Integration of cost-effective datasets to improve predictability of strategic noise mapping in transport corridors in Delhi city, India.

IF 5.8 3区 环境科学与生态学 0 ENVIRONMENTAL SCIENCES
Saurabh Kumar, Naveen Garg, Md Saniul Alam, Shanay Rab
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引用次数: 0

Abstract

Assessing exposure to environmental noise levels at transport corridors remains complex in conditions where no standardized noise prediction model is available. In planning and policy implementation for noise control, noise mapping is an important step. In the present study, land use regression model has been developed to predict the environmental noise levels in Delhi city, India, using previously developed approaches along with machine learning techniques, however improved using new datasets. Lday, Lnight, LAeq,24h, and Ldn were modeled at daily resolution by utilizing an annual noise levels dataset from 31 locations in Delhi city. The noise-monitored data was integrated with travel time data, nighttime light data along with common parameters including land use, road networks, and meteorological parameters. The developed LUR models showed good fit with R2 of 0.72 for Lday, 0.55 for Lnight, 0.71 for LAeq,24h, and 0.61 for Ldn, which was further improved up to 0.88 for Lday, 0.79 for Lnight, 0.86 for LAeq,24h, and 0.81 for Ldn by integrating machine learning approaches. The developed models were validated through tenfold cross validation and by comparison to a separate noise level dataset. The average travel time variable was observed to be the most influential predictor of LUR models for Lday and LAeq,24h, which signifies the crucial impact of road traffic congestion on environmental noise levels. The study also analyzed the parametric sensitivity of various infrastructural factors reported in the study, which shall be helpful for planning for smart cities.

整合具有成本效益的数据集,提高印度德里市交通走廊战略噪声绘图的可预测性。
在没有标准化噪声预测模型的情况下,评估交通走廊的环境噪声水平仍然很复杂。在噪声控制的规划和政策实施中,噪声绘图是一个重要步骤。在本研究中,利用以前开发的方法和机器学习技术,开发了土地利用回归模型,用于预测印度德里市的环境噪声水平。利用德里市 31 个地点的年度噪声级数据集,以日分辨率对 Lday、Lnight、LAeq、24h 和 Ldn 进行建模。噪声监测数据与旅行时间数据、夜间光线数据以及土地利用、道路网络和气象参数等常用参数进行了整合。所开发的 LUR 模型显示出良好的拟合度,其 R2 分别为:Lday 0.72、Lnight 0.55、LAeq,24h 0.71 和 Ldn 0.61,通过整合机器学习方法,其 R2 分别进一步提高到:Lday 0.88、Lnight 0.79、LAeq,24h 0.86 和 Ldn 0.81。通过十倍交叉验证以及与单独的噪声级数据集进行比较,对所开发的模型进行了验证。平均旅行时间变量被认为是 LUR 模型中对 Lday 和 LAeq,24h 最有影响力的预测因子,这表明道路交通拥堵对环境噪声水平有着至关重要的影响。研究还分析了研究中报告的各种基础设施因素的参数敏感性,这将有助于智慧城市的规划。
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来源期刊
CiteScore
8.70
自引率
17.20%
发文量
6549
审稿时长
3.8 months
期刊介绍: Environmental Science and Pollution Research (ESPR) serves the international community in all areas of Environmental Science and related subjects with emphasis on chemical compounds. This includes: - Terrestrial Biology and Ecology - Aquatic Biology and Ecology - Atmospheric Chemistry - Environmental Microbiology/Biobased Energy Sources - Phytoremediation and Ecosystem Restoration - Environmental Analyses and Monitoring - Assessment of Risks and Interactions of Pollutants in the Environment - Conservation Biology and Sustainable Agriculture - Impact of Chemicals/Pollutants on Human and Animal Health It reports from a broad interdisciplinary outlook.
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