台湾环境臭氧开放数据分析方法综述

IF 6.4 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES Current Pollution Reports Pub Date : 2024-06-18 DOI:10.1007/s40726-024-00314-w
Duy-Hieu Nguyen, Chih-Hsiang Liao, Xuan-Thanh Bui, Chung-Shin Yuan, Chitsan Lin
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引用次数: 0

摘要

综述目的台湾的空气质量受到环境臭氧(O3)污染的严重影响,由于其光化学过程涉及前体物和影响因素,因此在控制方面面临挑战。本综述调查了台湾在过去二十年中为解决这一问题而实施的措施,并评估了这些措施在降低臭氧浓度方面的效果。此外,本综述还重点介绍了采用先进方法研究臭氧问题的相关研究。然而,由于这些因素之间相互关联,准确量化其影响具有挑战性。为了弥补这一知识空白,必须进行可靠的因果关系分析,以准确量化主要因素的因果影响。此外,消除季节性变化可以提高有关臭氧浓度长期变化趋势分析的精度和准确性。总之,由于地理位置的原因,台湾很容易受到本地污染源和远处上风向地区空气污染的影响,因此要达到可接受的臭氧浓度水平极具挑战性。要全面研究 O3 的演变过程并制定有效的减缓措施,必须采用先进的方法。虽然有必要开发新的分析方法,但采用现有的可靠方法也能为了解臭氧的动态和影响提供有价值的见解。通过利用这些方法,我们可以加深对台湾臭氧污染的理解,并制定有效的策略来减轻其对空气质量的有害影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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A Review on Analytical Approaches for Ambient Ozone Open Data in Taiwan

Purpose of Review

The air quality in Taiwan is significantly impacted by ambient ozone (O3) pollution, which poses a challenge in terms of control due to the involvement of precursors and influencing factors in its photochemical process. This review investigates the measures that have been implemented in Taiwan over the past two decades to address this issue and evaluate their effectiveness in reducing O3 concentrations. Furthermore, it highlights relevant studies that have employed advanced methods to examine the O3 problem.

Recent Findings

Comprehending the complex formation of O3 and its driving factors is crucial in efficiently managing O3 pollution. Nevertheless, accurately quantifying the impacts of these factors can be challenging due to their interconnections. To bridge this gap in knowledge, conducting a robust causality analysis becomes imperative to accurately quantify the causal influence of major factors. Furthermore, eliminating seasonal variations can improve the precision and accuracy of trend analyses concerning long-term changes in O3 concentrations. Deep learning, in particular, holds significant advantages in predicting O3 concentrations as it can capture non-linear and long-term memory characteristics effectively.

Summary

In summary, attaining acceptable O3 levels in Taiwan is challenging due to its geographical location, which makes it susceptible to air pollution from both local sources as well as distant upwind areas. The utilization of advanced methods is essential for comprehensively studying the evolution of O3 and formulating effective mitigation measures. While there is a necessity to develop new analytical methods, implementing existing robust methodologies can also provide valuable insights into the dynamics and impacts of O3. By leveraging these approaches, we can enhance our comprehension of O3 pollution in Taiwan and develop effective strategies to mitigate its harmful effects on air quality.

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来源期刊
Current Pollution Reports
Current Pollution Reports Environmental Science-Water Science and Technology
CiteScore
12.10
自引率
1.40%
发文量
31
期刊介绍: Current Pollution Reports provides in-depth review articles contributed by international experts on the most significant developments in the field of environmental pollution.By presenting clear, insightful, balanced reviews that emphasize recently published papers of major importance, the journal elucidates current and emerging approaches to identification, characterization, treatment, management of pollutants and much more.
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