首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >A Unique Variable Selection Approach in Fuzzy Modeling to Predict Biogas Production in Upflow Anaerobic Sludge Blanket Reactor (UASBR) Treating Distillery Wastewater
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A Unique Variable Selection Approach in Fuzzy Modeling to Predict Biogas Production in Upflow Anaerobic Sludge Blanket Reactor (UASBR) Treating Distillery Wastewater

机译:模糊建模中的一种独特的可变选择方法,以预测仿血管污泥毯反应器(UASBR)治疗酿酒废水的沼气生产

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The upflow anaerobic sludge blanket reactor is known to carry out a complex high-rate anaerobic process used to treat distillery wastewater and is met with many conflicts because of continuous fluctuations in quantity and quality of wastewater, and therefore, it incorporates a lot of uncertainties in operating, controlling and measuring different parameters. In this paper, a multiple-input and single-output fuzzy knowledge-based model was developed to predict biogas production in realscale upflow anaerobic sludge blanket reactor treating distillery wastewater incorporating seven input variables such as pH (effluent), COD load, COD reduction, temperature, alkalinity-to-acidity ratio, pH (influent) and spent flow rate. Trapezoidal and triangular membership functions were classified to represent the fuzzy sets, and a Mamdani type of fuzzy inference system was used in Matlab fuzzy toolbox. A total of 270 IF–THEN rules have been generated in the fuzzy rule editor using a knowledge-based system. Furthermore, an innovative sequential variable selection approach has been proposed to recognize the most significant parameters in the fuzzy model to predict biogas production which makes the model more practical, manageable and efficient. As a result of the sequential variable selection approach, a combination of five variables such as temperature, COD reduction, COD load, pH(I) and alkalinity-to-acidity ratio has been chosen as the optimal set of variables. The results of the root mean square error and coefficient of determination clearly indicated the better predictive ability of the fuzzy model with the five most important input variables obtained from the sequential variable selection approach than the one with all seven variables.
机译:已知上流厌氧污泥橡皮布反应器进行复杂的高速厌氧工艺,用于治疗酿酒废水,并且由于废水的数量和质量的持续波动而持续存在许多冲突,因此,它包含了很多不确定性操作,控制和测量不同参数。在本文中,开发了一种多输入和单输出模糊知识的模型,以预测RealScale溢出厌氧污泥橡皮布反应器处理酿酒废水的沼气生产,其掺入七种输入变量,例如pH(流出物),COD负荷,COD鳕鱼,温度,碱度与酸度比,pH(流入)和流量流速。分类为代表模糊组的梯形和三角形员工函数,并在Matlab模糊工具箱中使用Mamdani类型的模糊推理系统。使用基于知识的系统在模糊规则编辑器中生成了270个IF-DEN-DEL规则。此外,已经提出了一种创新的顺序变量选择方法来识别模糊模型中最重要的参数,以预测沼气生产,这使得模型更加实用,可管理和高效。作为顺序可变选择方法的结果,已经选择了五种变量的组合,例如温度,COD,COD负荷,pH(i)和碱性与酸度比作为最佳变量集。根均方误差和确定系数的结果清楚地表明了模糊模型与从顺序变量选择方法获得的五个最重要的输入变量的预测能力比所有七个变量的五个变量。

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