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A Deep Learning Method based on Long Short Term Memory and Sliding Time Window for Type Recognition and Time Location of Power Quality Disturbance

机译:基于长短期记忆和滑动时间窗的电能质量扰动类型识别和时间定位的深度学习方法

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It is extremely important to recognize type and locate stating-ending times of power quality disturbance for adopting corresponding measures to suppress disturbances. The development of machine learning and artificial intelligence technology provides an effective way for dealing with power quality disturbance. In this paper, a deep learning method based on long short term memory and sliding time window for type recognition and time location of power quality disturbance is proposed. To be specific, the collected power quality disturbance wave is firstly transformed into a gray scale image and then the model based on deep learning with long short term memory (LSTM) stacked is constructed to automatically learn features. After that, the type of power quality disturbance is recognized, and furthermore, the starting-ending times are also located. Finally, experiment is carried out to verify the effectiveness of the proposed method.
机译:识别电能质量扰动的类型和确定终止时间对于采取相应的抑制措施非常重要。机器学习和人工智能技术的发展为应对电能质量扰动提供了有效的途径。提出了一种基于长期记忆和滑动时间窗的电能质量扰动类型识别和时间定位的深度学习方法。具体来说,首先将采集到的电能质量扰动波转换为灰度图像,然后构建基于深度学习的具有长期短期记忆(LSTM)的堆叠模型,以自动学习特征。之后,识别出电能质量扰动的类型,此外,还确定起止时间。最后,通过实验验证了该方法的有效性。

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