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Online measurement of alkalinity in anaerobic co-digestion using linear regression method

机译:线性回归法在线测量厌氧消化中的碱度

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Alkalinity is a reliable indicator of process stability in anaerobic digestion system. Total alkalinity (TA) and partial alkalinity (PA) are usually monitored offline as indicators for the status of anaerobic digestion process. In order to online monitor TA and PA, the linear regression method was used as estimator to predict alkalinity via software sensor method. Parameters, namely, pH, oxidation and reduction potential (ORP), and electrical conductivity (EC), were used as input variables. EC was the most significant parameter with TA and PA. Multiple linear regression (MLR) models and simple linear regression models with EC were constructed to predict TA and PA in anaerobic co-digestion system. On the basis of the evaluation of prediction accuracy, the applications of linear regression models were better for monitoring PA than TA. MLR models provided higher accuracy for alkalinity prediction than simple linear regression models. The two MLR models based on single-phase anaerobic digestion system were also feasible to predict TA in anaerobic co-digestion systems. However, the accuracy of these models should be improved by calibrating for broad applications of linear regression method in online alkalinity measurement. Keywords: anaerobic digestion, alkalinity, online measurement, model, linear regression DOI: 10.3965/j.ijabe.20171001.2701 Citation: Bai X, Li Z F, Wang X M, He X, Cheng S K, Bai X F, et al. Online measurement of alkalinity in anaerobic co-digestion using linear regression method. Int J Agric & Biol Eng, 2017; 10(1): 176–183.
机译:碱度是厌氧消化系统过程稳定性的可靠指标。总碱度(TA)和部分碱度(PA)通常作为脱氧消化过程状态的指标进行离线监测。为了在线监测TA和PA,使用线性回归方法作为估计量,通过软件传感器方法预测碱度。 pH,氧化还原电位(ORP)和电导率(EC)等参数用作输入变量。 EC是TA和PA的最重要参数。构造了带有EC的多元线性回归(MLR)模型和简单线性回归模型,以预测厌氧消化系统中的TA和PA。在评估预测准确性的基础上,线性回归模型的应用比PA更好地用于监视PA。 MLR模型比简单的线性回归模型提供了更高的碱度预测精度。两种基于单相厌氧消化系统的MLR模型也可用于预测厌氧共消化系统中的TA。但是,应通过校准线性回归方法在在线碱度测量中的广泛应用来提高这些模型的准确性。关键字:厌氧消化,碱度,在线测量,模型,线性回归DOI:10.3965 / j.ijabe.20171001.2701引用:Bai X,Li ZF,Wang X M,He X,Cheng S K,Bai X F等。使用线性回归方法在线测量厌氧消化中的碱度。国际农业与生物工程杂志,2017; 10(1):176-183。

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