工业热岛和碳排放:基于机器学习的印尼奇勒贡环境影响评估

Q2 Environmental Science
Agus Suprijanto , Yumin Tan , Muhammad Kamran Lodhi , Rodolfo Domingo Moreno Santillan , Isiaka Lukman Alage , Gonzalo Rodolfo Pena Zamalloa
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引用次数: 0

摘要

工业化已成为一个重大的环境挑战。它加剧了城市热岛效应,使植被退化,并增加了碳排放,特别是在快速发展的地区。然而,量化和减轻这些影响仍然是一项重大挑战,特别是在遥感数据经常受到损害的多云地区。本研究采用了一种先进的基于机器学习的方法来评估印度尼西亚Cilegon工业活动对环境的影响。对2014 - 2022年多源遥感数据进行了分析。整合Landsat-8的地表温度(LST)和植被健康(NDVI)、GPM的降水和ODIAC的碳排放。混合滤波方法通过减少云引起的噪声来提高数据质量。利用XGBoost模型重建地表温度,实现工业热岛(IHI)动态的时空评估。结果显示,碳排放量惊人地增加,由于燃煤电厂,2工业区的碳排放量是1工业区的107倍。工业热岛效应延伸至1500 m,而碳排放对1000 m以内区域影响显著,加剧了环境压力。NDVI分析显示,2014 - 2019年工业2区健康植被下降81.36%,工业化对生态影响严重。La Niña-induced降水对植被恢复有一定的促进作用,但不能抵消工业退化的影响。NDVI与地表温度呈负相关(-0.928),NDVI与碳排放呈负相关(-0.739),表明植被在缓解环境破坏中的重要作用。本研究提出了一个数据驱动的框架,利用机器学习和增强的卫星处理来评估工业环境影响。研究结果强调,迫切需要更严格的排放控制、城市绿化和可持续的工业规划来缓解环境退化。鉴于全球工业排放和城市热应力的上升,类似的缓解战略对于增强气候适应能力和生态系统的可持续性至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Industrial heat island and carbon emissions: machine learning-based environmental impact assessment in Cilegon, Indonesia
Industrialization has become a major environmental challenge. It intensifies urban heat island effects, degrades vegetation, and increases carbon emissions, particularly in rapidly developing regions. However, quantifying and mitigating these impacts remains a significant challenge, especially in cloud-prone areas where remote sensing data is often compromised. This study employs an advanced machine learning-based approach to assess the environmental impacts of industrial activities in Cilegon, Indonesia. Multi-source remote sensing datasets from 2014 to 2022 were analyzed. Integrating Landsat-8 for Land Surface Temperature (LST) and vegetation health (NDVI), GPM for precipitation, and ODIAC for carbon emissions. A hybrid filter approach enhanced data quality by reducing cloud-induced noise. An XGBoost model was developed to reconstruct LST, enabling a spatiotemporal assessment of industrial heat island (IHI) dynamics. The results reveal a staggering increase in carbon emissions, with Industrial Area 2 emitting 107 times more carbon than Industrial Area 1 due to coal-fired power plants. The industrial heat island effect extends to 1500 m, while carbon emissions significantly influence areas within 1000 m, exacerbating environmental stress. NDVI analysis indicates an 81.36 % decline in healthy vegetation in Industrial Area 2 between 2014 and 2019, emphasizing the severe ecological impact of industrialization. Seasonal trends show that La Niña-induced precipitation partially aids vegetation recovery, but its effects cannot counterbalance industrial degradation. Strong negative correlations were observed between NDVI and LST (-0.928) and NDVI and carbon emissions (-0.739), reinforcing the crucial role of vegetation in mitigating environmental damage. This study presents a data-driven framework to assess industrial environmental impacts using machine learning and enhanced satellite processing. The findings emphasize the urgent need for stricter emissions control, urban greening, and sustainable industrial planning to mitigate environmental degradation. Given the global rise in industrial emissions and urban heat stress, similar mitigation strategies are essential to enhance climate resilience and ecosystem sustainability.
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来源期刊
Environmental Challenges
Environmental Challenges Environmental Science-Environmental Engineering
CiteScore
8.00
自引率
0.00%
发文量
249
审稿时长
8 weeks
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