Gas Turbine Fault Classification Based on Machine Learning Supervised Techniques

Nurlan Batayev
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引用次数: 7

Abstract

Nowadays Machinery Diagnostic becomes a major part for many industrial applications. It allows to predict and prevent of breakages. An analysis of the trends in the development of power machines show that the most advanced installations can be created using gas turbine technologies. Quite justified, many energy specialists consider the XXI century - the century of gas turbine technologies. It is very important to prevent gas turbine failure. In this paper investigated machine learning classification techniques with further implementation for fault detection in gas turbine running data trends. Investigation was done for real gas compression station running parameters.
基于机器学习监督技术的燃气轮机故障分类
目前,机械诊断已成为许多工业应用的重要组成部分。它允许预测和防止破损。对动力机器发展趋势的分析表明,使用燃气轮机技术可以创建最先进的装置。许多能源专家认为21世纪是燃气轮机技术的世纪,这是有道理的。防止燃气轮机故障是非常重要的。本文研究了机器学习分类技术在燃气轮机运行数据趋势故障检测中的进一步实现。对实际气体压缩站的运行参数进行了研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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