一种基于条件扩散模型的生成臭氧浓度估算与预报方法

IF 11.3 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL
Liangliang Mu , Suhuan Bi , Kai Yan , Xiangqian Ding , Yan Xu
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引用次数: 0

摘要

地面臭氧已成为中国的主要污染物,在中国,保持数据完整性和预测准确性对于有效的环境治理和政策制定至关重要。然而,臭氧时间序列数据不可避免的缺失影响了数据集的完整性,从而对下游预测和高级分析构成了重大障碍。本文提出了一种生成式估算和预测方法SSSD-Transformer,该方法将经验知识作为条件信息注入,结合结构化状态空间扩散(SSSD)和Transformer,捕捉臭氧污染的时间趋势和详细模式,用于生成清洁臭氧序列。在三种不同缺失情况下的实验和案例研究清楚地表明,SSSD-Transformer生成的估算更准确、更稳健,具有更高的可靠性。在预测任务中,模型也表现出较强的预测能力,随着预测范围的增加,模型的预测性能保持相对稳定。利用有效的经验知识和加权组合,该方法在臭氧浓度估算和预测中取得了较好的效果。同时取得的成果为确保数据完整性和提高预测可信度提供了新的视角,并将为有效控制大气污染做出重大贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A generative ozone concentration imputation and forecasting method based on a novel conditional diffusion model

A generative ozone concentration imputation and forecasting method based on a novel conditional diffusion model
Ground-level ozone has emerged as a major pollutant in China, where maintaining data integrity and prediction accuracy is crucial for effective environmental governance and policymaking. Nevertheless, the inevitable missingness in ozone time series data compromises dataset completeness, thereby posing a significant obstacle to downstream prediction and advanced analysis. In this paper, we propose a generative imputation and forecasting method, SSSD-Transformer, that injects empirical knowledge as conditional information and combines structured state space diffusion (SSSD) and Transformer to capture the temporal trends and detailed patterns exhibited by ozone pollution for generating the clean ozone sequences. The experiments and case studies on three different missingness scenarios clearly demonstrate that SSSD-Transformer generates more accurate and robust imputations, exhibiting greater reliability. In forecasting task, the model also demonstrated strong capabilities, with performance remaining relatively stable as the prediction horizon increased. Empowered by the potent empirical knowledge and weighted combination, the presented method successfully achieves excellent performance in ozone concentration imputation and forecasting. The simultaneous achievements provide a new perspective for ensuring data integrity and enhancing prediction credibility, and will make significant contributions to effective air pollution control.
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来源期刊
Journal of Hazardous Materials
Journal of Hazardous Materials 工程技术-工程:环境
CiteScore
25.40
自引率
5.90%
发文量
3059
审稿时长
58 days
期刊介绍: The Journal of Hazardous Materials serves as a global platform for promoting cutting-edge research in the field of Environmental Science and Engineering. Our publication features a wide range of articles, including full-length research papers, review articles, and perspectives, with the aim of enhancing our understanding of the dangers and risks associated with various materials concerning public health and the environment. It is important to note that the term "environmental contaminants" refers specifically to substances that pose hazardous effects through contamination, while excluding those that do not have such impacts on the environment or human health. Moreover, we emphasize the distinction between wastes and hazardous materials in order to provide further clarity on the scope of the journal. We have a keen interest in exploring specific compounds and microbial agents that have adverse effects on the environment.
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