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A NEW ALGORITHM FOR SCHEDULING CONDITION-BASED MAINTENANCE OF GAS TURBINES

机译:调度基于条件的燃气轮机维护的新算法

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In developed electricity markets, the deregulation boosted competition among companies participating in the electricity market. Therefore, the enhanced reliability and availability of gas turbine systems is an industry obligation. Not only providing the available power with minimum operation and maintenance costs, but also guaranteeing high efficiency are additional requisites and efficiency loss of the power plants leads to a loss of money for the electricity generation companies. Multivariate Adaptive Regression Spline (MARS) is a modern methodology of statistical learning, data mining and estimation theory that is significant in both regression and classification is a form of flexible non-parametric regression analysis capable of modeling complex data. In this study, single shaft, 6MW class industrial gas turbines located at various sites have been monitored. The performance monitoring of a gas turbine consisted of hourly measurements of various input variables over an extended period of time. Using such measurements, predictive models for gas turbine heat rate and the gas turbine axial compressor discharge pressure values have been generated. The measured values have been compared with the values obtained as a result of the MARS models. The MARS-based models are obtained with the combination of gas turbine performance input and target variables and the complementary meteorological data. The results are presented, discussed, and conclusions are drawn for modern energy and cost efficient gas turbine and power plant maintenance management as the outcomes of this study.
机译:在发达的电力市场中,放松管制促进了参与电力市场的公司之间的竞争。因此,提高燃气涡轮系统的可靠性和可用性是工业上的义务。不仅需要以最低的运行和维护成本提供可用功率,而且要保证高效率是另外的要求,而发电厂的效率损失会给发电公司造成金钱损失。多元自适应回归样条(MARS)是一种统计学习,数据挖掘和估计理论的现代方法,对回归和分类均具有重要意义,是一种能够对复杂数据进行建模的灵活的非参数回归分析形式。在这项研究中,对位于不同地点的单轴6MW级工业燃气轮机进行了监控。燃气轮机的性能监测包括长时间内各种输入变量的每小时测量。使用这样的测量,已经生成了燃气轮机热率和燃气轮机轴向压缩机排气压力值的预测模型。将测量值与通过MARS模型获得的值进行了比较。基于MARS的模型是通过结合燃气轮机性能输入和目标变量以及互补的气象数据获得的。作为研究的结果,对结果进行了介绍,讨论并得出了有关现代能源和具有成本效益的燃气轮机和电厂维护管理的结论。

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