Air pollution is one of the most important causes of mortality in the world. Monitoring air pollution is useful to learn more about the link between health and pollutants, and to identify areas for intervention. Such monitoring is expensive, so it is important to place sensors as efficiently as possible. Bayesian optimisation has proven useful in choosing sensor locations, but typically relies on kernel functions that neglect the statistical structure of air pollution, such as the tendency of pollution to propagate in the prevailing wind direction. We describe two new wind-informed kernels and investigate their advantage for the task of actively learning locations of maximum pollution using Bayesian optimisation.
翻译:空气污染是全世界最重要的死亡原因之一。 监测空气污染有助于更多地了解健康与污染物之间的联系,并查明需要干预的领域。这种监测费用昂贵,因此必须尽可能高效地设置传感器。 贝叶斯优化在选择传感器位置方面证明是有用的,但通常依赖忽视空气污染统计结构的内核功能,例如污染在风向中扩散的倾向。 我们描述了两个新的了解风的内核,并调查它们利用贝叶斯人优化积极学习最大污染地点的优势。