Jones James W, Antle John M, Basso Bruno, Boote Kenneth J, Conant Richard T, Foster Ian, Godfray H Charles J, Herrero Mario, Howitt Richard E, Janssen Sander, Keating Brian A, Munoz-Carpena Rafael, Porter Cheryl H, Rosenzweig Cynthia, Wheeler Tim R
University of Florida, Agricultural and Biological Engineering Department, Museum Road, Gainesville, FL 32611, USA.
Oregon State University, USA.
Agric Syst. 2017 Jul;155:240-254. doi: 10.1016/j.agsy.2016.05.014.
Agricultural systems science generates knowledge that allows researchers to consider complex problems or take informed agricultural decisions. The rich history of this science exemplifies the diversity of systems and scales over which they operate and have been studied. Modeling, an essential tool in agricultural systems science, has been accomplished by scientists from a wide range of disciplines, who have contributed concepts and tools over more than six decades. As agricultural scientists now consider the "next generation" models, data, and knowledge products needed to meet the increasingly complex systems problems faced by society, it is important to take stock of this history and its lessons to ensure that we avoid re-invention and strive to consider all dimensions of associated challenges. To this end, we summarize here the history of agricultural systems modeling and identify lessons learned that can help guide the design and development of next generation of agricultural system tools and methods. A number of past events combined with overall technological progress in other fields have strongly contributed to the evolution of agricultural system modeling, including development of process-based bio-physical models of crops and livestock, statistical models based on historical observations, and economic optimization and simulation models at household and regional to global scales. Characteristics of agricultural systems models have varied widely depending on the systems involved, their scales, and the wide range of purposes that motivated their development and use by researchers in different disciplines. Recent trends in broader collaboration across institutions, across disciplines, and between the public and private sectors suggest that the stage is set for the major advances in agricultural systems science that are needed for the next generation of models, databases, knowledge products and decision support systems. The lessons from history should be considered to help avoid roadblocks and pitfalls as the community develops this next generation of agricultural systems models.
农业系统科学所产生的知识,能让研究人员思考复杂问题或做出明智的农业决策。这门科学悠久的历史体现了其运作及研究的系统和尺度的多样性。建模是农业系统科学中的一项重要工具,六十多年来,来自众多学科的科学家都参与其中,贡献了各种概念和工具。如今,随着农业科学家开始思考应对社会日益复杂的系统问题所需的“下一代”模型、数据和知识产品,回顾这段历史及其经验教训十分重要,以确保我们避免重复发明,并努力考虑相关挑战的各个方面。为此,我们在此总结农业系统建模的历史,并找出可资借鉴的经验教训,以指导下一代农业系统工具和方法的设计与开发。过去的一系列事件,再加上其他领域的整体技术进步,极大地推动了农业系统建模的发展,包括基于过程的作物和牲畜生物物理模型、基于历史观测的统计模型,以及家庭、区域到全球尺度的经济优化和模拟模型。农业系统模型的特点因所涉及的系统、其尺度以及不同学科研究人员开发和使用这些模型的广泛目的而有很大差异。机构间、学科间以及公共和私营部门之间更广泛合作 的近期趋势表明,农业系统科学取得重大进展的阶段已经来临,这些进展是下一代模型、数据库、知识产品和决策支持系统所必需的。在该领域开发下一代农业系统模型时,应借鉴历史经验教训,以避免障碍和陷阱。