Dear MARMAM community,
Me and my co-author are pleased to share our new published Open Access article 
focusing on the spatial patterns and drivers of marine mammal and seabirds 
bycatch in Alaskan waters.
This study applies Open Access data, Machine Learning algorithms and GIS-based 
spatial analysis and manually digitized historical records to overcome data 
accessibility challenges, offering a comprehensive view of bycatch risk across 
regions and taxa.
Title: A Closer Look at Seabird and Marine Mammal Bycatch Data in Alaska’s 
Longline Groundfish and Pacific Halibut Fisheries: A Reassessment with Open 
Access and Machine Learning Ensembles Explicit in Space and Time Shows 
Deficiencies.
Authors: Simone Tava & Falk Huettmann
Abstract: Bycatch, the capture of non-target species during fishing operations, 
causes significant ecological, physical, and socio-economic impacts. Despite 
widespread Open Access policies worldwide, effective bycatch assessment using 
Open Access data remains obstructed by cultural barriers, data deficiencies, 
and insufficient data sharing practices. This study evaluated Open Access 
datasets in the context of estimated bycatch in Alaskan EEZ fisheries, an 
underutilized approach in fisheries policies aimed at improving transparency. 
We used Machine Learning and GIS data to evaluate longline fisheries’ impacts 
on marine populations by analyzing ten key species and producing replicable 
results. We reassessed accuracy and quality of existing bycatch estimation in 
Alaskan longline groundfish fisheries. Our findings revealed data aspects 
related to greater impacts on bycatch species than previously reported, with 
potential ecological effects extending beyond the Exclusive Economic Zone 
(EEZ). Spanning 1995–2001, we included projections for 2050, identifying 
systemic underestimations in current fisheries law and data policy. Our 
assessment raises concerns about governance and sustainable certifications 
within US fisheries, especially under the Magnuson-Stevens Act (lacking 
effective bycatch data/policies) and the United Nations Convention on the Law 
of the Sea (UNCLOS) without mandatory Open Access or software standards. The 
current data practices are outdated and require revision, they hinder 
professional performance, progress, trust, and accountability in validating 
sustainable fisheries governance in the US and its role as a global model. Our 
results favor adopting documented Open Access workflows explicit in space and 
time as best practice enhancing transparency and sustainability and improving 
fisheries management, addressing sustainability gaps in current practices.
Journal: Data Science Journal
DOI: https://doi.org/10.5334/dsj-2025-034
We hope this contribution will support ongoing research and conservation 
efforts aimed at reducing bycatch in the North Pacific and Arctic ecosystems.
If you have any questions and would like to discuss the work further or are 
working on similar topic and would like to explore opportunities to collaborate 
then please get in touch.
Best regards,
Simone Tava, University of Southampton
Email: [email protected]

_______________________________________________
MARMAM mailing list
[email protected]
https://lists.uvic.ca/mailman/listinfo/marmam

Reply via email to