机器学习模型可以用于基于测量的其他污染物来预测污染物吗?

Steven B. Poore, Cristinel Ababei
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摘要

在本文中,我们研究了机器学习(ML)模型的使用,以基于测量的其他污染物浓度来估计或预测污染物浓度。这种模型可用于空气质量指数(AQI)检测系统,以减少物理传感器的数量,从而降低总体和维护成本。初步探讨了五种不同的长短期记忆模型。然后通过简单的超参数搜索选择最准确的模型进行进一步细化。最终的改进模型在来自四个不同国家的四个不同的空气质量数据集上进行了训练和测试。模拟结果表明,仅根据其他污染物的测量浓度来预测污染物浓度是不够准确的,不足以保证用ML模型替换全部传感器。然而,当提供相同的ML模型作为输入预测污染物的过去测量值而不是先前的预测值时,预测精度非常好。我们得出的结论是,虽然ML模型还不够精确,无法完全取代物理传感器,但这种模型可能非常有助于在传感器故障的情况下提供预测,从而保证传感器融合过程的连续性。
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Can Machine Learning Models be Used to Predict Pollutants based on Measured Other Pollutants?
In this paper, we investigate the use of machine learning (ML) models to estimate or predict concentrations of pollutants based on measured concentrations of other pollutants. Such models could be used in air quality index (AQI) detection systems to decrease the number of physical sensors in order to reduce overall and maintenance costs. Five different long-short term memory (LSTM) models were explored in the preliminary investigation. The most accurate model was then selected for further refinement via simple hyperparameter search. The final refined model was trained and tested on four different air quality datasets from four different countries. Simulation results indicate that prediction of pollutant concentrations based solely on measured concentrations of other pollutants is not accurate enough to warrant total sensor replacement with ML models. However, when the same ML models are provided as input past measurements of the predicted pollutant rather than previously predicted values, the prediction accuracy is excellent. We conclude that while ML models are not yet accurate enough to completely replace physical sensors, such models could be very helpful to provide predictions in situations of sensor failure and thus to guarantee continuous sensor fusion processes.
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