用于预测大气颗粒物质量浓度的 BWO-BiLSTM 和 CNN 复合模型

IF 3.9 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Xue Li , Hu Zhao , Jiyuan Cheng , Qiangqiang He , Siqi Gao , Jiandong Mao , Chunyan Zhou , Xin Gong , Zhimin Rao
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引用次数: 0

摘要

大气颗粒物质量浓度的准确预测对于合理制定大气环境管理策略和研究大气污染物的时空演变具有重要意义。为了解决传统预测模型预测精度低、效率低的问题,针对大气颗粒物质量浓度变化的非线性和随机性特征,本文提出了一种基于随机森林(RF)特征选择、白鲸优化(BWO)算法、卷积神经网络(CNN)和双向长短期存储记忆神经网络(BiLSTM)的复合预测模型。在这个复合预测模型中,输入变量通过射频算法进行调整和筛选,以降低网络的复杂性。使用 BWO 对 CNN-BiLSTM 的权值和阈值进行优化,以提高模型的预测精度。使用公开的质量浓度数据和空气动力粒度谱仪(APS)测量数据进行训练,并与预测数据进行比较。实验结果表明,与传统的单一模型和组合模型相比,该复合模型具有更好的预测性能和预测精度。使用公开数据和 APS 数据预测 PM2.5 的拟合系数(R)分别达到 0.8842 和 0.9762。利用公开数据和 APS 数据预测 PM10 的拟合系数(R)分别达到 0.8635 和 0.976。这表明本文提出的模型具有较好的概括性和稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BWO-BiLSTM & CNN composite model for prediction of atmospheric particulate matter mass concentration

Accurate prediction of the mass concentration of atmospheric particulate matter is of great significance for the rational formulation of atmospheric environment management strategies and the study of the spatial and temporal evolution of atmospheric pollutants. In order to solve the problems of low prediction accuracy and low efficiency of traditional prediction models, aiming at the nonlinear and stochastic characteristics of atmospheric particulate matter mass concentration changes, a composite prediction model based on Random Forest (RF) feature selection, Beluga Whale Optimization (BWO) algorithm, Convolutional Neural Network (CNN) and Bidirectional Long and Short-Term Storage Memory Neural Network (BiLSTM) is proposed in this paper. In this composite prediction model, the input variables are adjusted and screened through RF algorithm to reduce the network complexity. The weights and thresholds of CNN-BiLSTM are optimized using BWO to improve the prediction accuracy of the model. The publicly mass concentration data and Aerodynamic Particle Size Spectrometer (APS) measurements are used to train and compare with the predicted data. The experimental results indicate that this composite model has better prediction performance and prediction accuracy compared with the traditional single and the combined model. The fitting coefficient (R2) of PM2.5 prediction using publicly data and APS data can reach 0.8842 and 0.9762, respectively. The R2 for the prediction of PM10 using publicly data and APS data can reach 0.8635 and 0.976, respectively. It indicates that the model proposed in this paper has better generalization and robustness.

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来源期刊
Atmospheric Pollution Research
Atmospheric Pollution Research ENVIRONMENTAL SCIENCES-
CiteScore
8.30
自引率
6.70%
发文量
256
审稿时长
36 days
期刊介绍: Atmospheric Pollution Research (APR) is an international journal designed for the publication of articles on air pollution. Papers should present novel experimental results, theory and modeling of air pollution on local, regional, or global scales. Areas covered are research on inorganic, organic, and persistent organic air pollutants, air quality monitoring, air quality management, atmospheric dispersion and transport, air-surface (soil, water, and vegetation) exchange of pollutants, dry and wet deposition, indoor air quality, exposure assessment, health effects, satellite measurements, natural emissions, atmospheric chemistry, greenhouse gases, and effects on climate change.
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