Nowadays, the world's fishing fleet uses 20\% more fuel to catch the
same amount offish compared to 30 years ago. Addressing this negative
environmental and economic performance is crucial due to stricter
emission regulations, rising fuel costs, and predicted declines in fish
biomass and body sizes due to climate change. Investment in more
efficient engines, larger ships and better fuel has been the main
response, but this is only feasible in the long term at high
infrastructure cost. An alternative is to optimize operations such as
the routing of a fleet, which is an extremely complex problem due to its
dynamic (time-dependent) moving target characteristics. To date, no
other scientific work has approached this problem in its full
complexity, i.e., as a dynamic vehicle routing problem with multiple
time windows and moving targets. In this paper, two bi-objective mixed
linear integer programming (MIP) models are presented, one for the
static variant and another for the time-dependent variant. The
bi-objective approaches allow to trade off the economic (e.g.,
probability of high catches) and environmental (e.g., fuel consumption)
objectives. To overcome the limitations of exact solutions of the MIP
models, a greedy randomized adaptive search procedure for the
multi-objective problem (MO-GRASP) is proposed. The computational
experiments demonstrate the good performance of the MO-GRASP algorithm
with clearly different results when the importance of each objective is
varied. In addition, computational experiments conducted on historical
data prove the feasibility of applying the MO-GRASP algorithm in a real
context and explore the benefits of joint planning (collaborative
approach) compared to a non-collaborative strategy. Collaborative
approaches enable the definition of better routes that may select
slightly worse fishing and planting areas (2.9\%), but in exchange fora
significant reduction in fuel consumption (17.3\%) and time at sea
(10.1\%) compared to non-collaborative strategies. The final experiment
examines the importance of the collaborative approach when the number of
available drifting fishing aggregation devices (dFADs) per vessel is
reduced
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