LING Xiao,XU Lu-shuai,GAO Jia-cheng,MA Juan-juan,MA He-qing,FU Xiao-hua.Prediction of External Corrosion Rate of Oil Pipeline Based on Improved IFA-BPNN[J],50(4):285-293
Prediction of External Corrosion Rate of Oil Pipeline Based on Improved IFA-BPNN
Received:July 30, 2020  Revised:November 27, 2020
View Full Text  View/Add Comment  Download reader
DOI:10.16490/j.cnki.issn.1001-3660.2021.04.029
KeyWord:firefly algorithm  BP neural network  chaos initialization  inertia weight  oil pipelines  corrosion rate prediction
                 
AuthorInstitution
LING Xiao College of Petroleum and Chemical Engineering, Lanzhou , China
XU Lu-shuai College of Petroleum and Chemical Engineering, Lanzhou , China
GAO Jia-cheng PetroChina Gansu Lanzhou Marketing Company, Lanzhou , China
MA Juan-juan College of Petroleum and Chemical Engineering, Lanzhou , China
MA He-qing College of Petroleum and Chemical Engineering, Lanzhou , China
FU Xiao-hua College of Sciences, Lanzhou University of Technology, Lanzhou , China
Hits:
Download times:
Abstract:
      In order to establish a machine learning model for predicting the external corrosion rate of long land transport pipelines, improve the prediction accuracy of the external corrosion rate of the pipeline, and accurately grasp the external corrosion status of the long-distance pipeline, this paper analyzes the working principle of FA, to solve the problems of FA, such as local optimization or function convergence failure due to initial parameter setting, and an improved FA algorithm is proposed:This paper uses the method of Logistics chaotic mapping to initialize the position of the firefly, and improve the cultivability of the firefly population; this paper introduces a new inertia weight calculation method to improve the formula of the firefly position movement and enhance the FA global optimization ability. The improved FA (IFA) was used to optimize the initial weights and thresholds of BPNN, and a long-distance pipeline external corrosion rate prediction model based on IFA-BPNN was established. Taking 111 sets of long-distance pipeline external corrosion detection data as an example, the simulation calculation is carried out in MATLAB, and PSO-BPNN, GA-BPNN and unoptimized BPNN are used as comparative models for comparative analysis. The IFA model is used to initialize the BPNN model, which greatly improves the prediction accuracy of the BPNN model. The IFA-BPNN model was used to predict and analyze the external corrosion rates of 12 groups of pipelines, the average relative error was only 5.94%, and the R2 of the prediction results was 0.995 95. The prediction results of IFA-BPNN model are superior to those of BPNN model, PSO-BPNN model and GA-BPNN model in all aspects. IFA-BPNN has good accuracy and robustness as a tool to predict pipeline corrosion rate.
Close