A mathematical control model for commercial fishing through Numerical Differentiation Optimization
DOI:
https://doi.org/10.31185/bsj.Vol21.Iss37.1562Keywords:
Optimal Control for Fishing, Fishing Strategy, The Structure of Fisheries, MethodologyAbstract
Commercial fishing in which fishermen seek to rely on an integrated profit function to optimally control the cost of fishing and revenues from fish sales. Fishing is influenced by the number of fish caught each year. The goal is to maximize fishing returns over 5 years. If there is overfishing (high v), subsequent years' revenues decline, and the fish population does not recover. This control problem boils down to finding the optimal form of extraction to maximize the profit of commercial fishing. Create a mathematical model to solve the problem of economic control of optimal commercial fishing. So we used software to optimize and display the results
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