Learning and uncertainty in spatial resource management

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Kwabena Bediako , Bruno Nkuiya
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引用次数: 0

Abstract

Natural resources such as fish, and wildlife have the ability to move across different areas within an ecosystem. Such movements are subject to random changes in environmental conditions (e.g., nutrients, temperature, oxygen). Although empirical evidence suggests that learning about such movements helps improve management, the related economic literature concentrates on scenarios in which the resource population lives in a closed area and cannot migrate. In this paper, we develop a spatial bioeconomic model to examine a renewable resource harvester’s responses to learning about fish movements. Our baseline is the scenario in which the harvester is fully informed about the distribution of fish movements. We find that introducing uncertainty and learning about fish movements critically affects extraction incentives. For instance, we show that uncertainty and learning may increase harvest in a patch and reduce harvest in another patch when the marginal harvesting cost function is constant. In the stock dependent marginal harvesting cost case, we delineate conditions under which uncertainty and learning increase harvest in all patches. We also show how harvest responses to learning change with the distribution of uncertainty.

空间资源管理中的学习与不确定性
鱼类和野生动物等自然资源能够在生态系统内的不同区域间移动。这种移动会受到环境条件(如养分、温度、氧气)随机变化的影响。虽然经验证据表明,了解这种移动有助于改善管理,但相关的经济文献主要集中在资源种群生活在封闭区域且无法迁移的情况下。在本文中,我们建立了一个空间生物经济模型,以研究可再生资源捕捞者对了解鱼类动向的反应。我们的基线是捕捞者完全了解鱼类移动分布的情况。我们发现,引入不确定性和对鱼类移动的了解会严重影响采掘动机。例如,我们表明,当边际捕捞成本函数不变时,不确定性和学习可能会增加某一区域的捕捞量,而减少另一区域的捕捞量。在边际捕捞成本取决于种群的情况下,我们划定了不确定性和学习会增加所有区域捕捞量的条件。我们还展示了收获量对学习的反应如何随着不确定性的分布而变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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