Research on the application of renewable energy in power system based on adaptive hierarchical fuzzy logic maintenance

Q4 Engineering Measurement Sensors Pub Date : 2024-07-17 DOI:10.1016/j.measen.2024.101281
Haitao Sang , Shifeng Chen , Fayi Qu , Yanhui Song , Fan Yang
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Abstract

Condition-based maintenance is very desirable for minimizing the maintenance and failure costs of power systems without sacrificing reliability. A systematic approach including an adaptive maintenance advisor and a system maintenance optimizer is proposed here for effectively handling the operational variations and uncertainties for condition-based maintenance. First, the maintenance advisor receives and implements the maintenance plans for its key components from the system maintenance optimizer, which optimizes the maintenance schedules with multi-objective evolutionary algorithm, considering only major system variables and the overall system performance. During operation, the offshore substation will experience continuing ageing and shifts in control, weather and load factors, measurement and human judgment detected from the connected grid and all other equipments with uncertainties. Then, the advisor estimates the changes of reliability indices due to operational variations and uncertainties of its key components by hierarchical fuzzy logic and sends the changes back to the maintenance optimizer. The maintenance optimizer will upgrade the load-point reliability and report any drastic deterioration of reliability within each substation, which may lead to re-optimization of the substation's maintenance activities for meeting its desired reliability. The offshore substation connected to a medium-sized onshore grid will be studied here to demonstrate the ability of this proposed approach in dealing with uncertainties in the implementation of maintenance with significant reduction of computational complexity and rule base.

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基于自适应分层模糊逻辑维护的可再生能源在电力系统中的应用研究
基于状态的维护对于在不牺牲可靠性的前提下最大限度地降低电力系统的维护和故障成本是非常理想的。本文提出了一种系统方法,包括自适应维护顾问和系统维护优化器,用于有效处理基于状态的维护的运行变化和不确定性。首先,维护顾问从系统维护优化器接收并执行其关键部件的维护计划,系统维护优化器仅考虑主要系统变量和整体系统性能,采用多目标进化算法优化维护计划。在运行过程中,海上变电站将经历持续的老化,以及控制、天气和负载因素、从连接电网检测到的测量和人为判断以及所有其他设备的不确定性的变化。然后,顾问通过分层模糊逻辑估算因运行变化和关键部件的不确定性而导致的可靠性指数变化,并将变化反馈给维护优化器。维护优化器将对负荷点可靠性进行升级,并报告每个变电站内可靠性的任何急剧恶化,这可能导致重新优化变电站的维护活动,以满足其所需的可靠性。本文将对与中型陆上电网相连的海上变电站进行研究,以证明所建议的方法能够处理维护实施过程中的不确定性,并显著降低计算复杂性和规则库。
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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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