Spatial Autocorrelation in Soil Compaction and Its Impact on Earthwork Acceptance Testing

Author:

Cai Jiannan1,Gao Qingyi2,Chun Hyonho3,Cai Hubo1,Nantung Tommy4

Affiliation:

1. Lyles School of Civil Engineering, Purdue University, West Lafayette, IN

2. Department of Statistics, Purdue University, West Lafayette, IN

3. Department of Mathematics and Statistics, Boston University, Boston, MA

4. Division of Research and Development, Indiana Department of Transportation, West Lafayette, IN

Abstract

The compaction quality of soil embankments is critical to the long-term performance of the pavements placed on them. In current quality assurance (QA) practice, state highway agencies (SHAs) rely on in-situ testing at a small number of point locations to decide whether to accept or reject the product, assuming that the samples taken at random locations are independent of each other. This assumption, however, is invalid because soil properties are spatially autocorrelated – the properties at nearby locations are correlated to each other. Consequently, if the sampling locations are close to each other, the effective number of samples is reduced, which in turn increases the risk of incorrect accept/reject decisions. This study addressed this spatial autocorrelation issue in soil acceptance testing. Soil data from the U.S Highway 31 project, collected by intelligent compaction (IC) in the format of compaction meter value (CMV), were used to prove the existence of spatial autocorrelation using the semivariogram and Moran’s I analysis. The impact of spatial autocorrelation on soil acceptance testing was assessed by comparing the testing power under two scenarios (with and without spatial autocorrelation). The results suggest that the existence of spatial autocorrelation decreases the testing power, resulting in a greater risk to the SHA. Based on these findings, this study proposed two spatial indices to mitigate the negative impact of spatial autocorrelation by controlling the spatial pattern of random samples. A web tool was also developed as an implementation to augment the random sampling process in field QA practice by incorporating the spatial pattern of samples.

Publisher

SAGE Publications

Subject

Mechanical Engineering,Civil and Structural Engineering

Reference12 articles.

1. Adaptive quality control and acceptance of pavement material density for intelligent road construction

2. Chang G., Xu Q., Rutledge J., Horan B., Michael L., White D., Vennapusa P. Accelerated Implementation of Intelligent Compaction Technology for Embankment Subgrade Soils, Aggregate Base, and Asphalt Pavement Materials. Report No. FHWA-IF-12-002. Federal Highway Administration, Washington D.C., 2011.

3. Correlating Intelligent Compaction Data to In Situ Soil Compaction Quality Measurements

4. Geostatistical Analysis for Spatially Referenced Roller-Integrated Compaction Measurements

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