2022
DOI: 10.1109/access.2022.3173734
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Revealing Influence of Meteorological Conditions on Air Quality Prediction Using Explainable Deep Learning

Abstract: Meteorological conditions have a strong influence on air quality and can play an important role in air quality prediction. However, due to the ''black-box'' nature of deep learning, it is difficult to obtain trustworthy deep learning models when considering meteorological conditions in air quality prediction. To address the above problem, in this paper, we reveal the influence of meteorological conditions on air quality prediction by utilizing explainable deep learning. In this paper, (1) the source data from … Show more

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Cited by 14 publications
(7 citation statements)
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“…Composite air quality prediction frameworks, integrating various machine learning and deep learning models, have shown even more promising outcomes. For example, combining long short-term memory networks with Gated Recurrent Unit model [27], random subspace [28], attention mechanism [29], XGBoosting tree [30], random forest regression based on linear regression [31], and an adaptive fuzzy inference system with the Extreme Learning Machine [32] has yielded substantial advancements. Phruksahiran, N [33] introduced the Geographically Weighted Prediction Method (GWP), leveraging optimal machine learning algorithms and additional prediction variables.…”
Section: Introductionmentioning
confidence: 99%
“…Composite air quality prediction frameworks, integrating various machine learning and deep learning models, have shown even more promising outcomes. For example, combining long short-term memory networks with Gated Recurrent Unit model [27], random subspace [28], attention mechanism [29], XGBoosting tree [30], random forest regression based on linear regression [31], and an adaptive fuzzy inference system with the Extreme Learning Machine [32] has yielded substantial advancements. Phruksahiran, N [33] introduced the Geographically Weighted Prediction Method (GWP), leveraging optimal machine learning algorithms and additional prediction variables.…”
Section: Introductionmentioning
confidence: 99%
“…In the Jing-Jin-Ji region, which has the worst air pollution in China, a neural network with a temporal sliding long short-term memory extended model [9] is used to forecast the following 24 hours' average PM2.5 concentration. A multidisciplinary approach is used in the research on explainable AI for accurate air quality analysis, combining knowledge from areas including air quality research, machine learning, and meteorology [10]. Article [11] presents a visual analytics method to assist specialists in validating and confirming the learning of the ML model with their domain knowledge.…”
Section: Literature Reviewmentioning
confidence: 99%
“…It connects optimal credit allocation with local explanations by the classical Shapley values from game theory and the related extensions [59]. It aims to calculate the impact of different feature variables on the model output in each sample and show the positivity or negativity of the impact [60]. SHAP calculates distinct marginal contributions of feature variables considering all sequences of variables and ensuring equitable comparisons.…”
Section: Explainability Analysis Of Deep Learning Modelsmentioning
confidence: 99%