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Unbiased Euclidean Direction Search Algorithm for Partial Discharge Location in Cable Systems

Jie Wang, Lu,Guangya Zhu, Kai-Li Yin,Kai Zhou,Badong Chen

IEEE Trans Instrum Meas(2025)

College of Electronics and Information Engineering | High Voltage Laboratory in College of Electrical Engineering | Institute of Artificial Intelligence and Robotics (IAIR)

Cited 0|Views3
Abstract
Utilizing the unbiasedness criterion, this paper proposes a bias-compensated normalized Euclidean direction search (BC-NEDS) algorithm with noisy inputs, which can effectively mitigate impact of the bias by estimating of statistical properties of inputs. Moreover, the theoretical analysis of the BC-NEDS algorithm is conducted in transient regime. Simulations verify the validity of the theoretical analysis and showcase the improved performance of the BC-NEDS algorithm. Partial discharge (PD) location techniques can be utilized to effectively monitor the condition of the electrical apparatus. Considering the performance of the conventional location algorithms based on the time difference of arrival (TDOA) method may notably degrade with noisy inputs. Hitherto, scarce literature concentrates on the PD location problem by leveraging adaptive filtering techniques. Such problem is essentially characterized by a noisy input model. This work aims to propose a new one-step algorithm to simultaneously denoise and achieve improved location accuracy with noisy input. The BC-NEDS algorithm is employed for solving the PD location problem. The BC-NEDS algorithm demonstrates the effectiveness in mitigating the bias arising from noisy inputs in both the direct and reflected PD signals and estimating the time difference to locate the PD signal of cable systems. Simulations and experimental studies exhibit the BC-NEDS algorithm verifies the effectiveness and achieves enhanced location accuracy for cable systems.
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Key words
Partial discharge,Location,Normalized Euclidean direction search,Transient behavior,Cable systems
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要点】:本文提出了一种基于无偏准则的归一化欧氏方向搜索算法(BC-NEDS),能够有效抑制噪声输入下的偏差影响,并提高电缆系统局部放电定位的准确性。

方法】:通过估算输入信号的统计特性,对噪声输入进行偏差补偿,实现无偏归一化欧氏方向搜索。

实验】:通过仿真验证了算法理论分析的有效性,并在实验研究中使用特定数据集展示了BC-NEDS算法在电缆系统局部放电定位中的优越性能。