23 April 2026, Volume 45 Issue 4
    

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    Treatise and Report
  • ZHU Yuxiang, GAO Fanqiang, LI Yaohua
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 4-11. https://doi.org/10.12067/ATEEE2510044
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    Conventional displacement PID controllers for active magnetic bearings (AMBs) are highly dependent on accurate mathematical models and require laborious manual parameter tuning, resulting in poor adaptability under variable-speed conditions and limited vibration suppression performance. While existing intelligent control methods provide potential solutions, they often involve complex algorithms and high computational demands. This paper proposes a method that employs an adaptive notch filter to extract synchronous vibration signals in real time and adjusts PD parameters online via a modified Hebb learning rule, achieving rapid response to disturbance variations. Simulation and experimental results consistently demonstrate that the proposed method effectively addresses the adaptability limitations of conventional PID control across a wide speed range of 100~2 000 r/min. Under both variable-speed and multiple steady-state operating conditions, it significantly suppresses vibrations, achieving a maximum reduction of over 30% in the peak-to-peak rotor vibration displacement. Moreover, the method requires only minimal online computational overhead, markedly enhancing the control performance and practicality of the system under diverse operating states.
  • GUO Dong, SU Peng, GUO Peng, WU Meili, YU Hui
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 12-20. https://doi.org/10.12067/ATEEE2409060
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    To enhance the reliability of fault diagnosis in asynchronous motors, this study proposes a fault diagnosis method based on convolutional neural networks to address the challenge of identifying fault feature spectra. This method transforms current data into two-dimensional form and utilizes interpolation fitting matrix reconstruction, Markov transfer field (MTF) construction, as well as Gramian angular summation field (GASF) and Gramian angular difference field (GADF) transformations to capture a more comprehensive range of fault spectral information. Subsequently, by training the two-dimensional data using convolutional neural networks, the relationship between current and fault features is established. The comprehensive comparison of four data conversion methods for the convolutional neural networks is conducted, and simulation analysis validates the feasibility and accuracy of the proposed method.
  • GUO Qiang, LUO Yongjie, YAO Xueheng, YAO Haiyan, Miao Yufeng, XU Fei, SUN Qingqi
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 21-32. https://doi.org/10.12067/ATEEE2409007
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    Traditional transformer expansion techniques commonly involve increasing the physical capacity of transformers to cope with the continuous and steady growth of electrical loads. However, this expansion method struggles to address short-term load spikes, requiring additional investment costs and often leading to idle transformer capacity. To solve these issues, this paper proposes a transformer capacity expansion scheme based on energy storage devices, leveraging the advantages of additional power support from energy storage systems and the maturity of traditional transformer control and protection technologies to provide diversified ancillary services for future smart distribution networks. Firstly, this paper proposes an annual average cost model for the collaborative configuration of transformers and energy storage systems. Subsequently, a collaborative optimal configuration model for transformers and energy storage systems is established, with the objectives of minimizing load curtailment indices and comprehensive economic cost indicators. To evaluate the effectiveness of capacity expansion, three comprehensive benefit evaluation indicators are introduced: namely, average effective utilization rate of transformers, peak shaving and valley filling capability, and comprehensive economic cost. Finally, simulation results demonstrate that this optimal configuration scheme can alleviate transformer overload levels in the overall power grid, balance short-term transformer overload costs with energy storage unit construction investment costs, and provide a reference for developing more scientific and reasonable application practices for the collaborative configuration of transformers and energy storage systems in future scenarios.
  • GUO Hanbin, LI Zhibin
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 33-43. https://doi.org/10.12067/ATEEE2502036
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    Accurate prediction of dissolved gas content in oil can provide a basis for transformer faults early warning. To address the issues of outlier interference in dissolved gas data and the relatively low prediction accuracy of single model, a prediction method of dissolved gas in transformer oil based on feature optimization and improved whale optimization algorithm-time convolution network-attention mechanism (IWOA-TCN-Attention) is proposed. Firstly, optimal variational mode decomposition (OVMD) is used to extract the operational trend from the transformer time series, thereby removing the operational trend of the original series. Subsequently, the Local Outlier Factor (LOF) is used to identify and correct outliers in the series. Then, the corrected time series is decomposed into a series of sub-sequences with different frequencies through OVMD to reduce its volatility. Next, the Whale Optimization Algorithm is improved by integrating Sobol sequences, nonlinear convergence factors, adaptive weights, differential evolution, and Cauchy variation strategies. and the improved whale optimization algorithm (IWOA) is used to optimize the hyperparameters of the time convolution network (TCN), and the attention mechanism is introduced to improve the model’s ability to capture key temporal information. Finally, IWOA-TCN-Attention prediction models are constructed for each sub-sequence, and the final prediction result for the dissolved gas content in oil is obtained through superposition reconstruction. Experimental results show that the root mean square error, mean absolute error, and mean absolute percentage error of the proposed method are 0053 0, 0042 9, and 0004 1, respectively, which has higher prediction accuracy compared with other models.
  • LI Xing, TANG Yuchen, HUANG Li, SUN Xiaoyan, JIANG Hui
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 44-53. https://doi.org/10.12067/ATEEE2506026
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    As the core equipment of the power system, the temperature rise of the transformer is an important representation of its health status. The internal temperature monitoring of the transformer is of great significance to the safe and stable operation of the power grid. Aiming at the problem that it is difficult to arrange distributed sensors inside the transformer for direct temperature monitoring, this paper proposes an inverse method for measuring the internal temperature based on multi-point inverse transformation mapping of transformer surface temperature. This method constructs the matrix inverse problem model of the internal and external temperature mapping of the transformer, solves the inverse matrix through the electromagnetic heat flow coupling finite element simulation data of the transformer, and then realizes the internal temperature inversion by combining the temperature data of the outer measuring points. In this paper, the validity of the multi-point inverse transformation model is verified by multi-physical field simulation and the D-800/35 scaled transformer model. The results show that the average error of the internal temperature inversion error of the transformer is less than 1 K under the condition of less temperature input of the measuring point on the surface of the transformer, and has higher accuracy and lower computational complexity. This method can inverse the internal temperature of the transformer quickly and without sensor intrusion, and can provide theoretical support and technical support for the temperature monitoring and fault diagnosis of the transformer.
  • GUO Wenzhang, ZHAO Feiao, ZHOU Yuanke, SONG Xiaowan, SHEN Yuming, WANG Xuli, MA Yinghao
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 54-65. https://doi.org/10.12067/ATEEE2404050
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    Renewable energy uncertainty poses serious challenges to the safe, economical and flexible operation of power systems. By integrating flexible resources, flexible resource aggregators can enhance system flexibility and promote renewable energy consumption. However, the internal adjustment ability of resource aggregators is limited, and it is difficult to deal with the complex and changeable operation needs alone. This paper uses the prediction error of renewable energy and the probability characteristics of flexible resources, quantifies the internal operational risk and flexible resource capacity of resource aggregators, and builds a flexible resource interaction model based on operational risk. A stochastic robust optimization model of active distribution network considering the flexibility and resource interaction characteristics of resource aggregators is established to improve the robustness and flexibility of the system through operational risk transmission and resource interaction among resource aggregators. The model is solved by means of target cascade method and stochastic robust algorithm based on column and constraint generation. The effectiveness of the model is verified through simulation case studies.
  • LI Huan, CHANG Zhongxue, ZHANG Zhihua, ZHANG Wei
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 66-77. https://doi.org/10.12067/ATEEE2409053
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    The characteristics of power frequency voltage are a critical consideration in the application of single-phase reclosing technology in distribution networks. To this end, this paper establishes a theoretical analysis model for single-phase reclosing across various neutral grounding systems, and systematically derives the calculation formulas for the neutral point voltage and phase voltages under multiple fault scenarios. Building upon this, the study thoroughly investigates the impacts of various parameters on the voltage, including the load capacity, the ratio of the upstream phase-to-ground capacitance of the phase-segregated switch to the total system capacitance, and the overcompensation degree of the arc-suppression coil. The results indicate that in ungrounded and low-resistance grounded systems, the voltage of the reclosed phase remains below 1 pu, while that of the non-reclosed phases does not exceed 2 pu For systems grounded via an arc-suppression coil, the neutral point voltage reaches its maximum under heavy load conditions, and it decreases as both the aforementioned capacitance ratio and the overcompensation degree increase. This research provides a solid theoretical foundation for the installation of phase-segregated switches in arc-suppression coil grounded systems. The simulation results are highly consistent with the theoretical derivations, thereby verifying the correctness of the proposed theoretical analysis.
  • CHENG Jiangzhou, LIU Yulin, LIU Songkai, DENG Haifeng
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 78-90. https://doi.org/10.12067/ATEEE2509048
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    To address the challenges of weak ground fault characteristics and complex power flow directions in distribution networks with high-permeability distributed power sources, where traditional methods struggle to accurately locate fault sections, this paper proposes an active distribution network fault section localization method based on multimodal feature fusion. First, a variational modal decomposition optimized by the GOOSE algorithm is employed to decompose, denoise, and reconstruct the one-dimensional fault current signal. The gram sum field (GASF) is then used to convert the reconstructed signal into a two-dimensional image. Second, a complementary dual-channel model is constructed using ConvNeXt with an efficient channel attention (ECA) mechanism and 1D-CNN to extract deep features from both the two-dimensional image and the one-dimensional current signal. Finally, the dual-channel output feature vectors are concatenated, dynamically weighted via ECA for the fused features, and processed through Softmax to output the fault section location. Simulation experiments demonstrate that the proposed method achieves overall accuracy, precision, recall, and F1 score of 9826%, 9828%, 9827%, and 9820%, respectively, in an enhanced IEEE-33 node distribution system; Accuracy remains above 94% under extreme noise conditions. Multimodal feature fusion demonstrates significant advantages in model comparison, ablation studies, and generalization capability tests.
  • XIONG Weichen, LI Jie, LI Hua, LI Xudong, WANG Ruogu, ZHANG Yuanhang, XU Yilin, KOU Peng
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 91-98. https://doi.org/10.12067/ATEEE2501005
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    As renewable energy is increasingly integrated into the power grid through power electronic devices, the issue of low system inertia in high-renewable-penetration power systems has become increasingly prominent, posing a significant challenge to renewable energy accommodation. Therefore, enhancing the frequency regulation capability of renewable energy has become a key research focus in modern power systems. To address this issue, this paper proposes a coordinated frequency regulation control strategy based on adaptive droop control for an energy-storage-integrated static var generator (SVG) and a wind farm. This strategy dynamically adjusts the adaptive droop coefficients of the energy-storage-integrated static var generator and the wind farm based on the state of charge (SOC) of the energy-storage-integrated SVG and system frequency deviation. First, the initial droop coefficient of the energy-storage-integrated SVG is determined according to its SOC to fully utilize its frequency regulation capability, while the initial droop coefficient of the wind farm remains constant. Then, an adaptive frequency deviation coefficient is introduced to cooperatively adjust the initial droop coefficients of both the energy-storage-integrated SVG and the wind farm, enabling flexible control actions in response to frequency deviations. Finally, simulations are conducted on the Matlab/Simulink platform. The simulation results demonstrate that the proposed strategy effectively enhances the frequency regulation capability of the system under both low-frequency and high-frequency disturbance events, thereby improving frequency stability.
  • LI Haifeng, DAI Xuhui, HAO Yuchen, LI Xiao, CAO Yi, JIN Tao, WANG Zheng, YANG Yan, WANG Qianggang
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 99-110. https://doi.org/10.12067/ATEEE2506001
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    The large-scale integration of renewable energy and the low-carbon transition of power systems have intensified operational uncertainties, posing more severe challenges to the scheduling of flexibility resources. As a crucial regulation resource, thermal power units will continue to provide the primary source of flexibility in the long term; therefore, it is necessary to enhance their regulation capabilities through flexibility retrofitting. By incorporating molten salt thermal storage, the peak regulation capacity of thermal power units can be effectively enhanced and their response speed improved. This paper proposes an optimal scheduling method for a coupled system of thermal power and thermal energy storage, considering the matching between flexibility supply and demand, with the objective of minimizing the overall system cost. It analyzes the optimal operational modes of the integrated system under different flexibility demand scenarios and examines the economic benefits and technical advantages of flexibility retrofitting. The example results verify the effectiveness of the proposed method and provide theoretical support for enhancing power system flexibility and optimizing thermal power unit retrofit strategies.
  • New Technolog Application
  • ZHONG Liguo, YAN Xiuke, REN Ziyan, ZHANG Dianhai, ZHANG Yanli
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 111-121. https://doi.org/10.12067/ATEEE2505042
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    Digital twin technology has become one of the important technologies to promote the digital and intelligent development of power transformers. The development of digital twin technology requires a lot of fast, accurate, real-time computing. In order to solve the problem that the winding electromagnetic force model of transformer is time-consuming due to the high degree of freedom, this paper presents a method for calculating the multi-two-dimensional winding electromagnetic force of power transformer for digital twin application. According to the influence of the iron core on the three-dimensional space leakage field of the winding, different two-dimensional sections are taken on the winding, the winding is divided into several areas according to the calculation requirements, and the multi-layer mirror winding model is established to calculate the leakage field of each two-dimensional section, and then the electromagnetic force of the winding is calculated according to the leakage field of different sections. The algorithm and model are implemented by C++ programming language, and is applied to the electromagnetic force analysis of three-phase power transformer winding under normal state and deformation state. Compared with the traditional three-dimensional finite element simulation, the accuracy is guaranteed and the calculation speed is faster, and the time required is much less than that of three-dimensional finite element simulation. It has great potential and feasibility in the application of power transformer digital twin technology.
  • ZHENG Wenjie, LI Chenhao, XIA Boyang, LYU Xuebin, LIN Ying, ZHANG Fengda, PANG Lei
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 122-132. https://doi.org/10.12067/ATEEE2311025
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    The thyristor valve inverter is the core equipment in current ultra-high voltage and extra-high voltage direct current transmission projects. Identifying the online health status parameters of the thyristor level in the valve inverter is of significant importance for ensuring the safe operation of the valve inverter and improving equipment availability. This paper takes the Six-pulse inverter as the analysis object. Through the analysis of the working process of the Six-pulse inverter circuit and combining specific circuit topology and monitoring information of thyristors in the valve inverter in practical engineering, a digital twin model of the Six-Pulse Inverter is constructed. The simulation results of the Six-pulse inverter in Matlab/Simulink are used to simulate the monitoring data of the actual physical model. Considering the conditions of multi-level thyristors in series, the circuit equations are solved using the Runge-Kutta method to obtain digital model data. Furthermore, based on the particle swarm algorithm, the equivalent insulation resistance and damping capacitance parameters of the thyristor level are identified. The results are analyzed in conjunction with trajectory sensitivity analysis, confirming that the proposed method has good identification accuracy. It provides valuable references for intelligent operation and maintenance of the valve inverter.
  • LI Haifeng, XU Qingwen, LI Xiao, SUN Yong, HAO Yuchen, JIN Tao, YANG Yan, WANG Zheng, LUO Yongjie
    Advanced Technology of Electrical Engineering and Energy. 2026, 45(4): 133-144. https://doi.org/10.12067/ATEEE2504048
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    To achieve the “Dual Carbon” goals at an early stage, the penetration of renewable energy in power systems continues to increase, while its inherent volatility imposes higher requirements on the flexible accommodation capability of thermal power. Under fast load variation conditions, integrating thermal power with molten salt thermal energy storage (TES) retrofits so as to form a coupled system can enhance renewable energy accommodation capacity. However, its carbon-economic performance must be thoroughly quantified. To fully exploit the flexibility of thermal power while ensuring carbon-economic benefits, this paper proposes a carbon-economic optimal dispatch model for a coupled thermal power and molten salt TES system considering fast load variation. First, to control coal consumption and carbon emissions after flexibility retrofits for fast load variation and rapidly mitigate renewable energy fluctuations, an operational model of the coupled system integrating thermal power with molten salt TES retrofits is constructed. Second, a carbon emission allowance trading model for thermal power is established, linearizing the nonlinear peak-shaving correction coefficients in carbon emission allowances to quantify the dynamic carbon trading costs across time intervals. Furthermore, by incorporating carbon trading costs into the economic dispatch model of the coupled system, a carbon-economic optimization model coordinating the retrofitted coupled system with renewable energy units is solved to maximize daily comprehensive operational revenue. Finally, case studies based on a real-world power grid in Jiangsu Province demonstrate that the proposed model can effectively enhance system economy while achieving carbon emission reduction.