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山区小水电站智能监测与预警技术研究与应用
叶华洋1, 范强1, 文贤馗1, 庞玲蓉1, 钟润峰1, 刘卓娅1, 唐斌2
(1.贵州电网有限责任公司电力科学研究院;2.贵州黔能企业有限责任公司)
Research and Application of Intelligent Monitoring and Early Warning Technology for Small Hydropower Stations in Mountainous Areas
Ye Huayang1, Fan Qiang1, Wen Xiankui1, Pang Lingrong1, Zhong Runfeng1, Liu Zhuoya1, Tang Bin2
(1.Electric Power Research Institute of Guizhou Power Grid Co,Ltd,CSG;2.Guizhou QianNeng enterprises limited liability corporation of Guizhou Power Grid Co., Ltd)
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投稿时间:2024-09-24    修订日期:2024-11-10
中文摘要: 全球能源需求激增与绿色能源转型的双重驱动下,山区小水电站作为地方绿色能源供应的重要组成部分,其安全运行意义重大,但因其地理偏远、维网络的智能监测与预警技术,通过构建分层的系统架构,实现了水电站数据的实时采集、传输、处理和分析。利用机器学习和集成学习方法,设计了一种智能监测与预警算法,经过数据预处理、特征提取、模型训练及参数优化,显著提升了预测精度和模型泛化能力。实验证明,该系统能有效监测水电站的关键参数,并在异常时及时预警,展现出良好的稳定性和可靠性。此外,系统通过可视化展示有效助力运维管理人员直观掌握水电站状态、及时应对风险。本研究为山区小水电站的安全高效运行提供了技术支持,可为未来小水电的智能监测预警提供参考。
Abstract:In response to the global surge in energy demand and the transition towards green energy, small hydropower stations in mountainous regions play a pivotal role in local green energy provision, and their safe operation is of great importance. However, these stations face high operational risks due to their geographical remoteness and difficult maintenance.. To address the imperative for intelligent monitoring and early warning systems at these stations, this study introduces an advanced technology grounded on power communication networks. By establishing a hierarchical system architecture, we facilitate real-time collection, transmission, processing, and analysis of data from hydropower stations. Leveraging machine learning and ensemble learning techniques, we design an intelligent monitoring and early warning algorithm. Following data preprocessing, feature extraction, model training, and parameter optimization, there is a marked enhancement in prediction accuracy and model generalizability. Experimental outcomes indicate that our system proficiently oversees key parameters of hydropower stations, offering timely alerts during anomalies, thereby exhibiting commendable stability and reliability. Furthermore, the system empowers operation and maintenance managers to intuitively perceive the status of hydropower stations and promptly address risks through visualization. This research furnishes technical backing for the safe and efficient functioning of small hydropower stations in mountainous terrains and offers insights for future endeavors in intelligent monitoring and early warning systems for such installations.
文章编号:20240924001     中图分类号:    文献标志码:
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