Towards efficient benthic survey design with the use of Autonomous Underwater Vehicles

This research work contributes towards improvement of stock assessment techniques for macrobenthic organisms in Icelandic waters with the use of an autonomous underwater vehicle (AUV) as a survey tool for population assessments, and through considering ways in which designs of such surveys can be ma...

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Bibliographic Details
Main Author: Singh, Warsha, 1978-
Other Authors: Háskóli Íslands
Format: Book
Language:English
Published: 2015
Subjects:
Online Access:http://hdl.handle.net/1946/22561
Description
Summary:This research work contributes towards improvement of stock assessment techniques for macrobenthic organisms in Icelandic waters with the use of an autonomous underwater vehicle (AUV) as a survey tool for population assessments, and through considering ways in which designs of such surveys can be made more efficient. The Iceland scallop Chlamys islandica (O.F. Muller) population in West Iceland was used as an instructive example to develop the use of a Gavia AUV for benthic research purposes in Icelandic waters. A method for quantitative population assessment of Iceland scallops from AUV photos was developed. It was shown that small-scale AUV surveys can be repeated in a feasible manner to gather enough data replicates to estimate variance of key population parameters, such as mean abundance and size distribution. Information on variability can be used to optimize survey designs by calculating the number of samples that would yield acceptable survey precision. A modest comparison of scallop size distributions obtained from a AUV and classical dredge survey highlighted the bias and size-selectivity of the dredge survey. Optimized sampling strategies for length distributions were also evaluated and emphasis was placed on the importance of detecting peaks (possible year classes) in the distribution with certainty. A generic approach was presented that incorporates sampling costs to identify the optimum number of samples and sample sizes to achieve this. Further, habitat classification techniques for automated detection of scallop beds from AUV images were evaluated. The mechanism developed can potentially be used to automatically classify a large set of seafloor photos to detect scallop habitats. The thesis is methodological and does not necessarily draw any biological conclusions from the study. The analytical techniques developed are generic and can be applied to most projects of this nature. To the best of our knowledge, this is the first time an AUV has been successfully used for quantitative fisheries stock ...