A hidden Markov model approach for determining vessel activity from vessel monitoring system data.


Autoria(s): Peel, D.; Good, N.M.
Data(s)

2011

Resumo

Many fisheries worldwide have adopted vessel monitoring systems (VMS) for compliance purposes. An added benefit of these systems is that they collect a large amount of data on vessel locations at very fine spatial and temporal scales. This data can provide a wealth of information for stock assessment, research, and management. However, since most VMS implementations record vessel location at set time intervals with no regard to vessel activity, some methodology is required to determine which data records correspond to fishing activity. This paper describes a probabilistic approach, based on hidden Markov models (HMMs), to determine vessel activity. A HMM provides a natural framework for the problem and, by definition, models the intrinsic temporal correlation of the data. The paper describes the general approach that was developed and presents an example of this approach applied to the Queensland trawl fishery off the coast of eastern Australia. Finally, a simulation experiment is presented that compares the misallocation rates of the HMM approach with other approaches.

Identificador

Peel, D. and Good, N.M. (2011) A hidden Markov model approach for determining vessel activity from vessel monitoring system data. Canadian Journal of Fisheries and Aquatic Sciences, 68 (7). pp. 1252-1264.

http://era.daf.qld.gov.au/3033/

Publicador

Canadian Science Publishing, NRC Research Press

Relação

http://dx.doi.org/10.1139/f2011-055

http://era.daf.qld.gov.au/3033/

Palavras-Chave #Fishery resources #Fishery technology
Tipo

Article

PeerReviewed