Model-Based Knowing: How Do Students Ground Their Understanding About Climate Systems in Agent-Based Computer Models?

被引:0
作者
Lina Markauskaite
Nick Kelly
Michael J. Jacobson
机构
[1] The University of Sydney,Faculty of Arts and Social Sciences, Sydney School of Education and Social Work
[2] University of Southern Queensland,Science and Engineering Faculty, Queensland University of Technology; and Australian Digital Futures Institute
[3] The University of Sydney,Faculty of Arts and Social Sciences, Sydney School of Education and Social Work
来源
Research in Science Education | 2020年 / 50卷
关键词
Model-based learning; Socio-scientific issues; Climate change; Complex systems; Grounded cognition; Agent-based models; Science education;
D O I
暂无
中图分类号
学科分类号
摘要
This paper gives a grounded cognition account of model-based learning of complex scientific knowledge related to socio-scientific issues, such as climate change. It draws on the results from a study of high school students learning about the carbon cycle through computational agent-based models and investigates two questions: First, how do students ground their understanding about the phenomenon when they learn and solve problems with computer models? Second, what are common sources of mistakes in students’ reasoning with computer models? Results show that students ground their understanding in computer models in five ways: direct observation, straight abstraction, generalisation, conceptualisation, and extension. Students also incorporate into their reasoning their knowledge and experiences that extend beyond phenomena represented in the models, such as attitudes about unsustainable carbon emission rates, human agency, external events, and the nature of computational models. The most common difficulties of the students relate to seeing the modelled scientific phenomenon and connecting results from the observations with other experiences and understandings about the phenomenon in the outside world. An important contribution of this study is the constructed coding scheme for establishing different ways of grounding, which helps to understand some challenges that students encounter when they learn about complex phenomena with agent-based computer models.
引用
收藏
页码:53 / 77
页数:24
相关论文
共 108 条
  • [1] Barsalou LW(1999)Perceptual symbol systems Behavioral and Brain Sciences 22 577-609
  • [2] Barsalou LW(2008)Grounded cognition Annual Review of Psychology 59 617-645
  • [3] Barsalou LW(2003)Grounding conceptual knowledge in modality-specific systems Trends in Cognitive Sciences 7 84-91
  • [4] Kyle Simmons W(2007)Cognition as coordinated non-cognition Cognitive Processing 8 79-91
  • [5] Barbey AK(2015)Engaging students in modeling as an epistemic practice of science: an introduction to the special issue of the journal of science education and technology Journal of Science Education and Technology 24 125-131
  • [6] Wilson CD(2015)International trends in public perceptions of climate change over the past quarter century Wiley Interdisciplinary Reviews: Climate Change 6 35-61
  • [7] Barsalou LW(2010)Do earth and environmental science textbooks promote middle and high school students’conceptual development about climate change? Bulletin of the American Meteorological Society 91 889-898
  • [8] Breazeal C(1993)Toward an epistemology of physics Cognition and Instruction 10 105-225
  • [9] Smith LB(1998)What changes in conceptual change? International Journal of Science Education 20 1155-1191
  • [10] Campbell T(2007)Climate change: perceptions and discourses of risk Journal of Risk Research 10 623-641