Deep analysis of power equipment defect based on semantic framework text mining technology

Defect factors and their relevance rules can be analyzed in depth by processing defect records which are often expressed in form of text data. However, considering that defect text consists of both structured and unstructured data, it is necessary to excavate structured information from unstructured data. In this paper, text mining method based on semantic framework technology is introduced to transform unstructured defect description into structured information such as components and defect attributes. Then, a deep analyzing model of power equipment defect is established, which provides a scheme of defect mining based on historical defect texts. Case studies prove that proposed deep analysis method has guiding significance for equipment upgrading, selection and maintenance.