict rare and unsampled classes may be an important quality depending on sample distribution and mapping goals, yet we found the probabilistic threshold qualities of the categorical approach with a binary scheme (i.e., “muddy/sandy”) made it more suitable for extrapolation in this study

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Summary

Introduction

There is growing pressure on marine ecosystems due to human use, especially near coasts where interactions between terrestrial and marine drivers have the potential to generate large cumulative impacts [1]. It is often necessary to balance competing demands from stakeholders with the sustainable management of marine resources and ecology [5]. Marine spatial planning (MSP) is a framework by which this can be accomplished [6]. Using MSP, local maps of ecology are analyzed alongside those of human use to identify overlaps and conflicts. This spatial information is used to implement management plans for the current and future use of the marine system [6]

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