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Principal component analysis and quantitative image analysis to predict effects of toxics in anaerobic granular sludge

机译:主成分分析和定量图像分析预测厌氧颗粒污泥中毒物的影响

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摘要

Principal component analysis (PCA) was applied to datasets gathering morphological, physiological and reactor performance information, from three toxic shock loads (SL1 - 1.6 mg(detergemt)/L; SL2 - 3.1 mg(detergent)/L; SL3 - 40 Mg-solvent/L) applied in an expanded granular sludge bed (EGSB) reactor. The PCA allowed the visualization of the main effects caused by the toxics, by clustering the samples according to its operational phase, exposure or recovery. The aim was to investigate the variables or group of variables that mostly contribute for the early detection of operational problems. The morphological parameters showed to be sensitive enough to detect the operational problems even before the COD removal efficiency decreased. As observed by the high loadings in the plane defined by the first and second principal components. PCA defined a new latent variable t[1], gathering the most relevant variability in dataset, that showed an immediate variation after the toxics were fed to the reactors. t[1] varied 262%, 254% and 80%, respectively, in SL1, SL2 and SL3. The high loadings/weights of the morphological parameters associated with this new variable express its influence in shock load monitoring and control, and consequently in operational problems recognition.
机译:主成分分析(PCA)已应用于从三个有毒冲击负荷(SL1- 1.6 mg(去污剂)/ L; SL2-3.1 mg(洗涤剂)/ L; SL3-40 Mg-)中收集形态,生理和反应堆性能信息的数据集溶剂/ L)应用于膨胀的颗粒污泥床(EGSB)反应器。通过根据样品的操作阶段,暴露或回收率对样品进行聚类,PCA可以可视化毒物引起的主要影响。目的是研究主要有助于及早发现操作问题的变量或变量组。形态参数显示出足够灵敏的特性,即使在COD去除效率降低之前也能检测到操作问题。如由第一和第二主成分定义的平面中的高载荷所观察到的。 PCA定义了一个新的潜在变量t [1],该变量收集了数据集中最相关的变异性,该变异性显示了有毒物质进入反应器后立即发生变化。在SL1,SL2和SL3中,t [1]分别变化262%,254%和80%。与这个新变量相关的形态参数的高载荷/高权重表明了其在冲击载荷监测和控制以及因此在操作问题识别中的影响。

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