Stray current inversion method based on sparrow search algorithm with kernel extreme learning machine
摘要
With the continuous advancement of engineering construction, stray current has become a typical factor causing pipeline corrosion. Therefore, it is particularly important to strengthen the research on stray current detection to enhance the technical capability of pipeline corrosion prevention. In this paper, a stray current inversion method based on Sparrow Search Algorithm with Kernel Extreme Learning Machine (SSA-KELM) is proposed, and realize the quantitative analysis of stray currents and defects in complex situations. Specifically speaking, after defining and extracting the features of the electrical signal, the KELM model is parameter optimized using the SSA algorithm. The results of single- and double-output inversion of the same test samples by SSA-KELM model, the basic ELM model and KELM model are compared to verify the superiority of SSA-KELM model in the inversion of stray currents and defects, and to realize the quantitative analysis of stray currents and defects in complex situations. The experimental results demonstrate that the