Publications des scientifiques de l'IRD

Behivoke F., Etienne M. P., Guitton J., Randriatsara R. M., Ranaivoson E., Léopold Marc. (2021). Estimating fishing effort in small-scale fisheries using GPS tracking data and random forests. Ecological Indicators, 123, 107321 [7 p.]. ISSN 1470-160X.

Titre du document
Estimating fishing effort in small-scale fisheries using GPS tracking data and random forests
Année de publication
2021
Type de document
Article référencé dans le Web of Science WOS:000615921800004
Auteurs
Behivoke F., Etienne M. P., Guitton J., Randriatsara R. M., Ranaivoson E., Léopold Marc
Source
Ecological Indicators, 2021, 123, 107321 [7 p.] ISSN 1470-160X
During the last decade spatial patterns of industrial fisheries have been increasingly characterized using tracking technologies and machine learning analytical algorithms. In contrast, for small-scale fisheries, fishers' behaviour for estimating and mapping fishing effort has only been anecdotally explored. Following a comparative approach, we conducted a boat tracking survey in a small-scale reef fishery in Madagascar and investigated the performance of a learning random forest algorithm and a speed threshold for estimating and mapping fishing effort. We monitored the movements of a sample of 31 traditional sailing fishing boats at around 45 s time interval using small GPS trackers. A total of 306 daily tracks were recorded among five gear types (beach seine, mosquito trawl net, gillnet, handline, and speargun). To ground-truth GPS location data, fishers' behaviour was simultaneously recorded by a single on-board observer for 49 tracks. Typical, gear-specific track patterns were observed. Overall, the random forest model was found to be the most reliable, generic, and complex method for processing boat GPS tracks and detecting spatially-explicit fishing events regardless gear type. Predictions of mean fishing effort per trip showed that both methods reached from 89.4% to 97.0% accuracy across gear types. Our findings showed that boat tracking combined with on-board observation would improve the reliability of spatial fishing effort indicators in small-scale fisheries and contribute to more efficient management. Selection of the most appropriate GPS data processing method is dependent on local gear use, fishing effort indicators, and available analytical expertise.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Ressources halieutiques [040] ; Télédétection [126]
Description Géographique
MADAGASCAR
Localisation
Fonds IRD [F B010081012]
Identifiant IRD
fdi:010081012
Contact