Modeling retroreflectivity degradation of pavement markings across the US with advanced machine learning algorithms

Ipshit Ibne Idris, Momen Mousa, Marwa Hassan
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Abstract

Retroreflectivity is the primary metric that controls the visibility of pavement markings during nighttime and in adverse weather conditions. Maintaining the minimum level of retroreflectivity as specified by Federal Highway Administration (FHWA) is crucial to ensure safety for motorists. The key objective of this study was to develop robust retroreflectivity prediction models that can be used by transportation agencies to reliably predict the retroreflectivity of their pavement markings utilizing the initially measured retroreflectivity and other key project conditions. A total of 49,632 transverse skip retroreflectivity measurements of seven types of marking materials were retrieved from the eight most recent test decks covered under the National Transportation Product Evaluation Program (NTPEP). Decision Tree (DT) and Artificial Neural Network (ANN) algorithms were considered for developing performance prediction models to estimate retroreflectivity at different prediction horizons for up to three years. The models were trained with randomly selected 80% data points and tested with the remaining 20% data points. Sequential ANN models exhibited better performance with the testing data than the sequential DT models. The training and testing R2 ranges of the sequential ANN models were from 0.76 to 0.96 and 0.55 to 0.94, respectively, which were significantly higher than the R2 range (0.14 to 0.75) from the regression models proposed in past studies. Initial or predicted retroreflectivity, snowfall, and traffic were found to be the most important inputs to model predictions.
利用先进的机器学习算法模拟全美路面标线的逆反射退化情况
逆反射率是控制夜间和恶劣天气条件下路面标识可见度的主要指标。保持联邦公路管理局(FHWA)规定的最低逆反射率水平对于确保驾车者的安全至关重要。本研究的主要目标是开发出强大的逆反射率预测模型,供交通机构使用,以便利用最初测量的逆反射率和其他关键项目条件,可靠地预测其路面标线的逆反射率。我们从国家交通产品评估计划 (NTPEP) 涵盖的八个最新测试平台中检索了七种标线材料的 49,632 次横向跳线逆反射率测量结果。在开发性能预测模型时,考虑了决策树 (DT) 和人工神经网络 (ANN) 算法,以估算不同预测范围内长达三年的逆反射率。这些模型使用随机选择的 80% 的数据点进行训练,并使用剩余的 20% 的数据点进行测试。与顺序 DT 模型相比,顺序 ANN 模型在测试数据方面表现出更好的性能。顺序 ANN 模型的训练和测试 R2 范围分别为 0.76 至 0.96 和 0.55 至 0.94,明显高于过去研究中提出的回归模型的 R2 范围(0.14 至 0.75)。研究发现,初始或预测的逆反射率、降雪量和交通量是模型预测的最重要输入。
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来源期刊
CiteScore
5.70
自引率
0.00%
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0
审稿时长
13 weeks
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