Liangliang Mu , Suhuan Bi , Kai Yan , Xiangqian Ding , Yan Xu
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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.
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.