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A comparison between the multiple linear regression model and neural networks for biochemical oxygen demand estimations

机译:多元线性回归模型与神经网络用于生化需氧量估算的比较

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The most common test for determining the strength of organic content in wastewaters is the biochemical oxygen demand (BOD). The variables of water quality are temperature, pH value (pH), dissolved oxygen (DO), substance solid (SS), total Kjeldahl nitrogen (TKN), ammonia nitrogen (NH3N), nitrate (NO3), total phosphorous (T-P), and total coliform bacteria (T-coliform). These water quality indices affect biochemical oxygen demand. The main objective of this study was to compare between the predictive ability of the neural network (NN) models and the multiple linear regression (MLR) models to estimate the biochemical oxygen demand on data from 288 canals in Bangkok, Thailand. The data were obtained from the Department of Drainage and Sewerage, Bangkok Metropolitan Administration, during 2002–2008. The results showed that the neural network models gave a higher correlation coefficient (R=0.76) and a lower mean square error (MSE=0.0016) than the corresponding multiple linear regression models.
机译:确定废水中有机物含量的最常见测试是生化需氧量(BOD)。水质变量包括温度,pH值(pH),溶解氧(DO),固体物质(SS),凯氏定氮(TKN),氨氮(NH 3 N),硝酸盐( NO 3 ),总磷(TP)和总大肠菌(T-大肠菌)。这些水质指数会影响生化需氧量。这项研究的主要目的是比较神经网络(NN)模型和多元线性回归(MLR)模型的预测能力,以估算泰国曼谷288条运河的数据中的生化需氧量。数据是从2002-2008年间从曼谷市政府排水与污水处理部门获得的。结果表明,与相应的多元线性回归模型相比,神经网络模型具有更高的相关系数(R = 0.76)和更低的均方差(MSE = 0.0016)。

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