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Sensors selection for gas mixtures analysis systems

机译:气体混合物分析系统的传感器选择

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The paper addresses the problem of sensors selection providing effective operation of the sensor system e.g. for the multi-component gas mixtures analysis. The neural network sensitivity analysis approach to the problem was investigated. In the initial phase several neural network structures were created using the experimental data. In further steps the sensitivities of the neural network outputs for the inputs were calculated using derivative calculus. Eventually the least significant inputs of the neural networks were found, pointing to the redundant sensor in the experimental setup. The sensor was removed and the whole cycle repeated leading to further reductions in the sensor array. It is shown that the performance of the system with reduced array is similar or better than the original one. Sensitivity method, derivating from the neural networks theory may be easily adapted to other fields where the problem of distinguishing between necessary and redundant information occurs.
机译:该论文解决了传感器选择的问题,该选择提供了传感器系统的有效操作,例如。用于多组分气体混合物分析。研究了该问题的神经网络敏感性分析方法。在初始阶段,使用实验数据创建了多个神经网络结构。在进一步的步骤中,使用导数演算来计算神经网络输出对输入的敏感度。最终,找到了神经网络的最低​​有效输入,指向实验设置中的冗余传感器。移除传感器,并重复整个循环,以进一步减少传感器阵列。结果表明,阵列减少的系统的性能与原始系统相似或更好。从神经网络理论派生出来的敏感度方法可以很容易地适用于发生区分必要信息和冗余信息的问题的其他领域。

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