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首页> 外文期刊>Desalination: The International Journal on the Science and Technology of Desalting and Water Purification >Data-driven models of steady state and transient operations of spiral-wound RO plant
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Data-driven models of steady state and transient operations of spiral-wound RO plant

机译:螺旋缠绕式反渗透装置稳态和瞬态运行的数据驱动模型

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摘要

The development of data-driven RO plant performance models was demonstrated using the support vector regression model building approach. Models of both steady state and unsteady state plant operation were developed based on a wide range of operational data obtained from a fully automated small spiral-wound RO pilot. Single output variable steady state plant models for flow rates and conductivities of the permeate and retentate streams were of high accuracy, with average absolute relative errors (AARE) of 0.70%-2.46%. Performance of a composite support vector regression (SVR) based model (for both streams) for flow rates and conductivities was of comparable accuracy to the single output variable models (AARE of 0.71%-2.54%).The temporal change in conductivity, as a result of transient system operation (induced by perturbation of either system pressure or flow rate), was described by SVR model, which utilizes a time forecasting approach, with performance level of less than % AARE for forecasting periods of 2 s to 3.5 min. The high level of performance obtained with the present modeling approach suggests that short-term performance forecasting models that are based on plant data, could be useful for advanced RO plant control algorithms, fault tolerant control and process optimization.
机译:使用支持向量回归模型构建方法论证了数据驱动反渗透装置性能模型的开发。稳态和非稳态工厂运行模型都是基于从全自动小型螺旋缠绕反渗透飞行员获得的广泛运行数据而开发的。渗透液和截留液流的流速和电导率的单输出变量稳态设备模型具有很高的精度,平均绝对相对误差(AARE)为0.70%-2.46%。对于流量和电导率,基于复合支持向量回归(SVR)的模型(对于两种流)​​的性能与单个输出变量模型(AARE为0.71%-2.54%)的准确性相当。 SVR模型描述了瞬态系统运行(由系统压力或流速的扰动引起)的结果,该模型使用时间预测方法,在2 s至3.5 min的预测时间内,性能水平低于AARE的%。通过本建模方法获得的高水平性能表明,基于工厂数据的短期性能预测模型可能对高级反渗透工厂控制算法,容错控制和过程优化有用。

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