Air pollution is one of the leading causes of mortality globally, resulting in millions of deaths each year. Efficient monitoring is important to measure exposure and enforce legal limits. New low-cost sensors can be deployed in greater numbers and in more varied locations, motivating the problem of efficient automated placement. Previous work suggests Bayesian optimisation is an appropriate method, but only considered a satellite data set, with data aggregated over all altitudes. It is ground-level pollution, that humans breathe, which matters most. We improve on those results using hierarchical models and evaluate our models on urban pollution data in London to show that Bayesian optimisation can be successfully applied to the problem.
翻译:有效的监测对于衡量接触量和执行法律限制十分重要。新的低成本传感器可以部署数量更多、地点更多,从而引发高效自动安置问题。先前的工作表明,贝叶斯优化是一种适当的方法,但仅被视为卫星数据集,包含所有高度的数据。这是地面污染,人类呼吸是最重要的。我们用等级模型改进这些结果,并评估我们在伦敦的城市污染数据模型,以表明巴耶斯优化可以成功地应用于这一问题。