面向数据驱动能源建模的增强信任可视化分析

Akshith Reddy Kandakatla, V. Chandan, Soumya Kundu, Indrasis Chakraborty, Kristin A. Cook, Aritra Dasgupta
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引用次数: 1

摘要

在各种科学和工程学科中,数据驱动的预测建模的前景正在日益实现,专家们习惯于更传统的、仿真驱动的建模实践。然而,信任仍然是领域专家更多采用基于机器学习的模型的瓶颈,这些专家可能不一定受过数据科学方面的培训。在本文中,我们将重点放在建筑能源领域,在该领域,基于物理的模拟正在被基于机器学习的方法所补充或取代,用于预测各种时空尺度上的能源供需。我们与能源科学家和工程师密切合作研究信任问题,并描述如何利用可视化分析来缓解在该领域具有不同程度专业知识和分析目标的利益相关者的信任瓶颈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Trust-Augmented Visual Analytics for Data-Driven Energy Modeling
The promise of data-driven predictive modeling is being increasingly realized in various science and engineering disciplines, where experts are used to the more conventional, simulation-driven modeling practices. However, trust remains a bottleneck for greater adoption of machine learning-based models for domain experts, who might not be necessarily trained in data science. In this paper, we focus on the building energy domain, where physics-based simulations are being complemented or replaced by machine learning-based methods for forecasting energy supply and demand at various spatio-temporal scales. We study the trust problem in close collaboration with energy scientists and engineers and describe how visual analytics can be leveraged for alleviating this trust bottleneck for stakeholders with varying degrees of expertise and analytical goals in this domain.
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