Computer Science ›› 2024, Vol. 51 ›› Issue (6A): 230400115-9.doi: 10.11896/jsjkx.230400115

• Interdiscipline & Application • Previous Articles     Next Articles

Performance Risk Prediction of Power Grid Material Suppliers Based on XGBoost

LI Jinxia1, BIAN Huaxing1, WEN Fuguo1, HU Tianmu2, QIN Shihan3, WU Han3, MA Hui3   

  1. 1 State Grid Jiangsu Electric Power Co.,Ltd.Materials Branch,Nanjing 210036,China
    2 Jiangsu Electric Power Information Technology Co.,Ltd,Nanjing 210000,China
    3 Institute of Information Engineering,Chinese Academy of Sciences,Beijing 100085,China
  • Published:2024-06-06
  • About author:LI Jinxia,born in 1989,master.Her main research interest is supply chain operation management.
    BIAN Huaxing,born in 1989,master.His main research interest is supply chain operation management.
  • Supported by:
    Science and Technology Project of State Grid Jiangsu Electric Power Co.,Ltd(J2022071).

Abstract: The performance quality of power grid material suppliers is the basis for the safe and stable operation of power grid,which involves many links and complex risk factors,causing the current research on it is relatively scarce and stays at the level of theoretical analysis.In order to solve this problem,a supplier performance risk prediction model based on XGBoost is proposed,which fully considers various risk factors during the whole process,integrates internal supply chain operation,knowledge map data,external eye inspection,epidemic situation and other data,constructs 191 risk features based on feature engineering for initial training,and retrains 49 selected features after model optimization,taking into account the requirements of prediction accuracy and feature interpretability in actual business,and uses SHAP method to explain the model.Experimental results show that,compared with other three mainstream machine learning algorithms,the accuracy rate,precision rate and KS value are as high as 93.05%,94.45% and 45.38%,which further verifies the feasibility and superiority of XGBoost model in the performance risk prediction.The prediction model can be applied to the power grid supply chain business to further guide the practical application.

Key words: XGBoost, Feature engineering, Supplier performance, Risk prediction, Power grid

CLC Number: 

  • TP309
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