加工厂用软传感器

Guillermo González
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引用次数: 54

摘要

软传感器通过为传感器提供软件备份,帮助解决传感器不可用带来的问题,从而减少工厂性能损失。同样,使用软传感器来估计没有安装传感器的植物变量可以提高植物性能。软传感器的核心是一个局部工厂模型,允许产生估计的测量来代替缺失的测量。与模型相结合的是信号估计、插值和预测问题。这里考虑的模式是黑箱模型和灰色模型,其中包括现象学知识。同时,对软测量模型和基于模型控制的模型的要求进行了比较。尝试了一种综合各种软测量建模方法的方法。考虑的其他方面包括用于插值和预测采样率过低的测量;控制回路的性能;随着工厂特性的变化,软传感器指示在拆除实际传感器后的一段时间内的性能;确保软传感器在工业环境中的可用性的补充考虑;以及在自动控制回路中使用软传感器的相关问题。本文对关于这一领域的应用和研究与发展的技术文献样本进行了审查,并在一份表格中加以评论和总结。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soft sensors for processing plants
Soft-sensors assist in solving the problem created by the unavailability of a sensor by providing a software backup for it, thus allowing a reduction of losses in plant performance. Similarly, the use of a soft sensor to estimate a plant variable for which no sensor is installed can improve plant performance. The core of a soft-sensor is a partial plant model allowing the generation of a estimated measurement to replace missing measurements. Coupled with the model is a problem of signal estimation, interpolation and prediction. Modes considered here are black box models and gray models which include phenomenological knowledge. Also, comparisons are made concerning the requirements for soft-sensor models and for models used in model based control. An approach to an integrated view of the various soft-sensor modeling methods is attempted. Other aspects considered include use for interpolation and prediction of measurements having a sampling rate which is too low; performance of a control loop; performance of the soft-sensor indication in the period following the removal of the actual sensor, as plant characteristics change; complementary considerations for ensuring the availability of soft-sensors in industrial environments; and problems related to the use of soft-sensors in automatic control loops. A review made of a sample of the technical literature on applications as well as of research and development in this field, is commented in the text and summarized in a table.
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