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Artificial neural network approach for detection and diagnosis of valve stiction

机译:人工神经网络方法用于阀门静摩擦的检测和诊断

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Valve stiction or static friction in control loops is a common problem in modern industrial processes. Several recent studies have tried to understand, reproduce, and detect such issue; however, the actual quantification is still a challenge. Since the valve position (mv) is normally unknown in industrial process, the main challenge is to diagnose stiction knowing only the output signals of the process (pv) and the control signal (op). This paper presents an artificial neural network approach in order to detect and quantify the amount of static friction using only the pv and op information. This study was validated by a simulation process. The results show satisfactory measurements of stiction.
机译:控制回路中的阀静摩擦或静摩擦是现代工业过程中的常见问题。最近的几项研究试图理解,再现和发现这种问题。但是,实际的量化仍然是一个挑战。由于在工业过程中阀门位置(mv)通常是未知的,因此主要的挑战是仅在过程输出信号(pv)和控制信号(op)知道的情况下诊断静摩擦。本文提出了一种人工神经网络方法,以便仅使用pv和op信息来检测和量化静摩擦量。这项研究通过模拟过程得到了验证。结果显示了令人满意的静摩擦测量。

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