Abstract
Earth system models synthesize the science of interactions among
multiple biophysical and, increasingly, human processes across a wide
range of scales. Ecohydrologic models are a subset of earth system
models that focus particularly on the complex interactions between
ecosystem processes and the storage and flux of water. Ecohydrologic
models often focus at scales where direct observations occur: plots,
hillslopes, streams, and watersheds, as well as where land and resource
management decisions are implemented. These models complement
field-based and data-driven science by combining theory and data to
create virtual laboratories. Ecohydrologic models are tools that
managers can use to ask “what if” questions and domain scientists can
use to explore the implications of new theory or measurements. Recent
decades have seen substantial advances in ecohydrologic models, building
on both new domain science and advances in software engineering and data
availability. The increasing sophistication of ecohydrologic models
however, presents a barrier to their widespread use and credibility.
Because they are “black boxes,” what the models actually do is rarely
clear—even to those who design and use them—and this opacity leads
to mistrust and complicates the interpretation of model results. For
models to effectively advance our understanding of how plants and water
interact, we must improve how we visualize not only model outputs, but
also the underlying theories that are encoded within the models. In this
paper, we outline a framework for increasing the usefulness of
ecohydrologic models through better visualization. We outline four
complementary approaches, ranging from simple best practices that
leverage existing technologies, to ideas that would engage novel
software engineering and cutting edge human-computer interface design.
Our goal is to open the ecohydrologic model black box in ways that will
engage multiple audiences, from novices to model developers, and support
learning, new discovery, and environmental problem solving.