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A Modified Algorithm for Training and Optimize RBF Neural Networks Applied to Sensor Measurements Validation

机译:一种用于训练和优化RBF神经网络的修改算法,应用于传感器测量验证

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This paper presents the use of a radial basis function artificial neural network to estimate sensor readings exploring the analytical redundancy via auto-association. However, in order to guarantee optimal performance of the network, the training and optimization processes have been modified. In the conventional training algorithm, even if a stop criterion, such as summed squared error, is reached, one or more of the individual performance metrics, including: i) accuracy; ii) robustness; iii) spillover and iv) filtering of the neural network, may not be satisfactory while validating sensor measurements. Essentially, the proposed modification in the training algorithm is based on seeking to ensure that one or more of the metrics are met. This paper describes the proposed algorithm including all of its mathematical foundation. Afterward, a data set of a water injection pump for an oil and gas processing unit was used to train the RBF network using the conventional and the modified algorithm, and the performance of each was evaluated. Furthermore, the AAKR model is applied to the same dataset as a quality reference parameter. Finally, a comparison analysis of the developed models is presented for each of the performance metrics, as well as for overall effectiveness, demonstrating that the main advantage of the proposed approach is to obtain the estimation results equivalent or superior to the AAKR with shorter runtime and the disadvantage of having higher complexity during the model training.
机译:本文介绍了使用径向基函数人工神经网络来估计通过自动关联探索分析冗余的传感器读数。但是,为了保证网络的最佳性能,已经修改了培训和优化过程。在传统的训练算法中,即使达到诸如求和平方误差的停止标准,也是一个或多个单独的性能度量,包括:i)精度; ii)鲁棒性; iii)溢出和iv)神经网络的过滤,在验证传感器测量时可能不会令人满意。本质上讲,训练算法中的建议修改是基于寻求确保满足一个或多个度量。本文介绍了所提出的算法,包括其所有数学基础。之后,用于油气处理单元的注水泵的数据集用于使用传统和修改的算法训练RBF网络,并且评估每个的性能。此外,AAKR模型应用于与质量参考参数相同的数据集。最后,为每个性能指标以及整体有效性提出了开发模型的比较分析,表明所提出的方法的主要优点是获得等同物等同或优于AAKR的估计结果,并且在模型训练期间具有更高复杂性的缺点。

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