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Self-Calibration Algorithm for a Pressure Sensor with a Real-Time Approach Based on an Artificial Neural Network

机译:基于人工神经网络的实时压力传感器自校准算法

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摘要

This paper presents a novel approach to predicting self-calibration in a pressure sensor using a proposed Levenberg Marquardt Back Propagation Artificial Neural Network (LMBP-ANN) model. The self-calibration algorithm should be able to fix major problems in the pressure sensor such as hysteresis, variation in gain and lack of linearity with high accuracy. The traditional calibration process for this kind of sensor is a time-consuming task because it is usually done through manual and repetitive identification. Furthermore, a traditional computational method is inadequate for solving the problem since it is extremely difficult to resolve the mathematical formula among multiple confounding pressure variables. Accordingly, this paper describes a new self-calibration methodology for nonlinear pressure sensors based on an LMBP-ANN model. The proposed method was achieved using a collected dataset from pressure sensors in real time. The load cell will be used as a reference for measuring the applied force. The proposed method was validated by comparing the output pressure of the trained network with the experimental target pressure (reference). This paper also shows that the proposed model exhibited a remarkable performance than traditional methods with a max mean square error of 0.17325 and an R-value over 0.99 for the total response of training, testing and validation. To verify the proposed model’s capability to build a self-calibration algorithm, the model was tested using an untrained input data set. As a result, the proposed LMBP-ANN model for self-calibration purposes is able to successfully predict the desired pressure over time, even the uncertain behaviour of the pressure sensors due to its material creep. This means that the proposed model overcomes the problems of hysteresis, variation in gain and lack of linearity over time. In return, this can be used to enhance the durability of the grasping mechanism, leading to a more robust and secure grasp for paralyzed hands. Furthermore, the exposed analysis approach in this paper can be a useful methodology for the user to evaluate the performance of any measurement system in a real-time environment.
机译:本文提出了一种新的方法,使用提出的Levenberg Marquardt反向传播人工神经网络(LMBP-ANN)模型预测压力传感器中的自校准。自校准算法应该能够高精度地解决压力传感器中的主要问题,例如磁滞,增益变化和缺乏线性。这种传感器的传统校准过程非常耗时,因为它通常是通过手动和重复的识别来完成的。此外,传统的计算方法不足以解决该问题,因为在多个混杂压力变量之间求解数学公式极其困难。因此,本文描述了一种基于LMBP-ANN模型的新型非线性压力传感器自校准方法。所提出的方法是使用从压力传感器实时收集的数据集实现的。称重传感器将用作测量施加力的参考。通过将训练网络的输出压力与实验目标压力(参考)进行比较,验证了该方法的有效性。本文还表明,所提出的模型表现出比传统方法更出色的性能,最大均方误差为0.17325,R值超过0.99,代表训练,测试和验证的总响应。为了验证建议的模型建立自校准算法的能力,使用未经训练的输入数据集对模型进行了测试。结果,所提出的用于自校准的LMBP-ANN模型能够成功预测随时间变化的所需压力,即使由于材料蠕变而导致压力传感器的不确定行为也是如此。这意味着所提出的模型克服了滞后,增益变化以及随时间推移缺乏线性的问题。作为回报,这可以用来增强抓握机构的耐用性,从而为瘫痪的手提供更牢固和牢固的抓握。此外,本文中的暴露分析方法可以成为用户评估实时环境中任何测量系统性能的有用方法。

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