Vahedi Torshizi Mohammad, Azadbakht Mohsen, Kashaninejad Mahdi
Department of Bio-System Mechanical Engineering Gorgan University of Agricultural Sciences and Natural Resources Gorgan Iran.
Department of Food Science and Technology Gorgan University of Agricultural Sciences and Natural Resources Gorgan Iran.
Food Sci Nutr. 2020 Jul 11;8(8):4432-4445. doi: 10.1002/fsn3.1741. eCollection 2020 Aug.
The nonmodern statistical methods are often unusable for modeling complex and nonlinear calculations. Therefore, the present research modeled and investigated the energy and exergy of the ohmic heating process using an artificial neural network and response surface method (RSM). The radial basis function (RBF) and the multi-layer perceptron (MLP) networks were used for modeling using sigmoid, linear, and hyperbolic tangent activation functions. The input consisted of voltage gradient; weight loss percentage, duration ohmic, Input flow, Power consumption, electrical conductivity and system performance coefficient and the output included the energy efficiency, exergy efficiency, exergy loss, and improvement potential. The response surface method was also used to predict the data. According to the result, the best prediction amount for energy and exergy efficiencies, exergy loss and improvement potential were in RBF network by sigmoid activation function and after this network, RSM had the best amount for energy efficiency, Also for exergy efficiencies, exergy loss and improvement potential obtained acceptable results in MLP network by a linear activation function. The worst amount was at MLP network by tangent hyperbolic. In general, the neural network can have more ability than the response surface method.
非现代统计方法通常无法用于对复杂的非线性计算进行建模。因此,本研究使用人工神经网络和响应面法(RSM)对欧姆加热过程的能量和㶲进行了建模和研究。径向基函数(RBF)和多层感知器(MLP)网络用于使用Sigmoid、线性和双曲正切激活函数进行建模。输入包括电压梯度、失重百分比、欧姆持续时间、输入流量、功耗、电导率和系统性能系数,输出包括能量效率、㶲效率、㶲损失和改进潜力。响应面法也用于预测数据。结果表明,对于能量效率、㶲效率、㶲损失和改进潜力,最佳预测值出现在使用Sigmoid激活函数的RBF网络中,在此网络之后,RSM对于能量效率的预测值最佳。对于㶲效率、㶲损失和改进潜力,使用线性激活函数的MLP网络也得到了可接受的结果。最差的结果出现在使用双曲正切的MLP网络中。总体而言,神经网络比响应面法具有更强的能力。