Advancing Concrete Strength Prediction using Non-destructive Testing: Development and Verification of a Generalizable Model

    Research output: Contribution to journalArticlepeer-review

    Abstract

    <p> <p id="x-x-x-x-sp0010"> Accurate prediction of concrete compressive strength is imperative for investigating the in-situ concrete quality. To avoid destructive testing, developing reliable predictive models for concrete compressive strength using nondestructive tests (NDTs) is an active area of research. However, many of the developed models are dependent on calibration and/or concrete past history (e.g. mixture proportion, curing history, concrete mechanical properties, etc.), which reduces their utility for in-situ predictions. <p id="x-x-x-x-sp0015"> This paper develops predictive models for concrete compressive strength that are independent of concrete past history. To this end, ultrasonic pulse velocity (UPV) and rebound hammer (RH) tests were performed on 84 concrete cylindrical samples. Next, compressive strengths were determined using destructive testing on these cylinders, and predictive models were developed using NDT results. Furthermore, to ensure generalizability to new data, all models were tested on independent data collected from six different research papers. The results support combined usage of UPV and RH in a quadratic polynomial model structure. Therefore, the final model was proposed based on combining models from a threefold cross-validation of the experimental data. This model predicted the independent data with very good accuracy. Finally, a concrete quality classification table using combined RH and UPV is proposed based on a variant of machine learning k-means clustering algorithm. </p> </p></p>
    Original languageAmerican English
    JournalConstruction and Building Materials
    Volume102
    DOIs
    StatePublished - Jan 15 2016

    Keywords

    • Concrete compressive strength; Ultrasonic pulse velocity; Rebound hammer; Predictive modeling; Concrete classification; Machine learning algorithms

    Disciplines

    • Civil and Environmental Engineering
    • Construction Engineering and Management

    Cite this