Signal Selection in a Complex Environmental Distributed Sensing Problem

Gabor Makrai, I. Bate
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Abstract

Supporting sustainable development for the urban environment is crucial in the age of rapid urbanisation. Air pollution modelling is one of the key tools for researchers, scientists, and urban planners to understand pollution behaviour. Recent updates in air quality regulations are challenging the state-of-the-art air pollution modelling techniques by requiring accurate predictions on a high temporal level, i.e. predictions at the hourly level rather than the annual level. Current state-of-the-art models designed to have good prediction accuracy on the low temporal resolution by assuming that the pollution is in steady state. Making predictions on higher temporal resolution violates this assumption and causing inaccurate predictions. We introduce a novel statistical regression based air pollution model which produces accurate hourly predictions by using data with high temporal resolution and advanced regression algorithms. We conducted an analysis which shows that the state-of-the-art evaluation techniques (e.g. RMSE) do not describe the nature of the mispredictions of the models built on different data subsets. We carried out an extensive input data evaluation experiment where we concluded that our approach could achieve further accuracy improvement by training the models on a carefully selected subset of the input data.
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复杂环境分布式传感问题中的信号选择
在快速城市化的时代,支持城市环境的可持续发展至关重要。空气污染模型是研究人员、科学家和城市规划者了解污染行为的关键工具之一。最近更新的空气质量法规对最先进的空气污染模拟技术提出了挑战,因为它要求在高时间水平上进行准确的预测,即以小时而不是以年为单位进行预测。目前最先进的模型通过假设污染处于稳定状态,在低时间分辨率下具有良好的预测精度。在较高的时间分辨率下进行预测违背了这一假设,并导致了不准确的预测。我们介绍了一种新的基于统计回归的空气污染模型,该模型通过使用具有高时间分辨率的数据和先进的回归算法来产生准确的每小时预测。我们进行了一项分析,表明最先进的评估技术(例如RMSE)不能描述基于不同数据子集的模型的错误预测的性质。我们进行了广泛的输入数据评估实验,我们得出结论,我们的方法可以通过在精心选择的输入数据子集上训练模型来进一步提高准确性。
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