Lindkvist Emilie, Ekeberg Örjan, Norberg Jon
Stockholm Resilience Centre, Stockholm University, Stockholm, Sweden
Department of Scientific Computing and Technology, School of Computer Science and Communication, KTH Royal Institute of Technology, Stockholm, Sweden.
Proc Biol Sci. 2017 Mar 15;284(1850). doi: 10.1098/rspb.2016.2762.
As a consequence of global environmental change, management strategies that can deal with unexpected change in resource dynamics are becoming increasingly important. In this paper we undertake a novel approach to studying resource growth problems using a computational form of adaptive management to find optimal strategies for prevalent natural resource management dilemmas. We scrutinize adaptive management, or learning-by-doing, to better understand how to simultaneously manage and learn about a system when its dynamics are unknown. We study important trade-offs in decision-making with respect to choosing optimal actions (harvest efforts) for sustainable management during change. This is operationalized through an artificially intelligent model where we analyze how different trends and fluctuations in growth rates of a renewable resource affect the performance of different management strategies. Our results show that the optimal strategy for managing resources with declining growth is capable of managing resources with fluctuating or increasing growth at a negligible cost, creating in a management strategy that is both efficient and robust towards future unknown changes. To obtain this strategy, adaptive management should strive for: high learning rates to new knowledge, high valuation of future outcomes and modest exploration around what is perceived as the optimal action.
由于全球环境变化,能够应对资源动态意外变化的管理策略正变得越来越重要。在本文中,我们采用一种新颖的方法来研究资源增长问题,即使用适应性管理的计算形式来为普遍存在的自然资源管理困境找到最优策略。我们仔细研究适应性管理,即边做边学,以更好地理解当系统动态未知时如何同时管理和了解该系统。我们研究在变化期间为可持续管理选择最优行动(收获努力)时决策中的重要权衡。这通过一个人工智能模型来实现,在该模型中我们分析可再生资源增长率的不同趋势和波动如何影响不同管理策略的性能。我们的结果表明,管理增长下降资源的最优策略能够以可忽略不计的成本管理增长波动或增长的资源,从而产生一种对未来未知变化既高效又稳健的管理策略。为了获得这种策略,适应性管理应努力做到:对新知识有高学习率,对未来结果有高估值,并围绕被视为最优行动的方面进行适度探索。