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Soft computing and signal processing based active fault tolerant control for benchmark process

机译:基于软计算和信号处理的基准过程主动容错控制

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Ideally, when faults happen, the closed-loop system should be capable of maintaining its present operation. This leads to the recently studied area of fault-tolerant control (FTC). This paper addresses soft computing and signal processing based active FTC for benchmark process. Design of FTC has three levels: Level 1 comprises a traditional control loop with sensor and actuator interface and the controller. Level 2 comprises the functions of online fault detection and identification. Level 3 comprises the supervisor functionality. Online fault detection and identification has signal processing module, feature extraction module, feature cluster module and fault decision module. Wavelet analysis has been used for signal processing module. In the feature extraction module, feature vector of the sensor faults has been constructed using wavelet analysis, sliding window, absolute maximum value changing ratio and variance changing ratio as a statistical analysis. For the feature cluster module, the self-organizing map (SOM), which is a subtype of artificial neural network has been applied as a classifier of the feature vector. As a benchmark process three-tank system has been used. Control of the three-tank system is provided by fuzzy logic controller. Faults are applied to three level sensors. Sensor faults represent incorrect reading from the sensors that the system is equipped with. When a particular fault occurs in the system, a suitable control scheme has been selected on-line by supervisor functionality to maintain the closed-loop performance of the system. Active FTC has been achieved by switch mode control using fuzzy logic controller. Simulation results show that benchmark process has maintained acceptable performance with FTC for the sensor faults. As a result, when the system has sensor faults soft computing and signal processing based FTC helps for the best performance of the system.
机译:理想情况下,当发生故障时,闭环系统应能够维持其当前运行。这导致了最近研究的容错控制(FTC)领域。本文针对基准测试解决了基于软计算和信号处理的有源FTC。 FTC的设计分为三个级别:级别1包括具有传感器和执行器接口以及控制器的传统控制回路。级别2包含在线故障检测和识别功能。级别3包含主管功能。在线故障检测与识别具有信号处理模块,特征提取模块,特征集群模块和故障决策模块。小波分析已用于信号处理模块。在特征提取模块中,利用小波分析,滑动窗口,绝对最大值变化率和方差变化率作为统计分析,构造了传感器故障的特征向量。对于特征集群模块,自组织映射(SOM)是人工神经网络的子类型,已被用作特征向量的分类器。作为基准工艺,使用了三罐系统。三缸系统的控制由模糊逻辑控制器提供。故障适用于三级传感器。传感器故障表示从系统配备的传感器读取错误。当系统中发生特定故障时,管理员功能已在线选择了合适的控制方案,以维持系统的闭环性能。通过使用模糊逻辑控制器进行开关模式控制,可以实现有源FTC。仿真结果表明,基准测试过程在FTC方面对于传感器故障保持了可接受的性能。结果,当系统出现传感器故障时,基于FTC的软计算和信号处理有助于实现系统的最佳性能。

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