Villa Ferdinando, Bagstad Kenneth J, Voigt Brian, Johnson Gary W, Portela Rosimeiry, Honzák Miroslav, Batker David
Basque Centre for Climate Change (BC3), IKERBASQUE, Basque Foundation for Science, Bilbao, Bizkaia, Spain.
Geosciences & Environmental Change Science Center, U.S. Geological Survey, Denver, Colorado, United States of America.
PLoS One. 2014 Mar 13;9(3):e91001. doi: 10.1371/journal.pone.0091001. eCollection 2014.
Ecosystem Services (ES) are an established conceptual framework for attributing value to the benefits that nature provides to humans. As the promise of robust ES-driven management is put to the test, shortcomings in our ability to accurately measure, map, and value ES have surfaced. On the research side, mainstream methods for ES assessment still fall short of addressing the complex, multi-scale biophysical and socioeconomic dynamics inherent in ES provision, flow, and use. On the practitioner side, application of methods remains onerous due to data and model parameterization requirements. Further, it is increasingly clear that the dominant "one model fits all" paradigm is often ill-suited to address the diversity of real-world management situations that exist across the broad spectrum of coupled human-natural systems. This article introduces an integrated ES modeling methodology, named ARIES (ARtificial Intelligence for Ecosystem Services), which aims to introduce improvements on these fronts. To improve conceptual detail and representation of ES dynamics, it adopts a uniform conceptualization of ES that gives equal emphasis to their production, flow and use by society, while keeping model complexity low enough to enable rapid and inexpensive assessment in many contexts and for multiple services. To improve fit to diverse application contexts, the methodology is assisted by model integration technologies that allow assembly of customized models from a growing model base. By using computer learning and reasoning, model structure may be specialized for each application context without requiring costly expertise. In this article we discuss the founding principles of ARIES--both its innovative aspects for ES science and as an example of a new strategy to support more accurate decision making in diverse application contexts.
生态系统服务(ES)是一个既定的概念框架,用于衡量自然为人类提供的益处的价值。随着强大的基于生态系统服务驱动的管理的前景受到考验,我们在准确测量、绘制和评估生态系统服务方面的能力缺陷已浮出水面。在研究方面,生态系统服务评估的主流方法仍无法解决生态系统服务提供、流动和使用中固有的复杂、多尺度生物物理和社会经济动态问题。在实践方面,由于数据和模型参数化要求,方法的应用仍然很繁琐。此外,越来越明显的是,占主导地位的“一刀切”范式往往不适用于解决广泛的人类-自然耦合系统中存在的现实世界管理情况的多样性问题。本文介绍了一种名为ARIES(生态系统服务人工智能)的综合生态系统服务建模方法,旨在在这些方面进行改进。为了提高概念细节和生态系统服务动态的表示,它采用了一种统一的生态系统服务概念化方法,同等重视其生产、流动和社会使用,同时保持模型复杂性足够低,以便在许多情况下和针对多种服务进行快速且低成本的评估。为了更好地适应不同的应用场景,该方法借助模型集成技术,允许从不断增长的模型库中组装定制模型。通过使用计算机学习和推理,模型结构可以针对每个应用场景进行专门化,而无需昂贵的专业知识。在本文中,我们讨论了ARIES的基本原则——既是其在生态系统服务科学方面的创新之处,也是支持在不同应用场景中做出更准确决策的新策略的一个示例。