TY - EJOU AU - Tang, Mingzhu AU - Huang, Yujie AU - Ji, Dongxu AU - Yu, Hao TI - Diagnostic Method for Load Deviation in Ultra-Supercritical Units Based on MLNaNBDOS T2 - Frontiers in Heat and Mass Transfer PY - 2025 VL - 23 IS - 1 SN - 2151-8629 AB - Load deviations between the output of ultra-supercritical (USC) coal-fired power units and automatic generation control (AGC) commands can adversely affect the safe and stable operation of these units and grid load dispatching. Data-driven diagnostic methods often fail to account for the imbalanced distribution of data samples, leading to reduced classification performance in diagnosing load deviations in USC units. To address the class imbalance issue in USC load deviation datasets, this study proposes a diagnostic method based on the multi-label natural neighbor boundary oversampling technique (MLNaNBDOS). The method is articulated in three phases. Initially, the traditional binary oversampling strategy is improved by constructing a binary multi-label relationship for the load deviations in coal-fired units. Subsequently, an adaptive adjustment of the oversampling factor is implemented to determine the oversampling weight for each sample class. Finally, the generation of new instances is refined by dynamically evaluating the similarity between new cases and natural neighbors through a random factor, ensuring precise control over the instance generation process. In comparisons with nine benchmark methods across three imbalanced USC load deviation datasets, the proposed method demonstrates superior performance on several key evaluation metrics, including Micro-F1, Micro-G-mean, and Hamming Loss, with average values of 0.8497, 0.9150, and 0.1503, respectively. These results substantiate the effectiveness of the proposed method in accurately diagnosing the sources of load deviations in USC units. KW - Ultra-supercritical units; load deviation; multi-label learning; class imbalance; data oversampling DO - 10.32604/fhmt.2025.061143