This paper introduces a novel visual analytics approach, DCPViz, to enable climate scientists to explore massive climate data interactively without requiring the upfront movement of massive data. Thus, climate scientists are afforded more effective approaches to support the identification of potential trends and patterns in climate projections and their subsequent impacts. We designed the DCPViz pipeline to fetch and extract NEX-DCP30 data with minimal data transfer from their public sources. We implemented DCPViz to demonstrate its scalability and scientific value and to evaluate its utility under three use cases based on different models and through domain expert feedback.
翻译:本文介绍了一种新型的视觉分析方法DCPViz, 使气候科学家能够互动探索大规模气候数据,而不需要大量数据的前沿移动。因此,气候科学家可以获得更有效的方法,支持确定气候预测及其随后影响的潜在趋势和模式。我们设计了DCPViz管道,从公共来源获取和提取国家执行-DCP30数据,其数据传输最少。我们实施了DCPViz,以展示其可扩展性和科学价值,并根据基于不同模型和领域专家反馈的三个使用案例评估其效用。