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用于混合电能质量扰动识别的熵融合增强辛几何模式分解

Entropy-Fused Enhanced Symplectic Geometric Mode Decomposition for Hybrid Power Quality Disturbance Recognition.

作者信息

He Chencheng, Wang Wenbo, E Xuezhuang, Yuan Hao, Lu Yuyi

机构信息

College of Science, Wuhan University of Science and Technology, Wuhan 430065, China.

出版信息

Entropy (Basel). 2025 Aug 30;27(9):920. doi: 10.3390/e27090920.

Abstract

Electrical networks face operational challenges from power quality-affecting disturbances. Since disturbance signatures directly affect classifier performance, optimized feature selection becomes critical for accurate power quality assessment. The pursuit of robust feature extraction inevitably constrains the dimensionality of the discriminative feature set, but the complexity of the recognition model will be increased and the recognition speed will be reduced if the feature vector dimension is too high. Building upon the aforementioned requirements, in this paper, we propose a feature extraction framework that combines improved symplectic geometric mode decomposition, refined generalized multiscale quantum entropy, and refined generalized multiscale reverse dispersion entropy. Firstly, based on the intrinsic properties of power quality disturbance (PQD) signals, the embedding dimension of symplectic geometric mode decomposition and the adaptive mode component screening method are improved, and the PQD signal undergoes tri-band decomposition via improved symplectic geometric mode decomposition (ISGMD), yielding distinct high-frequency, medium-frequency, and low-frequency components. Secondly, utilizing the enhanced symplectic geometric mode decomposition as a foundation, the perturbation features are extracted by the combination of refined generalized multiscale quantum entropy and refined generalized multiscale reverse dispersion entropy to construct high-precision and low-dimensional feature vectors. Finally, a double-layer composite power quality disturbance model is constructed by a deep extreme learning machine algorithm to identify power quality disturbance signals. After analysis and comparison, the proposed method is found to be effective even in a strong noise environment with a single interference, and the average recognition accuracy across different noise environments is 97.3%. Under the complex conditions involving multiple types of mixed perturbations, the average recognition accuracy is maintained above 96%. Compared with the existing CNN + LSTM method, the recognition accuracy of the proposed method is improved by 3.7%. In addition, its recognition accuracy in scenarios with small data samples is significantly better than that of traditional methods, such as single CNN models and LSTM models. The experimental results show that the proposed strategy can accurately classify and identify various power quality interferences and that it is better than traditional methods in terms of classification accuracy and robustness. The experimental results of the simulation and measured data show that the combined feature extraction methodology reliably extracts discriminative feature vectors from PQD. The double-layer combined classification model can further enhance the model's recognition capabilities. This method has high accuracy and certain noise resistance. In the 30 dB white noise environment, the average classification accuracy of the model is 99.10% for the simulation database containing 63 PQD types. Meanwhile, for the test data based on a hardware platform, the average accuracy is 99.03%, and the approach's dependability is further evidenced by rigorous validation experiments.

摘要

电网面临着来自影响电能质量的干扰所带来的运行挑战。由于干扰特征直接影响分类器性能,因此优化特征选择对于准确的电能质量评估至关重要。对稳健特征提取的追求不可避免地限制了判别特征集的维度,但如果特征向量维度过高,识别模型的复杂度将会增加,识别速度也会降低。基于上述要求,本文提出了一种特征提取框架,该框架结合了改进的辛几何模态分解、精细化广义多尺度量子熵和精细化广义多尺度反向离散熵。首先,基于电能质量干扰(PQD)信号的固有特性,改进了辛几何模态分解的嵌入维度和自适应模态分量筛选方法,通过改进的辛几何模态分解(ISGMD)对PQD信号进行三频段分解,得到不同的高频、中频和低频分量。其次,以增强的辛几何模态分解为基础,通过精细化广义多尺度量子熵和精细化广义多尺度反向离散熵相结合的方式提取扰动特征,构建高精度低维特征向量。最后,利用深度极限学习机算法构建双层复合电能质量干扰模型,以识别电能质量干扰信号。经过分析比较,发现所提出的方法即使在存在单一干扰的强噪声环境中也有效,在不同噪声环境下的平均识别准确率为97.3%。在涉及多种类型混合扰动的复杂条件下,平均识别准确率保持在96%以上。与现有的CNN + LSTM方法相比,所提方法的识别准确率提高了3.7%。此外,其在小数据样本场景下的识别准确率明显优于传统方法,如单CNN模型和LSTM模型。实验结果表明,所提出的策略能够准确地对各种电能质量干扰进行分类和识别,并且在分类准确率和鲁棒性方面优于传统方法。仿真和实测数据的实验结果表明,组合特征提取方法能够可靠地从PQD中提取判别特征向量。双层组合分类模型能够进一步增强模型的识别能力。该方法具有较高的准确率和一定的抗噪声能力。在30 dB白噪声环境下,对于包含63种PQD类型的仿真数据库,模型的平均分类准确率为99.10%。同时,对于基于硬件平台的测试数据,平均准确率为99.03%,严格的验证实验进一步证明了该方法的可靠性。

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