Lin Lin, Zhang Jie, Zhang Na, Shi Jiancheng, Chen Cheng
College of Information and Control Engineering, Jilin Institute of Chemical Technology, Jilin 132022, China.
State Grid Liaoning Economic Research Institute, Shenyang 110015, China.
Entropy (Basel). 2022 Oct 29;24(11):1558. doi: 10.3390/e24111558.
The huge amount of power fingerprint data often has the problem of unbalanced categories and is difficult to upload by the limited data transmission rate for IoT communications. An optimized LightGBM power fingerprint extraction and identification method based on entropy features is proposed. First, the voltage and current signals were extracted on the basis of the time-domain features and V-I trajectory features, and a 56-dimensional original feature set containing six entropy features was constructed. Then, the Boruta algorithm with a light gradient boosting machine (LightGBM) as the base learner was used for feature selection of the original feature set, and a 23-dimensional optimal feature subset containing five entropy features was determined. Finally, the Optuna algorithm was used to optimize the hyperparameters of the LightGBM classifier. The classification performance of the power fingerprint identification model on imbalanced datasets was further improved by improving the loss function of the LightGBM model. The experimental results prove that the method can effectively reduce the computational complexity of feature extraction and reduce the amount of power fingerprint data transmission. It meets the recognition accuracy and efficiency requirements of a massive power fingerprint identification system.
海量的电力指纹数据常常存在类别不平衡的问题,并且由于物联网通信的数据传输速率有限,难以进行上传。提出了一种基于熵特征的优化LightGBM电力指纹提取与识别方法。首先,基于时域特征和V-I轨迹特征提取电压和电流信号,并构建了一个包含六个熵特征的56维原始特征集。然后,使用以轻量级梯度提升机(LightGBM)为基础学习器的Boruta算法对原始特征集进行特征选择,确定了一个包含五个熵特征的23维最优特征子集。最后,使用Optuna算法对LightGBM分类器的超参数进行优化。通过改进LightGBM模型的损失函数,进一步提高了电力指纹识别模型在不平衡数据集上的分类性能。实验结果证明,该方法能够有效降低特征提取的计算复杂度,减少电力指纹数据传输量。它满足了海量电力指纹识别系统的识别精度和效率要求。