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BAYESIAN INFERENCE FOR HIGH CONFIDENCE SIGNAL VALIDATION AND SENSOR CALIBRATION ASSESSMENT

机译:贝叶斯推断用于高置信度信号验证和传感器校准评估

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Online Monitoring (OLM) systems has been investigated for applications in the nuclear industry for the past two decades. These systems offer economic and technological advantages over the currently implemented time based testing methods for sensors and associated instrumentations. The advantages offered not only augment economic viability of current nuclear reactors but will be an inevitable change called for to suit the technologies of the advanced reactors (Gen Irrespective, the acceptance of OLM into the regulator) structure in the U.S. is still hindered by technical and structural clarity on uncertainty quantification used by these systems. A Bayesian inference technique is implemented in the form of a residual model to quantify uncertainty in OLM predictions. The developed system used Gaussian processes to represent the OLM predictions and model inadequacy, the stationary representation of model based uncertainty. In addition, model selection techniques are used in conjunction with numerical methods such as Genetic Algorithm (GA) and Gibb's sampler to add robustness to the estimation model inadequacy, particularly in the presence of drifts and faulted conditions. The prediction model developed herein find applicability in fault detection, obtaining real values of processes after the onset of faults etc. Further development looks into the extension of current method for a multiple output scale implementation.
机译:在过去的二十年中,已经对在线监视(OLM)系统在核工业中的应用进行了研究。这些系统相对于当前实施的基于时间的传感器和相关仪器测试方法具有经济和技术优势。所提供的优势不仅增强了当前核反应堆的经济可行性,而且将成为在美国必须进行调整以适应先进反应堆技术(无论是Gen,无论是将OLM纳入监管机构)的必然变化,但仍受到技术和工艺的阻碍。这些系统使用的不确定性量化的结构清晰。贝叶斯推断技术以残差模型的形式实现,以量化OLM预测中的不确定性。所开发的系统使用高斯过程来表示OLM预测和模型不足,即基于模型的不确定性的平稳表示。此外,模型选择技术还与诸如遗传算法(GA)和吉布(Gibb)的采样器之类的数值方法结合使用,以增强估计模型不足的鲁棒性,尤其是在存在漂移和故障条件的情况下。本文开发的预测模型可用于故障检测,在故障发生后获取过程的真实值等。进一步的发展是针对多输出规模实现的当前方法的扩展。

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