[Prediction of PM10 Concentration in Dry Bulk Ports Using a Combined Deep Learning Model Considering Feature Meteorological Factors].

Q2 Environmental Science 环境科学 Pub Date : 2024-09-08 DOI:10.13227/j.hjkx.202310217
Jin-Xing Shen, Qin-Xin Liu, Xue-Jun Feng
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Abstract

Accurate prediction of PM10 concentration is important for effectively managing PM10 exposure and mitigating health and economic risks posed to humans in dry bulk ports. However, accurately capturing the time-series nonlinear variation characteristics of PM10 concentration is challenging owing to the specific intensity of port operation activities and the influence of meteorological factors. To address such challenges, a novel combined deep learning model (CLAF) was proposed, merging cascaded convolutional neural networks (CNN), long short-term memory (LSTM), and an attention mechanism (AM). This integrated model aimed to forecast hourly PM10 concentration in dry bulk ports. First, using the random forest characteristic importance algorithm, the distinct meteorological factors were identified among the selected five meteorological factors. These selected factors were incorporated into the prediction model along with the PM10 concentration. Subsequently, the CNN layer was employed to extract high-dimensional time-varying features from the input variables, while the LSTM layer captured sequential features and long-term dependencies. In the AM layer, different weights were assigned to the output components of the LSTM layer to amplify the effects of important information. Finally, three evaluation metrics were applied to compare the performance of the CLAF model with three basic models and three commonly used prediction models. Real-case data was collected and used in this study. Comparison results demonstrated that considering the meteorological factors could improve the prediction accuracy and fitting performance of PM10 concentration in ports. The CLAF model reduced the mean absolute error statistic by 13.92%-56.9%, decreased the mean square error statistic by 45.99%-81.02%, and improved the goodness-of-fit statistic by 3.2%-15.5%.

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[使用考虑特征气象因素的组合深度学习模型预测干散货港口 PM10 浓度]。
准确预测 PM10 浓度对于有效管理 PM10 暴露和降低干散货港口对人类造成的健康和经济风险非常重要。然而,由于港口作业活动的特殊强度和气象因素的影响,准确捕捉 PM10 浓度的时间序列非线性变化特征具有挑战性。为了应对这些挑战,研究人员提出了一种新颖的组合深度学习模型(CLAF)该模型融合了级联卷积神经网络(CNN)、长短期记忆(LSTM)和注意力机制(AM)。该综合模型旨在预测干散货港口每小时的 PM10 浓度。首先,利用随机森林特征重要性算法,从选定的五个气象因子中识别出不同的气象因子。这些选定的因子与 PM10 浓度一起被纳入预测模型。随后,采用 CNN 层从输入变量中提取高维时变特征,而 LSTM 层则捕捉序列特征和长期依赖关系。在 AM 层,为 LSTM 层的输出分量分配了不同的权重,以放大重要信息的效果。最后,应用了三个评估指标来比较 CLAF 模型与三个基本模型和三个常用预测模型的性能。本研究收集并使用了真实案例数据。比较结果表明,考虑气象因素可以提高港口 PM10 浓度的预测精度和拟合性能。CLAF 模型的平均绝对误差统计量减少了 13.92%-56.9%,均方误差统计量减少了 45.99%-81.02%,拟合优度统计量提高了 3.2%-15.5%。
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来源期刊
环境科学
环境科学 Environmental Science-Environmental Science (all)
CiteScore
4.40
自引率
0.00%
发文量
15329
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