基于主动部分标记的建筑元数据序列学习

Lu Lin, Zheng Luo, Dezhi Hong, Hongning Wang
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引用次数: 7

摘要

现代建筑配备了数千个传感和控制点。自动提取每个点的物理上下文的能力,例如,类型,位置,以及与其他点的关系,是实现大规模构建分析的关键。然而,这个过程是昂贵的,因为它通常需要对建筑系统及其点命名方案有深刻理解的领域专业知识。在本研究中,我们的目标是减少将传感器映射到其上下文所需的人力,即元数据映射。我们将问题表述为一个顺序标记过程,并使用条件随机场来利用元数据中观察到的规则和依赖结构。我们开发了一套主动学习策略来自适应地选择最具信息量的子序列用于人类标记,这大大减少了领域专家的输入。我们在三个不同的建筑物上评估了我们的方法,并观察到从提议的解决方案中获得令人鼓舞的元数据映射性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential Learning with Active Partial Labeling for Building Metadata
Modern buildings are instrumented with thousands of sensing and control points. The ability to automatically extract the physical context of each point, e.g., the type, location, and relationship with other points, is the key to enabling building analytics at scale. However, this process is costly as it usually requires domain expertise with a deep understanding of the building system and its point naming scheme. In this study, we aim to reduce the human effort required for mapping sensors to their context, i.e., metadata mapping. We formulate the problem as a sequential labeling process and use the conditional random field to exploit the regular and dependent structures observed in the metadata. We develop a suite of active learning strategies to adaptively select the most informative subsequences in point names for human labeling, which significantly reduces the inputs from domain experts. We evaluated our approach on three different buildings and observed encouraging performance in metadata mapping from the proposed solution.
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