基于混沌观测器的恶劣环境下的液位估计

Vighnesh Shenoy, Santhosh Krishnan Vekata
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引用次数: 1

摘要

对液位测量需求的不断增加已成为设计精确可靠的控制系统的关键因素。本研究利用压力传感器计算储罐内的液位,以了解入口液体的温度、密度和流速等参数的变化。由于输入和测量中的随机性,对其变量的长期预测是必不可少的。因此,对测量和过程中存在不确定性的非线性动态系统进行状态估计的观测器设计变得十分重要。这项工作为具有多个输入和单个可测量输出的系统提供了一个反馈观测器解决方案。建立了一个全状态观测器模型来估计系统的状态,将传感器放置在距离管道输入点(液体以不同密度和温度流过该输入点)的特定位置。利用可观测性特性,采用多种方法设计了Luenberger全状态观测器,并利用MATLAB和SIMULINK对系统状态估计进行了验证。为了吸收过程噪声和测量噪声,在系统中集成了卡尔曼估计器。混沌系统易受初始条件、参数变化的影响,是复杂的动态系统。然而,通过特定仪表提供一致的精确测量需要耗时的计算,可以通过使用优化器的机器学习方法来减少计算。将所得结果与人工神经网络预测模型进行了比较,并通过实验装置的读数进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Liquid Level in a Harsh Environment Using Chaotic Observer
The increased demand for liquid level measurement has been a key factor in designing accurate and reliable control systems. Here, a study was carried out to calculate the liquid level in a tank using a pressure sensor for changes in inlet liquid parameters like temperature, density and velocity. Prediction of their variables for the long term is essential due to the randomness present in the input and measurement. Hence, observer design for state estimation of a non-linear dynamic system with uncertainties in the measurement and process becomes important. This work provides a feedback observer solution for a system with multiple inputs and single measurable output. A full state observer model is developed to estimate a system’s states with a sensor placed at a definite position from the pipe’s input point through which the liquid flows at different densities and temperatures. Using the observability properties, Luenberger full state observer is designed by various methods, verified using MATLAB and SIMULINK for the system state estimation. To incorporate process noise and measurement noise, the Kalman estimator is integrated with the system. Chaotic systems are susceptible to initial conditions, variations in parameters and are complex dynamic systems. However, providing consistently precise measurements through particular meters necessitates time-consuming computations that can be reduced by employing machine learning approaches that make use of optimizers. The results obtained are compared with the prediction models obtained using Artificial Neural Networks and are validated through the readings obtained from the experimental setup.
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CiteScore
6.30
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