J. Petrović, Ivana Božić
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引用次数: 0

摘要

在预测和预防事故、减少停机次数和持续时间、检测和监测水电站机组长达数十年的实际运行条件下的故障方面,当前的方法都是基于振动诊断。这些方法的多学科特征反映在水聚集体中某些振动的识别,各种振动诊断方法的应用,测量数据的质量评估以及基于人工智能的分析和预测。本文提出了一种可能的方法来解决已经运行了半个多世纪的水轮机性能预测这一复杂问题。本文提出了一种利用人工神经网络对绝对振动和相对振动进行短期预测的方法。根据不同的操作条件给出了所得结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kratkoročno predviđanje vibracionog ponašanja Fransis turbine nakon višedecenijske eksploatacije
Contemporary approaches in forecasting and preventing accidents, reducing the number and duration of downtimes, detecting and monitoring the failures in the real decades-long operating conditions of units in hydropower plants, are based on vibrodiagnostics. The multidisciplinary character of such approaches is reflected in the identification of certain vibrations in the hydro-aggregates, the application of various vibrodiagnostic methods, the quality assessment of measured data, as well as analysis and prediction based on artificial intelligence. The paper presents one of the possible approaches to solving the complex problem of predicting the behavior of a hydraulic turbine that has been in operation for more than half a century. An appropriate algorithm using artificial neural networks has been developed for short - term prediction of absolute and relative vibrations. The obtained results are presented depending on various operating conditions.
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