Li Qing, Qiao Fengxiang, Yu Lei, Shi Junqing
a Innovative Transportation Research Institute , Texas Southern University , Houston , TX , USA.
b Xuchang University, College of Transportation , Xuchang City , Henan Province , People's Republic of China.
J Air Waste Manag Assoc. 2018 Jun;68(6):576-587. doi: 10.1080/10962247.2017.1350213. Epub 2018 Apr 19.
Vehicle interior noise functions at the dominant frequencies of 500 Hz below and around 800 Hz, which fall into the bands that may impair hearing. Recent studies demonstrated that freeway commuters are chronically exposed to vehicle interior noise, bearing the risk of hearing impairment. The interior noise evaluation process is mostly conducted in a laboratory environment. The test results and the developed noise models may underestimate or ignore the noise effects from dynamic traffic and road conditions and configuration. However, the interior noise is highly associated with vehicle maneuvering. The vehicle maneuvering on a freeway weaving segment is more complex because of its nature of conflicting areas. This research is intended to explore the risk of the interior noise exposure on freeway weaving segments for freeway commuters and to improve the interior noise estimation by constructing a decision tree learning-based noise exposure dose (NED) model, considering weaving segment designs and engine operation. On-road driving tests were conducted on 12 subjects on State Highway 288 in Houston, Texas. On-board Diagnosis (OBD) II, a smartphone-based roughness app, and a digital sound meter were used to collect vehicle maneuvering and engine information, International Roughness Index, and interior noise levels, respectively. Eleven variables were obtainable from the driving tests, including the length and type of a weaving segment, serving as predictors. The importance of the predictors was estimated by their out-of-bag-permuted predictor delta errors. The hazardous exposure level of the interior noise on weaving segments was quantified to hazard quotient, NED, and daily noise exposure level, respectively. Results showed that the risk of hearing impairment on freeway is acceptable; the interior noise level is the most sensitive to the pavement roughness and is subject to freeway configuration and traffic conditions. The constructed NED model shows high predictive power (R = 0.93, normalized root-mean-square error [NRMSE] < 6.7%).
Vehicle interior noise is usually ignored in the public, and its modeling and evaluation are generally conducted in a laboratory environment, regardless of the interior noise effects from dynamic traffic, road conditions, and road configuration. This study quantified the interior exposure dose on freeway weaving segments, which provides freeway commuters with a sense of interior noise exposure risk. In addition, a bagged decision tree-based interior noise exposure dose model was constructed, considering vehicle maneuvering, vehicle engine operational information, pavement roughness, and weaving segment configuration. The constructed model could significantly improve the interior noise estimation for road engineers and vehicle manufactures.
车辆内部噪声在500赫兹及以下和800赫兹左右的主导频率下发挥作用,这些频率属于可能损害听力的频段。最近的研究表明,高速公路通勤者长期暴露于车辆内部噪声中,存在听力受损的风险。内部噪声评估过程大多在实验室环境中进行。测试结果和所开发的噪声模型可能会低估或忽略动态交通、道路状况和布局产生的噪声影响。然而,内部噪声与车辆操控密切相关。由于其冲突区域的性质,车辆在高速公路交织段上的操控更为复杂。本研究旨在探讨高速公路通勤者在高速公路交织段面临的内部噪声暴露风险,并通过构建基于决策树学习的噪声暴露剂量(NED)模型来改进内部噪声估计,该模型考虑了交织段设计和发动机运行情况。在德克萨斯州休斯顿的288号州际公路上对12名受试者进行了道路驾驶测试。分别使用车载诊断(OBD)II、一款基于智能手机的平整度应用程序和一个数字声级计来收集车辆操控和发动机信息、国际平整度指数以及内部噪声水平。从驾驶测试中可获得11个变量,包括交织段的长度和类型,作为预测因子。通过袋外排列预测因子增量误差来估计预测因子的重要性。分别将交织段上内部噪声的危险暴露水平量化为危险商、NED和每日噪声暴露水平。结果表明,高速公路上听力受损的风险是可接受的;内部噪声水平对路面平整度最为敏感,并且受高速公路布局和交通状况的影响。所构建的NED模型显示出较高的预测能力(R = 0.93,归一化均方根误差[NRMSE] < 6.7%)。
车辆内部噪声在公众中通常被忽视,其建模和评估一般在实验室环境中进行,而未考虑动态交通、道路状况和道路布局产生的内部噪声影响。本研究量化了高速公路交织段的内部暴露剂量,为高速公路通勤者提供了内部噪声暴露风险意识。此外,构建了一个基于袋装决策树的内部噪声暴露剂量模型,该模型考虑了车辆操控、车辆发动机运行信息、路面平整度和交织段布局。所构建的模型可为道路工程师和车辆制造商显著改进内部噪声估计。