能量转换装置故障诊断的模糊逻辑方法综述

G. Demidova, A. Rassõlkin, T. Vaimann, A. Kallaste, J. Zakis, A. Suzdaļenko
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引用次数: 3

摘要

任何能量转换设备,如工业电机驱动器、电动汽车的推进驱动器、泵系统、风力涡轮机等,都容易出现故障。通常,故障会导致额外的能源损失、产量损失,甚至在最坏的情况下,甚至会造成环境危害,从而增加经济成本。为了防止故障,能量转换系统可以通过制造商制定和指定的特定程序进行检查。然而,由于能量转换装置的复杂结构或装置在例行检查之间的故障,这可能具有挑战性。这种基于计划的状态监测方法只能提供关于设备剩余寿命(单独组件和整个系统)的少量信息,并且不能进行适当的预测或充分利用。为了克服具有健康/故障状态的传统两级布尔方法,采用了基于人工智能(AI)的控制技术。模糊逻辑方法是基于人类感知过程和认知的启发,这些过程和认知往往是不确定的或经验的。然而,模糊逻辑已经成功地应用于各种能量转换装置的控制应用,即使在分析模型未知的情况下。本文提出基于模糊逻辑方法开发新的故障检测算法,使能量转换系统设计人员能够为包括电机和电力电子子系统在内的设备开发可靠性因子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Overview of Fuzzy Logic Approaches for Fault Diagnosis in Energy Conversion Devices
Any energy conversion devices, such as industrial motor-drives, propulsion drives of electric vehicles, pump systems, wind turbines, and others, are prone to failures. Usually, failures result in increased economic costs that come through additional energy losses, loss of production, or in a worst-case even environmental hazard. To prevent failures, energy conversion systems may be checked through particular routines developed and specified by the manufactures. However, it may be challenging due to the complex construction of energy conversion devices or devices' failure between the routine checks. Such schedule-based condition monitoring approaches provide minor information on the remaining lifetime (separate components and whole system) of the devices and do not allow proper prognostic or full exploitation. To overcome traditional two-level Boolean approaches with healthy/faulty states an Artificial Intelligence (AI)-based control techniques are used. The Fuzzy Logic approach is based on inspired by human perception processes and cognition that are often uncertain or empirical. However, Fuzzy Logic is already successfully applied in various control applications of energy conversion devices, even when the analytical models are unknown. This paper argues for developing new fault detection algorithms based on fuzzy logic methods to allow energy conversion systems designers to develop reliability factors for apparatus, which included electrical machines and power electronics subsystems.
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