Determining the Optimum Sample Size for Quality Assurance (QA) of Asphalt Mixtures: A Case Study

H. Al-Khayat, Charles F. Gurganus, David E. Newcomb, Maryam S. Sakhaeifar
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Abstract

Acceptance plans for asphalt mixtures use a certain sample size that is often established based on the purpose of sampling, population size, risk, and allowable error for evaluation. The rate of quality control (QC) sample size is often higher than the quality assurance (QA) sample size. The test results obtained from the QA samples are commonly used to validate the QC test results and to assist the state department of transportation (DOT) with payment decisions. However, if the QA sample size is insufficient to make accurate judgments, the probability of making incorrect decisions regarding acceptance increases. On the other hand, oversampling needlessly consumes both time and cost. To identify the appropriate sample size for QA testing, a balance must be struck between a number of variables. In this case study, two models were developed using the Oregon Department of Transportation (ODOT) data to determine the appropriate QA sample size. The need for this work was realized when a review of ODOT paving projects revealed a large variability in lot size. These ranged from 3000 to more than 100 000 tons with commensurate QA sample size rates. The typical standard deviation (STDEV) values of asphalt content (AC) and in-place density were determined. The developed models show that using the STDEV values that represented more than 90 percent of the projects, ODOT needed to increase QA sample size for both AC and density in lots of less than 22 000 tons. The results also show that sample can be decreased for AC and remain as is for density in projects of more than 22 000 tons of asphalt mixtures. The proposed models can be used to determine the optimum sample size for different lots sizes.
确定沥青混合料质量保证(QA)的最佳样本量:一个案例研究
沥青混合料的验收计划使用一定的样本量,通常根据抽样目的、总体规模、风险和允许误差进行评估。质量控制(QC)样本量的比率通常高于质量保证(QA)样本量。从QA样品中获得的测试结果通常用于验证QC测试结果并协助州交通部(DOT)做出付款决定。然而,如果QA样本量不足以做出准确的判断,那么在验收方面做出错误决策的可能性就会增加。另一方面,过采样不必要地消耗时间和成本。为了确定QA测试的适当样本大小,必须在许多变量之间取得平衡。在本案例研究中,使用俄勒冈州运输部(ODOT)的数据开发了两个模型,以确定适当的QA样本量。当对ODOT铺路项目的审查显示出地块大小的巨大变化时,就意识到这项工作的必要性。这些范围从3000吨到超过10万吨,具有相应的QA样品尺寸率。确定了沥青含量(AC)和就地密度的典型标准差(STDEV)值。开发的模型表明,使用代表90%以上项目的STDEV值,ODOT需要在小于22,000吨的批次中增加AC和密度的QA样本量。结果还表明,在超过22000吨的沥青混合料项目中,AC的样品可以减少,密度保持不变。所提出的模型可用于确定不同批量的最佳样本量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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