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A New Feature Selection-Aided Observer for Sensor Fault Diagnosis of an Industrial Gas Turbine

机译:工业燃气轮机传感器故障诊断的新特点选择辅助观察者

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摘要

In complex systems, observers play a vital role in fault diagnosis and performance monitoring. Hence, the accuracy of these observers is very important. In this paper, an alternative solution to improve the observer accuracy is investigated. For this purpose, a feature selection-aided observer is proposed. This observer utilizes a feature-selection scheme that augments the sensor data with its time-domain features to observe the system. A decision tree algorithm selects the features needed for the observer, which act as soft sensors. In this scheme, a sliding mode observer is integrated with the decision tree method to select features for attaining more information from sensors (extracting two outputs from each sensor) which causes to increase the number of the observer equations. To implement this method, an augmented model for providing the statistical information is defined. To assess the performance of the introduced algorithm, an industrial twin shaft gas turbine is considered. In this model, the big data of the SGT 600 gas turbine is broken down into numerous data sets with a predefined sample time, then the subspace algorithm (N4SID) is utilized to obtain a state-space model by mean and variance of the inputs and outputs. Moreover, the algorithm is used to detect and diagnose sensors fault with a novel decision logic. Simulation results illustrate that the proposed observer is accurate and reliable for monitoring performance and diagnosing faults and failures.
机译:在复杂的系统中,观察者在故障诊断和性能监测中发挥着至关重要的作用。因此,这些观察者的准确性非常重要。本文研究了改善观察者精度的替代解决方案。为此,提出了一个特征选择辅助观察者。该观察者利用了一个特征选择方案,该方案通过其时域特征增强传感器数据以观察系统。决策树算法选择了观察者所需的功能,它充当软传感器。在该方案中,滑动模式观察者与决策树方法集成,以选择来自传感器的更多信息的特征(从每个传感器提取两个输出),这导致增加观察者方程的数量。为了实现该方法,定义了用于提供统计信息的增强模型。为了评估引入的算法的性能,考虑了工业双轴燃气轮机。在该模型中,SGT 600燃气轮机的大数据被分解为具有预定采样时间的许多数据集,然后使用子空间算法(N4SID)来通过输入的均值和方差获得状态空间模型和输出。此外,该算法用于检测和诊断具有新颖决策逻辑的传感器故障。仿真结果表明,拟议的观察者准确可靠,可监控性能和诊断故障和故障。

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