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A NEW SENSOR DIAGNOSTIC TECHNIQUE APPLIED TO A MICRO GAS TURBINE RIG

机译:一种适用于微型燃气轮机的传感器诊断新技术

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This paper describes the development and testing of a new algorithm to identify faulty sensors, based on a statistical model using quantitative statistical process history. Two different mathematical models were used and the results were analyzed to highlight the impact of model approximation and random error. Furthermore, a case study was developed based on a real micro gas turbine facility, located at the University of Genoa. The diagnostic sensor algorithm aims at early detection of measurement errors such as drift, bias, and accuracy degradation (increase of noise). The process description is assured by a database containing the measurements selected under steady state condition and without faults during the operating life of the plant. Using an invertible statistical model and a combinatorial approach, the algorithm is able to identify sensor fault. This algorithm could be applied to plants in which historical data are available and quasi steady state conditions are common (e.g. Nuclear, Coal Fired, Combined Cycle).
机译:本文基于使用定量统计过程历史的统计模型,介绍了一种用于识别故障传感器的新算法的开发和测试。使用了两种不同的数学模型,并对结果进行了分析,以突出模型逼近和随机误差的影响。此外,基于位于热那亚大学的实际微型燃气轮机设施进行了案例研究。诊断传感器算法旨在及早发现测量误差,例如漂移,偏差和精度下降(噪声增加)。通过一个数据库来确保过程描述,该数据库包含在稳态条件下选择的测量值,并且在设备的使用寿命期间不会出现故障。使用可逆统计模型和组合方法,该算法能够识别传感器故障。该算法可以应用于具有历史数据且准稳态条件很常见的工厂(例如核电厂,燃煤电厂,联合循环电厂)。

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