交通噪声建模和预测中分析模型与机器学习模型的比较

IF 1 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION MAPAN Pub Date : 2023-12-14 DOI:10.1007/s12647-023-00692-4
Bhagwat Singh Chauhan, Naveen Garg, Saurabh Kumar, Chitra Gautam, Gaurav Purohit
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引用次数: 0

摘要

本文阐述了分析模型和机器学习方法的应用,以预测道路交通噪声产生的等效连续声压级(LAeq)和 10 百分位数超标声压级(L10),其依据是在德里-新德里-克罗里地区 200 多个地点进行的严格噪声监测。利用测量数据,开发、验证和测试了回归、反向传播神经网络和机器学习模型。研究结果表明,所开发的模型适用于可靠、准确地预测每小时交通噪声水平。比较研究表明,基于机器学习的模型优于经典分析模型。在开发预测每小时等效连续声压级(LAeq1h)和 10 百分位数超标声压级(L10)的模型时,使用了多元线性回归模型和三种机器学习技术,即决策树、随机森林和神经网络。经证实,所开发的预测模型的准确度可达 ± 3 dB(A)。研究中提出的预测模型可作为德里-NCR 地区规划降噪措施和交通噪声预测的工具。这项研究是首次对德里-NCR 地区的大量区域和地带进行道路交通噪声评估和预测的严谨研究,也是按照 ISO 1996-2:2017 标准估算每小时噪声测量不确定性的示例。
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Comparison of Analytical and Machine Learning Models in Traffic Noise Modeling and Predictions

This paper illustrates the applications of analytical models and machine learning methods to predict the equivalent continuous sound pressure levels (LAeq) along with 10-percentile exceeded sound levels (L10) generated due to road traffic noise based on rigorous noise monitoring conducted at more than 200 locations in Delhi-NCR. Using the measured data, regression, back-propagation neural network, and machine learning models were developed, validated, and tested. The work represents that the developed models are suitable for reliable and accurate predictions of hourly traffic noise levels. A comparative study reports that the machine learning-based model outperforms the classical analytical models. Multiple linear regression models and three machine learning techniques, namely decision trees, random forests, and neural networks, were utilized for developing models that predict the hourly equivalent continuous sound pressure level (LAeq1h) and 10-percentile exceeded sound pressure level (L10). The developed predicted models have been ascertained to show an accuracy up to ± 3 dB(A). The proposed prediction models in the study can serve as a tool for planning noise abatement measures and traffic noise forecasts for the Delhi-NCR region. This study is the first rigorous study of its kind that covers a larger number of areas and zones in Delhi-NCR for assessment and predictions of road traffic noise and also shows an illustrative example of estimating measurement uncertainty in hourly noise measurements as per ISO 1996-2:2017.

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来源期刊
MAPAN
MAPAN 工程技术-物理:应用
CiteScore
2.30
自引率
20.00%
发文量
91
审稿时长
3 months
期刊介绍: MAPAN-Journal Metrology Society of India is a quarterly publication. It is exclusively devoted to Metrology (Scientific, Industrial or Legal). It has been fulfilling an important need of Metrologists and particularly of quality practitioners by publishing exclusive articles on scientific, industrial and legal metrology. The journal publishes research communication or technical articles of current interest in measurement science; original work, tutorial or survey papers in any metrology related area; reviews and analytical studies in metrology; case studies on reliability, uncertainty in measurements; and reports and results of intercomparison and proficiency testing.
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