4.6 Article

Quantitative Study on Corrosion of Steel Strands Based on Self-Magnetic Flux Leakage

Journal

SENSORS
Volume 18, Issue 5, Pages -

Publisher

MDPI
DOI: 10.3390/s18051396

Keywords

corrosion; steel strand; self-magnetic flux leakage; magnetic dipole model; logistic growth model

Funding

  1. National Key Research and Development Program of China [2017YFC0806007]
  2. National Science Fund for Distinguished Young Scholars grant [51425801]
  3. Major Topic Special Key Research and Development Project of the Artificial Intelligence Technology Innovation in Chongqing [cstc2017rgzn-zdyfX0029]
  4. Science and Technology Planning Project of Yunnan Province of China [2017IB025]
  5. Science and Technology Project of Guizhou Provincial Transportation Department [2016-123-006]
  6. Science and Technology Planning Project of Nanjing of China [201727002]

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This paper proposed a new computing method to quantitatively and non-destructively determine the corrosion of steel strands by analyzing the self-magnetic flux leakage (SMFL) signals from them. The magnetic dipole model and three growth models (Logistic model, Exponential model, and Linear model) were proposed to theoretically analyze the characteristic value of SMFL. Then, the experimental study on the corrosion detection by the magnetic sensor was carried out. The setup of the magnetic scanning device and signal collection method were also introduced. The results show that the Logistic Growth model is verified as the optimal model for calculating the magnetic field with good fitting effects. Combined with the experimental data analysis, the amplitudes of the calculated values (B-xL(x,z) curves) agree with the measured values in general. This method provides significant application prospects for the evaluation of the corrosion and the residual bearing capacity of steel strand.

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