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Grey bootstrap method for data validation and dynamic uncertainty estimation of self-validating multifunctional sensors

机译:灰色自举方法用于自验证多功能传感器的数据验证和动态不确定性估计

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摘要

The accuracy and reliability of multifunctional sensor outputs directly influence the running state and performance of measurement and control systems in chemical processes. Given their importance, self-validating multifunctional sensors are presented to improve the reliability of measurements in operation. A novel strategy based on the grey bootstrap method (GBM) is proposed for the online data validation and dynamic uncertainty estimation of self-validating multifunctional sensors. The data validation algorithm and the working principle based on GBM are applied for multiple faults detection, isolation and recovery (FDIR). The proposed FDIR scheme can simultaneously isolate multiple faults of multifunctional sensors and accomplish failure recovery with high accuracy and good timeliness. Moreover, it has a good performance of discriminating between fault-free signals with sudden changes and undoubted faults. On account of the unknown probability distribution and small sample size, the traditional expression of uncertainty has limitation in dynamic measurements. As a data-driven method, the GBM can evaluate the measurement uncertainty from poor information without prior information about the probability distribution of measur and in real-time. The performance of the proposed strategy is verified by computer simulations and a real experimental system of chemical gas concentration monitoring. Through the comparison of different methods, the results show that the GEM has superiority for the data validation and dynamic uncertainty estimation of self-validating multifunctional sensors. (C) 2015 Elsevier B.V. All rights reserved.
机译:多功能传感器输出的准确性和可靠性直接影响化学过程中测控系统的运行状态和性能。考虑到它们的重要性,提出了可自我验证的多功能传感器,以提高操作中测量的可靠性。提出了一种基于灰色自举法(GBM)的自验证多功能传感器在线数据验证和动态不确定性估计的策略。将基于GBM的数据验证算法和工作原理应用于多故障检测,隔离和恢复(FDIR)。所提出的FDIR方案可以同时隔离多功能传感器的多个故障,并以较高的准确性和及时性完成故障恢复。此外,它具有很好的区分带有突然变化的无故障信号和毫无疑问的故障的性能。由于未知的概率分布和较小的样本量,不确定性的传统表达在动态测量中具有局限性。作为一种数据驱动的方法,GBM可以从不良信息中评估测量不确定度,而无需事先提供有关测量概率分布的实时信息。通过计算机仿真和化学气体浓度监测的真实实验系统,验证了所提出策略的性能。通过对不同方法的比较,结果表明,GEM在自验证多功能传感器的数据验证和动态不确定性估计方面具有优势。 (C)2015 Elsevier B.V.保留所有权利。

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