Xu Yongjin, Lv Jifan, Wang Jiaying, Ye Fangbin, Ye Shen, Ji Jianfeng
State Grid Zhejiang Marketing Service Center, Hangzhou, China.
Beijing Zhixiang Technology Co., Ltd, Beijing, China.
PeerJ Comput Sci. 2024 Feb 8;10:e1688. doi: 10.7717/peerj-cs.1688. eCollection 2024.
At present, the reconfiguration, maintenance, and review of power lines play a pivotal role in maintaining the stability of electrical grid operations and ensuring the accuracy of electrical energy measurements. These essential tasks not only guarantee the uninterrupted functioning of the power system, thereby improving the reliability of the electricity supply but also facilitate precise electricity consumption measurement. In view of these considerations, this article endeavors to address the challenges posed by power line restructuring, maintenance, and inspections on the stability of power grid operations and the accuracy of energy metering. To accomplish this goal, this article introduces an enhanced methodology based on the hidden Markov model (HMM) for identifying the topology of distribution substations. This approach involves a thorough analysis of the characteristic topology structures found in low-voltage distribution network (LVDN) substations. A topology identification model is also developed for LVDN substations by leveraging time series data of electricity consumption measurements and adhering to the principles of energy conservation. The HMM is employed to streamline the dimensionality of the electricity consumption data matrix, thereby transforming the topology identification challenge of LVDN substations into a solvable convex optimization problem. Experimental results substantiate the effectiveness of the proposed model, with convergence to minimal error achieved after a mere 50 iterations for long time series data. Notably, the method attains an impressive discriminative accuracy of 0.9 while incurring only a modest increase in computational time, requiring a mere 35.1 milliseconds. By comparison, the full-day data analysis method exhibits the shortest computational time at 16.1 milliseconds but falls short of achieving the desired accuracy level of 0.9. Meanwhile, the sliding time window analysis method achieves the highest accuracy of 0.95 but at the cost of a 50-fold increase in computational time compared to the proposed method. Furthermore, the algorithm reported here excels in terms of energy efficiency (0.89) and load balancing (0.85). In summary, the proposed methodology outperforms alternative approaches across a spectrum of performance metrics. This article delivers valuable insights to the industry by fortifying the stability of power grid operations and elevating the precision of energy metering. The proposed approach serves as an effective solution to the challenges entailed by power line restructuring, maintenance, and inspections.
目前,电力线路的重新配置、维护和检查对于维持电网运行的稳定性以及确保电能计量的准确性起着关键作用。这些重要任务不仅保证了电力系统的不间断运行,从而提高了供电可靠性,还便于精确计量电力消耗。鉴于这些考虑因素,本文致力于探讨电力线路重组、维护和检查对电网运行稳定性和能量计量准确性所带来的挑战。为实现这一目标,本文引入了一种基于隐马尔可夫模型(HMM)的增强方法,用于识别配电变电站的拓扑结构。该方法涉及对低压配电网(LVDN)变电站中发现的特征拓扑结构进行深入分析。还通过利用电力消耗测量的时间序列数据并遵循能量守恒原理,为LVDN变电站开发了一种拓扑识别模型。采用HMM来简化电力消耗数据矩阵的维度,从而将LVDN变电站的拓扑识别挑战转化为一个可解决的凸优化问题。实验结果证实了所提出模型的有效性,对于长时间序列数据,仅经过50次迭代就收敛到最小误差。值得注意的是,该方法在计算时间仅适度增加(仅需35.1毫秒)的情况下,实现了令人印象深刻的0.9判别准确率。相比之下,全天数据分析方法的计算时间最短,为16.1毫秒,但未达到所需的0.9准确率水平。同时,滑动时间窗口分析方法实现了最高的0.95准确率,但与所提出的方法相比,计算时间增加了50倍。此外,本文报道的算法在能源效率(0.89)和负载平衡(0.85)方面表现出色。总之,所提出的方法在一系列性能指标上优于其他替代方法。本文通过加强电网运行的稳定性和提高能量计量的精度,为该行业提供了有价值的见解。所提出的方法是应对电力线路重组、维护和检查所带来挑战的有效解决方案。