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Application of Ensemble Learning with Mean Shift Clustering for Output Profile Classification and Anomaly Detection in Energy Production of Grid-Tied Photovoltaic System

机译:合奏学习在电网粘固光伏系统能源生产中对输出轮廓分类和异常检测的应用

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Fault detection and monitoring system in photovoltaic (PV) energy management system is important in achieving its optimal performance. An effective diagnostic system involves correct analysis of electrical parameters of a PV array on a given weather condition. In the study, mean-shift clustering was applied for pre-classification and anomaly detection of time-series data of electrical parameters from grid-tied inverter, and solar-irradiance. Classification and anomaly detection applied is based in ensemble learning, where its base learners are based from multilayer perceptron. A stacking ensemble is used in classification of energy production profile while bagging ensemble is used detecting anomalous trend in time-series data. A stacking ensemble got a highest accuracy value of 94% compared to single classifiers which have accuracy value of 85.25%, 84.14%, and 63.4%, respectively. The bagging ensemble autoencoders have the lowest mean squared error during model reconstruction compared to single autoencoder. It has a fair performance in classifying anomaly points from normal datapoints, having an AUC value of 0.795 and F1-score of 0.71, given that the hyperparameter is 0.5. Overall, ensemble learners improve the performance in classification and detection tasks.
机译:光伏(PV)能源管理系统中的故障检测和监控系统对于实现其最佳性能很重要。有效的诊断系统涉及在给定的天气条件下正确分析PV阵列的电参数。在该研究中,应用平均移位聚类用于预分类和异常检测电网逆变器的电气参数的时间序列数据,以及太阳能辐照度。应用的分类和异常检测是基于集合学习,其基础学习者基于多层的感知者。堆叠集合用于能量生产型材的分类,同时袋装集合用于检测时间序列数据的异常趋势。与单一分类器相比,堆叠集合的最高精度值为94%,分别具有85.25%,84.14%和63.4%的精度值。与单个AutoEncoder相比,袋装集合AutoEncoders在模型重建期间具有最低的平均平均误差。它在分类来自正常数据点的异常点具有公平性能,AUC值为0.795和F1分数为0.71,鉴于HyperParameter为0.5。总体而言,集合学习者提高了分类和检测任务的性能。

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