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A sensor fault detection method of nonlinear system and its application based on robust input-training network

机译:基于鲁棒输入训练网络的非线性系统传感器故障检测方法及其应用

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A sensor fault detection method of nonlinear system based on robust input-training network was proposed. The objective function with parameters restriction term was used in the training process for avoiding the weights adjusting excessively and meanwhile the influence factors were introduced into the objective function in the testing process for the purpose of inhibiting the influence of failure data in the network calculation, which avoided the residual contaminations and increased the accuracy of sensor fault detection and data reconstruction. The fault detection process was presented and the effectiveness analysis proved the feasibility of the model in dealing with nonlinear problems. A case study with single-point fault and multi-point fault test was conducted to detect 20 points from the thermodynamic system in a 300MW unit. The simulation results of different methods showed that the RITN model in this paper can detect fault points more accurately and reconstruct the true values, improving the anti-interference ability and verifying the accuracy and reliability of the model.
机译:提出了一种基于鲁棒输入训练网络的非线性系统的传感器故障检测方法。参数限制项的目标函数用于避免过度调整的重量,同时将影响因素引入测试过程中的目标函数,以抑制网络计算中的失效数据的影响,这避免了残余污染,提高了传感器故障检测和数据重建的准确性。出现故障检测过程,有效性分析证明了在处理非线性问题时模型的可行性。进行单点故障和多点故障测试的案例研究,以检测300MW单元中的热力学系统20点。不同方法的仿真结果表明,本文中的RITN模型可以更准确地检测故障点,并重建真实值,提高抗干扰能力并验证模型的准确性和可靠性。

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