Iowa Experience on Local Calibration of AASHTOWare Pavement ME Design (PMED) for Jointed Plain Concrete Pavements

O. Kaya, Leela Sai Praveen Gopisetti, H. Ceylan, Sunghwan Kim, B. Cetin
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Abstract

The AASHTO Mechanistic-Empirical Pavement Design Guide (MEPDG) pavement performance models and the associated AASHTOWare pavement ME design (PMED) software are nationally calibrated using design inputs and distress data largely obtained from National Long-Term Pavement Performance (LTPP) to predict Jointed Plain Concrete Pavement (JPCP) performance measures. To improve the accuracy of nationally-calibrated JPCP performance models for various local conditions, further calibration and validation studies in accordance with the local conditions are highly recommended, and multiple updates have been made to the PMED since its initial release in 2011, with the latest version (i.e., Ver. 2.5.X) becoming available in 2019. Validation of JPCP performance models after such software updates is necessary as part of PMED implementation, and such local calibration and validation activities have been identified as the most difficult or challenging parts of PMED implementation. As one of the states at the forefront of implementing the MEPDG and PMED, Iowa has conducted local calibration of JPCP performance models extending from MEPDG to updated versions of PMED. The required MEPDG and PMED inputs and the historical performance data for the selected JPCP sections were extracted from a variety of sources and the accuracy of the nationally-calibrated MEPDG and PMED performance prediction models for Iowa conditions was evaluated. To improve the accuracy of model predictions, local calibration factors of MEPDG and PMED performance prediction models were identified and gained local calibration experiences of MEPDG and PMED in Iowa are presented and discussed here to provide insight of local calibration for other State Highway Agencies (SHAs).
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节理素混凝土路面AASHTOWare路面ME设计(PMED)局部标定的爱荷华经验
AASHTO机械经验路面设计指南(MEPDG)路面性能模型和相关的AASHTOWare路面ME设计(PMED)软件使用设计输入和主要来自国家长期路面性能(LTPP)的损坏数据进行全国校准,以预测接缝素混凝土路面(JPCP)的性能指标。为了提高国家校准的JPCP性能模型在不同地方条件下的准确性,强烈建议根据当地条件进行进一步的校准和验证研究,自2011年首次发布以来,PMED已经进行了多次更新,最新版本(即2.5.X版本)将于2019年推出。作为PMED实施的一部分,在此类软件更新之后对JPCP性能模型进行验证是必要的,而此类本地校准和验证活动已被确定为PMED实施中最困难或最具挑战性的部分。作为率先实施MEPDG和PMED的州之一,爱荷华州开展了从MEPDG到PMED更新版本的JPCP绩效模型的本地校准。从各种来源提取了所需的MEPDG和PMED输入以及选定JPCP剖面的历史性能数据,并评估了国家校准的MEPDG和PMED性能预测模型在爱荷华州条件下的准确性。为提高模型预测的准确性,确定了MEPDG和PMED性能预测模型的局部校正因子,并介绍和讨论了爱荷华州MEPDG和PMED的局部校正经验,为其他州公路局(SHAs)的局部校正提供参考。
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