| Literature DB >> 29068431 |
De-Mi Cui1, Weizhong Yan2, Xiao-Quan Wang3, Lie-Min Lu4.
Abstract
Low strain pile integrity testing (LSPIT), due to its simplicity and low cost, is one of the most popular NDE methods used in pile foundation construction. While performing LSPIT in the field is generally quite simple and quick, determining the integrity of the test piles by analyzing and interpreting the test signals (reflectograms) is still a manual process performed by experienced experts only. For foundation construction sites where the number of piles to be tested is large, it may take days before the expert can complete interpreting all of the piles and delivering the integrity assessment report. Techniques that can automate test signal interpretation, thus shortening the LSPIT's turnaround time, are of great business value and are in great need. Motivated by this need, in this paper, we develop a computer-aided reflectogram interpretation (CARI) methodology that can interpret a large number of LSPIT signals quickly and consistently. The methodology, built on advanced signal processing and machine learning technologies, can be used to assist the experts in performing both qualitative and quantitative interpretation of LSPIT signals. Specifically, the methodology can ease experts' interpretation burden by screening all test piles quickly and identifying a small number of suspected piles for experts to perform manual, in-depth interpretation. We demonstrate the methodology's effectiveness using the LSPIT signals collected from a number of real-world pile construction sites. The proposed methodology can potentially enhance LSPIT and make it even more efficient and effective in quality control of deep foundation construction.Entities:
Keywords: deep foundation; defect detection; extreme learning machine; neural network; non-destructive evaluation; pile integrity testing; wavelet decomposition
Year: 2017 PMID: 29068431 PMCID: PMC5713026 DOI: 10.3390/s17112443
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Schematic view of low strain pile integrity testing.
Figure 2Overall structure of the proposed CARI methodology.
Figure 3An illustration of 3-level wavelet decomposition.
Figure 4The seventh “symlet” wavelet function.
Figure 5An illustration of 4-level wavelet decomposition of a reflectogram: s = original signal; d1 ~ d4 are the first through fourth details and a4 is the fourth approximation
Pile and construction site summary.
| No | Site Name | # of Piles | # of Defect Piles | Pile Length (m) | Pile Type |
|---|---|---|---|---|---|
| Jing-Ao Bldg.#7 | 21 | 0 | 11 | I | |
| Jing-Ao Bldg.#9 | 19 | 0 | 14 | I | |
| Jing-Ao Bldg.#10 | 20 | 0 | 12 | II | |
| Jing-Ao Bldg.#26 | 15 | 0 | 11 | II | |
| Jing-Ao Bldg.#28 | 20 | 0 | 12 | II | |
| Jing-Ao Bldg.#29 | 38 | 0 | 13 | II | |
| Jing-Ao Bldg.#30 | 19 | 0 | 13 | II | |
| Jing-Ao Bldg.#31 | 20 | 0 | 13 | II | |
| Jing-Ao Bldg.#32 | 37 | 0 | 14 | II | |
| Jing-Ao Bldg.#35 | 36 | 0 | 12 | II | |
| Jing-Ao Bldg.#36 | 36 | 0 | 12 | II | |
| Jing-Ao Bldg.#37 | 20 | 0 | 13 | II | |
| Jing-Ao Bldg.#38 | 35 | 0 | 12 | II | |
| Ye-Ji 35kvRoad | 66 | 8 | 6.8–10.5 | III | |
| Fong-Fang RailroadBldg #4 | 46 | 3 | 11, 12, 14 | III | |
| Fong-Fang RailroadBldg #5 | 47 | 2 | 11, 12, 14 | III | |
| Fong-Fang RailroadBldg #7 | 50 | 6 | 11, 12, 14 | III | |
| Fong-Fang Railroad Pump Station | 34 | 3 | 16, 18 | III | |
| Shang-Shui-Guang | 37 | 6 | 10.5 | III | |
| Yi-Shi-Jia Bldg # 3 | 27 | 4 | 16, 17 | II | |
| Yi-Shi-Jia Package Bldg | 33 | 3 | 15, 16 | II | |
| Yi-Shi-Jia Bldg # 2 | 56 | 3 | 17 | II | |
| Ying-Chao-Yang | 6 | 6 | 9.8–18.8 | II | |
| Yi-Shi-Jia Bldg # 1 | 65 | 3 | 16, 17 | III | |
| Lu-An FongHuanBldg # 5 | 87 | 7 | 5–9.47 | IV | |
| Long-Hua 35KV Engr. Site | 19 | 8 | 7.5–13.5 | IV | |
| Bing-He Shuandung Power Station | 14 | 1 | 9–12 | IV | |
| Total | 923 | 63 | N/A | N/A |
Figure 6Our LSPIT equipment.
Figure 7Receiver Operating Characteristic (ROC) curves for extreme learning machines (ELM) and feed-forward neural network (FFNN) models.
Areas-under-curve (AUCs).
| AUCs | |
|---|---|
| 0.9841 ± 0.0022 | |
| 0.9780 ± 0.0112 |
Confusion matrix averaged over the 10 random runs.
| Predicted | |||
|---|---|---|---|
| Normal | Defective | ||
| 94.45% | 5.55% | ||
| 0.00% | 100.00% | ||
Model performance summary based on the pile type-wise cross validation.
| Pile Type | # of Piles | # of Defect Piles | TPR (%) | FPR (%) |
|---|---|---|---|---|
| I | 40 | 0 | - | 0.20 |
| II | 418 | 16 | 93.75 | 4.78 |
| III | 345 | 31 | 96.77 | 5.51 |
| IV | 120 | 16 | 87.50 | 5.83 |
| Total | 923 | 63 |