Abstract

Decision-making for the condition-based maintenance (CBM) of power transformers is critical to their sustainable operation. Existing research exhibits significant shortcomings; neither group decision-making nor maintenance intention is considered, which does not satisfy the needs of smart grids. Thus, a multivariate assessment system, which includes the consideration of technology, cost-effectiveness, and security, should be created, taking into account current research findings. In order to address the uncertainty of maintenance strategy selection, this paper proposes a maintenance decision-making model composed of cloud and vector space models. The optimal maintenance strategy is selected in a multivariate assessment system. Cloud models allow for the expression of natural language evaluation information and are used to transform qualitative concepts into quantitative expressions. The subjective and objective weights of the evaluation index are derived from the analytic hierarchy process and the grey relational analysis method, respectively. The kernel vector space model is then used to select the best maintenance strategy through the close degree calculation. Finally, an optimal maintenance strategy is determined. A comparison and analysis of three different representative maintenance strategies resulted in the following findings: The proposed model is effective; it provides a new decision-making method for power transformer maintenance decision-making; it is simple, practical, and easy to combine with the traditional state assessment method, and thus should play a role in transformer fault diagnosis.

Highlights

  • The power transformer greatly affects the stability and security of electrical power systems (EPS).In order to enhance maintenance efficiency and lower costs, it is necessary to improve transformer operation and maintenance strategy

  • This paper proposes an integrated evaluation model composed of the cloud and kernel vector space models

  • This paper proposed an integrated evaluation model for decision-making for power transformers that includes the cloud and kernel vector space models

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Summary

Introduction

The power transformer greatly affects the stability and security of electrical power systems (EPS). Traditional maintenance strategies usually consist of regular maintenance, which takes into account time but ignores the specific state of the equipment, causing the over-repair or lack of repair of the transformer. This affects the cost and does not satisfy the need of smart grids [1]. The condition-based maintenance (CBM) of power transformers commonly includes condition monitoring, condition assessment, and maintenance decision-making. CBM is a transformer maintenance strategy that has low costs, short outage times, and high equipment-utilization rates, all of which are favored by domestic and foreign power enterprises [6]. The maintenance decision-making resulting from the proposed model is verified by the consistency of the on-site results

Comprehensive Evaluation Index System
Cloud Model
Grey Correlation Analysis
Determination of the Comprehensive Index Weight
Kernel Vector Space Model
Case Analysis
Comparison
Full Text
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