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Optimum Operating Conditions For A Water Purification Process Integrated To A Heat Transformer With Energy Recycling Using Neural Network Inverse

机译:神经网络逆向与能量回收的热转换器集成的净水工艺的最佳运行条件

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Artificial neural network inverse (ANNi) is applied to calculate the optimal operating conditions on the coefficient of performance (COP) for a water purification process integrated to an absorption heat transformer with energy recycling. An artificial neural network (ANN) model is developed to predict the COP which was increased with energy recycling. This ANN model takes into account the input and output temperatures for each one of the four components (absorber, generator, evaporator, and condenser), as well as two pressures and LiBr + H_2O concentrations. For the network, a feedforward with one hidden layer, a Levenberg-Marquardt learning algorithm, a hyperbolic tangent sigmoid transfer function and a linear transfer function were used. The best fitting training data set was obtained with three neurons in the hidden layer. On the validation data set, simulations and experimental data test were in good agreement (R > 0.99). This ANN model can be used to predict the COP when the input variables (operating conditions) are well known. However, to control the COP in the system, we developed a strategy to estimate the optimal input variables when a COP is required from ANNi. An optimization method (the Nelder-Mead simplex method) is used to fit the unknown input variable resulted from the ANNi. This methodology can be applied to control on-line the performance of the system.
机译:人工神经网络逆运算(ANNi)用于计算性能系数(COP)的最佳运行条件,用于将水净化过程集成到具有能量回收的吸收式热转换器中。开发了人工神经网络(ANN)模型来预测随能量回收而增加的COP。该ANN模型考虑了四个组件(吸收器,发生器,蒸发器和冷凝器)中每个组件的输入和输出温度,以及两个压力和LiBr + H_2O浓度。对于网络,使用了具有一个隐藏层的前馈,Levenberg-Marquardt学习算法,双曲正切S型传递函数和线性传递函数。在隐藏层中使用三个神经元获得了最佳拟合训练数据集。在验证数据集上,模拟和实验数据测试吻合良好(R> 0.99)。当输入变量(运行条件)众所周知时,可以使用该ANN模型来预测COP。但是,为了控制系统中的COP,我们开发了一种策略,可以在需要ANNi的COP时估算最佳输入变量。优化方法(Nelder-Mead单纯形法)用于拟合由ANNi导致的未知输入变量。该方法可以应用于在线控制系统性能。

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