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A computational approach to managing coupled human-environmental systems: the POSEIDON model of ocean fisheries

机译:一种管理人与环境耦合系统的计算方法:海洋渔业的POSEIDON模型

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Sustainable management of complex human-environment systems, and the essential services they provide, remains a major challenge, felt from local to global scales. These systems are typically highly dynamic and hard to predict, particularly in the context of rapid environmental change, where novel sets of conditions drive coupled socio-economic-environmental responses. Faced with these challenges, our tools for policy development, while informed by the past experience, must not be unduly constrained; they must allow equally for both the fine-tuning of successful existing approaches and the generation of novel ones in unbiased ways. We study ocean fisheries as an example class of complex human-environmental systems, and present a new model (POSEIDON) and computational approach to policy design. The model includes an adaptive agent-based representation of a fishing fleet, coupled to a simplified ocean ecology model. The agents (fishing boats) do not have programmed responses based on empirical data, but respond adaptively, as a group, to their environment (including policy constraints). This conceptual model captures qualitatively a wide range of empirically observed fleet behaviour, in response to a broad set of policies. Within this framework, we define policy objectives (of arbitrary complexity) and use Bayesian optimization over multiple model runs to find policy parameters that best meet the goals. The trade-offs inherent in this approach are explored explicitly. Taking this further, optimization is used to generate novel hybrid policies. We illustrate this approach using simulated examples, in which policy prescriptions generated by our computational methods are counterintuitive and thus unlikely to be identified by conventional frameworks.
机译:从地方到全球范围,对复杂的人类环境系统的可持续管理及其提供的基本服务仍然是一项重大挑战。这些系统通常是高度动态的且难以预测,尤其是在快速的环境变化的背景下,在这种情况下,新的条件集合驱动着社会经济,环境响应的耦合。面对这些挑战,我们的政策制定工具虽然应汲取以往的经验,但也不应受到过分约束;它们必须同等地允许对成功的现有方法进行微调,并以公正的方式产生新颖的方法。我们将海洋渔业作为复杂的人类-环境系统的示例类进行研究,并提出了一种新的模型(POSEIDON)和计算方法来进行政策设计。该模型包括一个基于智能体的捕鱼船队代表,以及简化的海洋生态模型。代理(渔船)没有基于经验数据的程序化响应,而是作为一个整体对他们的环境(包括政策约束)做出自适应响应。该概念模型在定性上捕获了广泛的经验观察到的舰队行为,以响应一系列广泛的政策。在此框架内,我们定义(任意复杂度)策略目标,并对多个模型运行使用贝叶斯优化,以找到最能满足目标的策略参数。明确探讨了这种方法的内在取舍。更进一步,优化用于生成新颖的混合策略。我们使用模拟示例来说明这种方法,在这种示例中,由我们的计算方法生成的政策规定是违反直觉的,因此不太可能被常规框架识别。

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