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Gaussian process regression for monitoring and fault detection of wastewater treatment processes

机译:高斯工艺回归用于监测和故障检测废水处理过程

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摘要

Monitoring and fault detection methods are increasingly important to achieve a robust and resource efficient operation of wastewater treatment plants (WWTPs). The purpose of this paper was to evaluate a promising machine learning method, Gaussian process regression (GPR), for WWTP monitoring applications. We evaluated GPR at two WWTP monitoring problems: estimate missing data in a flow rate signal (simulated data), and detect a drift in an ammonium sensor (real data). We showed that GPR with the standard estimation method, maximum likelihood estimation (GPR-MLE), suffered from local optima during estimation of kernel parameters, and did not give satisfactory results in a simulated case study. However, GPR with a state-of-the-art estimation method based on sequential Monte Carlo estimation (GPR-SMC) gave good predictions and did not suffer from local optima. Comparisons with simple standard methods revealed that GPR-SMC performed better than linear interpolation in estimating missing data in a noisy flow rate signal. We conclude that GPR-SMC is both a general and powerful method for monitoring full-scale WWTPs. However, this paper also shows that it does not always pay off to use more sophisticated methods. New methods should be critically compared against simpler methods, which might be good enough for some scenarios.
机译:监测和故障检测方法越来越重要,可以实现废水处理厂(WWTPS)的稳健和资源有效的操作。本文的目的是评估有希望的机器学习方法,高斯过程回归(GPR),用于WWTP监控应用。我们在两个WWTP监测问题中评估了GPR:在流量信号(模拟数据)中估计缺失数据,并检测铵传感器(真实数据)中的漂移。我们表明,GPR具有标准估计方法,最大似然估计(GPR-MLE),在核参数估计期间患者遭到局部OptimA,并且在模拟案例研究中没有给出令人满意的结果。然而,具有基于顺序蒙特卡罗估计(GPR-SMC)的最先进的估计方法的GPR给出了良好的预测,并且没有遭受本地最佳的估计。具有简单标准方法的比较显示,GPR-SMC在估计噪声流量信号中估计缺失数据时比线性插值更好地执行。我们得出结论,GPR-SMC既是监控全规模WWTP的一般和强大的方法。但是,本文还表明它并不总是偿还使用更复杂的方法。新方法应危重与更简单的方法进行比较,这可能足够好,对某些情况已经足够了。

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