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Automated recognition system for power quality disturbances.

机译:电能质量扰动自动识别系统。

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The application of deregulation policies in electric power systems has resulted in the necessity to quantify the quality of electric power. This fact highlights the need for a new monitoring strategy which is capable of tracking, detecting, classifying power quality disturbances, and then identifying the source of the disturbance.; The objective of this work is to design an efficient and reliable power quality monitoring strategy that uses the advances in signal processing and pattern recognition to overcome the deficiencies that exist in power quality monitoring devices. The purposed monitoring strategy has two stages. The first stage is to detect, track, and classify any power quality violation by the use of on-line measurements. In the second stage, the source of the classified power quality disturbance must be identified.; In the first stage, an adaptive linear combiner is used to detect power quality disturbances. Then, the Teager Energy Operator and Hilbert Transform are utilized for power quality event tracking. After the Fourier, Wavelet, and Walsh Transforms are employed for the feature extraction, two approaches are then exploited to classify the different power quality disturbances. The first approach depends on comparing the disturbance to be classified with a stored set of signatures for different power quality disturbances. The comparison is developed by using Hidden Markov Models and Dynamic Time Warping. The second approach depends on employing an inductive inference to generate the classification rules directly from the data.; In the second stage of the new monitoring strategy, only the problem of identifying the location of the switched capacitor which initiates the transients is investigated. The Total Least Square-Estimation of Signal Parameters via Rotational Invariance Technique is adopted to estimate the amplitudes and frequencies of the various modes contained in the voltage signal measured at the facility entrance. After extracting the amplitudes and frequencies, an Artificial Neural Network is employed to identify the switched capacitor by using amplitudes and frequencies extracted from the transient signal.; The new algorithms for detecting, tracking, and classifying power quality disturbances demonstrate the potential for further development of a fully automated recognition system for the assessment of power quality. This is possible because the implementation of the proposed algorithms for the power quality monitoring device becomes a straight forward process by modifying the device software.
机译:放松管制政策在电力系统中的应用导致需要量化电力质量。这一事实突出表明,需要一种新的监视策略,该策略能够跟踪,检测,分类电能质量扰动,然后识别扰动源。这项工作的目的是设计一种有效而可靠的电能质量监测策略,该策略利用信号处理和模式识别方面的进步来克服电能质量监测设备中存在的缺陷。有针对性的监测策略分为两个阶段。第一步是通过使用在线测量来检测,跟踪和分类任何电能质量违规。在第二阶段,必须确定分类的电能质量扰动的来源。在第一阶段,自适应线性组合器用于检测电能质量扰动。然后,将Teager能源运营商和Hilbert变换用于电能质量事件跟踪。在将傅立叶,小波和沃尔什变换用于特征提取之后,然后利用两种方法对不同的电能质量扰动进行分类。第一种方法取决于将要分类的干扰与针对不同电能质量干扰的一组存储的签名进行比较。比较是通过使用隐马尔可夫模型和动态时间规整进行的。第二种方法取决于采用归纳推理直接从数据生成分类规则。在新监视策略的第二阶段,仅研究确定启动瞬态的开关电容器位置的问题。通过旋转不变技术对信号参数的总最小二乘估计被用来估计在设施入口处测量的电压信号中包含的各种模式的振幅和频率。在提取了幅度和频率之后,使用人工神经网络通过使用从瞬态信号中提取的幅度和频率来识别开关电容器。用于检测,跟踪和分类电能质量干扰的新算法展示了进一步开发用于电能质量评估的全自动识别系统的潜力。这是可能的,因为通过修改设备软件,电能质量监控设备的拟议算法的实现变得很简单。

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