利用渐进式学习监测提高水电机组运行可靠性

IF 9.1 1区 工程技术 Q1 ENERGY & FUELS
Xiao Lang, Håkan Nilsson, Wengang Mao
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引用次数: 0

摘要

水电站的可靠高效运行是确保稳定的可再生能源供应的关键。然而,现代电力系统对频率调节的需求日益增长,导致了更频繁的启停周期和不同的负载条件,引入了可以加速关键部件退化的运行应力。为了应对这些挑战,本研究提出了一个数据驱动的增量学习(IL)框架,用于水力发电系统的性能监测和预测性维护。该框架使用滑动窗口数据流增量更新神经网络模型,同时通过基于冻结的自适应策略保留先验知识。关键绩效指标(kpi)是通过比较蒙特卡罗模拟参考条件下的模型预测得出的,为设备健康状况的进展提供了定量的见解。该方法已通过瑞典水电站三年多的全面运行数据进行了验证。结果表明,在两年的运行过程中,基于il的方法成功地跟踪了KPI从0到0.1的增长,并检测到了计划维护后KPI的突然下降,正如在案例研究轴承中观察到的那样。与传统的再训练方法相比,IL框架具有更好的适应性和稳定性。通过提供一个强大的框架来量化逐渐退化和突然的健康状态变化,这项工作为更主动、基于状态的维护策略提供了一条直接途径,最终提高了水电资产的运行可靠性和经济可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving operational reliability in hydropower units using incremental learning-based monitoring
Reliable and efficient operation of hydropower plants is essential for ensuring a stable renewable energy supply. However, the growing demand for frequency regulation in modern power systems has led to more frequent start-stop cycles and varying load conditions, introducing operational stresses that can accelerate the degradation of critical components. To address these challenges, this study proposes a data-driven incremental learning (IL) framework for performance monitoring and predictive maintenance in hydropower generation systems. The framework incrementally updates a neural network model using sliding window data stream, while retaining prior knowledge through a freezing-based adaptation strategy. Key performance indicators (KPIs) are derived by comparing model predictions under Monte Carlo-simulated reference conditions, providing quantitative insights into the progression of equipment health. The proposed method is validated using over three years of full-scale operational data from a Swedish hydropower plant. Results demonstrate that the IL-based approach successfully tracks KPI increases from 0 to 0.1 over two years of operation and detects abrupt KPI drops following planned maintenance, as observed in the case study bearings. Compared to conventional retraining methods, the IL framework offers improved adaptability and stability. By providing a robust framework for quantifying both gradual degradation and abrupt health status shifts, this work presents a direct pathway toward more proactive, condition-based maintenance strategies, ultimately enhancing the operational reliability and economic viability of hydropower assets.
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来源期刊
Renewable Energy
Renewable Energy 工程技术-能源与燃料
CiteScore
18.40
自引率
9.20%
发文量
1955
审稿时长
6.6 months
期刊介绍: Renewable Energy journal is dedicated to advancing knowledge and disseminating insights on various topics and technologies within renewable energy systems and components. Our mission is to support researchers, engineers, economists, manufacturers, NGOs, associations, and societies in staying updated on new developments in their respective fields and applying alternative energy solutions to current practices. As an international, multidisciplinary journal in renewable energy engineering and research, we strive to be a premier peer-reviewed platform and a trusted source of original research and reviews in the field of renewable energy. Join us in our endeavor to drive innovation and progress in sustainable energy solutions.
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