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A Data Reconciliation Approach for Pulp and Paper Simulations: An Illustrative Example

机译:纸浆和纸浆模拟的数据协调方法:一个示例

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Measurement data from the process are sometimes numerous, redundant and unreliable. As a consequence, it is generally impossible to come up with a mathematically sound mass-energy balance using such measured data. On the other hand, a simulation of the same process, which uses first principle mass-energy equations provides values that are by definition balanced values, but are of course different from the measurements on the same variables. Since a simulation is always only an approximation of the real process, and since measurements are always only an approximation of the underlying balanced values, an important question that arises is therefore: how can one utilize measured values to develop a reliable and representative simulation? The answer to this question is the foundation for the important topic called data reconciliation. In this paper, we present a simple data reconciliation strategy that is based on a simplex minimization of the sum of weighted normalized absolute errors between measured and simulated variables, hence yielding reconciled values. This optimization is performed within a commercial simulator which task is to compute balanced values that are as close as possible to the unbalanced measurements. The weighting aspect enables the user to provide levels of confidence between various measurements, i.e. the user can specify that some measurements are likely to be more reliable than others. As such, for the same process, different sets of reconciled data can be found according to the weights assigned to each measurement. We will present example simulations in which the proposed data reconciliation strategy has been implemented.
机译:来自过程的测量数据有时很多,冗余且不可靠。结果,通常不可能使用这样的测量数据来得出数学上合理的质量-能量平衡。另一方面,使用第一原理质量能方程式对同一过程进行的仿真提供的值从定义上来说是平衡值,但当然与在相同变量上的测量值不同。由于模拟始终仅是实际过程的近似值,而测量始终仅是基本平衡值的近似值,因此出现一个重要问题:如何利用测量值来开发可靠且具有代表性的模拟?该问题的答案是称为数据协调的重要主题的基础。在本文中,我们提出了一种简单的数据对帐策略,该策略基于对测量变量和模拟变量之间的加权归一化绝对误差之和进行单纯形最小化,从而得出对帐值。这种优化是在商业模拟器中执行的,其任务是计算与不平衡测量值尽可能接近的平衡值。加权方面使用户能够提供各种测量之间的置信度,即用户可以指定某些测量可能比其他测量更可靠。这样,对于同一过程,可以根据分配给每个测量的权重找到不同的对帐数据集。我们将提供示例仿真,其中已实现了所建议的数据协调策略。

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