电力变压器健康状态评估模糊逻辑专家系统

T. Manoj, C. Ranga
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摘要

在本章中,提出了一种新的模糊逻辑模型来评价电力变压器的整体健康指数。考虑了影响变压器固体和液体绝缘健康状况的最重要的属性,如溶解气体、酸度、2-糠醛、含水量、击穿电压和耗散因子。这些属性进一步分为三个不同的集合。在这些集合的基础上,设计了F1、F2和F3三个不同的子模糊模型,以减少模糊规则的可能组合。它降低了所建议的OHI模型的复杂性问题。此外,考虑了所有重要的测试参数,使模型更加可靠和准确。此外,所提出的模糊模型有助于在变压器故障情况下及早采取适当的行动。传统的模糊逻辑模型通常在单个模糊模型中使用大量的输入和更多的规则。这使得模型变得复杂和不准确。该模型成功地克服了现有传统模型的这些缺点。并将该模型与Abu-Elanien等人的专家模型进行了比较。这种比较保证了所提方法的可靠性。此外,可以设想,所建议的模型可以由有经验和没有经验的公用事业管理人员轻松实现。
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Fuzzy Logic Expert System for Health Condition Assessment of Power Transformers
In the present chapter, a new fuzzy logic (FL) model is proposed to evaluate the overall health index (OHI) of power transformers. The most significant attributes such as dissolved gases, acidity, 2-furfuraldehyde, water content, breakdown voltage and dissipation factor that influence the health condition of transformers solid and liquid insulations are considered. These attributes are further divided into three different sets. Based on these sets, three different sub fuzzy models i.e. F1, F2 and F3 are designed in order to reduce the possible combinations of fuzzy rules. It results in reducing the complexity issues of the proposed OHI model. In addition, consideration of all significant testing parameters makes the model more reliable and accurate. Further, the proposed fuzzy model helps in initiating appropriate and early action on faulty conditions of the transformers. Conventional fuzzy logic models generally utilize large number of inputs and more number of rules in a single fuzzy model. It makes the models complex and inaccurate. Such shortcomings of existing conventional models are successfully overcame by the present proposed model. Furthermore, the results obtained from the proposed model are compared with the results obtained from expert model proposed by Abu-Elanien et al. This comparison ensures the reliability of the proposed method. Also, it is envisioned that the proposed model can be easily implemented by both the experienced and the inexperienced utility managers.
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