基于混合进化计算和神经网络变体的普通小球藻微藻水分含量预测

Heinrick L. Aquino, Ronnie S. Concepcion, A. Mayol, A. Bandala, A. Culaba, J. Cuello, E. Dadios, A. Ubando, J. G. S. San Juan
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引用次数: 1

摘要

微藻中水分含量是生物燃料脂质含量的重要指标。本文开发了一种可靠的、计算成本效益高的人工神经元组合和一种利用计算智能进行水分含量浓度预测的优化工具。利用83份普通小球藻(Chlorella vulgaris)微藻水分参数因子数据。采用前馈、循环和深度神经网络作为预测模型,分析其MSE和R2值。采用多基因符号回归遗传规划(MSRGP)工具GPTIPSv2建立神经网络的目标函数。该收敛函数是开发遗传算法(GA)优化的递归神经网络模型的主要元素,该模型被认为是神经网络结构中每个隐藏层中神经元的最佳数量。采用Levenberg-Marquardt训练工具,推荐了具有22个神经元层的前馈人工神经网络。该模型的MSE (5.27e−6)和R2(0.9999)均优于其他神经网络模型。因此,这意味着所开发的优化的基于levenberg - marquardt的前馈神经网络是一种有效的水分含量预测器,它以低成本提供了高精度和灵敏度高的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Moisture Content of Chlorella vulgaris Microalgae Using Hybrid Evolutionary Computing and Neural Network Variants for Biofuel Production
Moisture content is an imperative indicator of biofuel lipid content in microalgae. This paper developed a reliable, computationally cost-effective combination of artificial neurons and an optimization tool for moisture content concentration prediction using computational intelligence. A total of 83 data of microalgae var. Chlorella vulgaris moisture content parameter factors were utilized. Using feed-forward, recurrent, and deep neural networks as prediction models, their MSE and R2 values were analyzed. Genetic programming GPTIPSv2, a multigene symbolic regression genetic programming (MSRGP) tool, was used to create objective functions of the ANNs. This convergence function was the main element in developing a genetic algorithm (GA)-optimized recurrent neural network model considered to suggest the optimal quantity of neurons in each of the hidden layers in neural network architecture. The feed-forward artificial neural network with 22 neurons in its layer was recommended using the Levenberg-Marquardt training tool. The MSE (5.27e−6) and R2 (0.9999) results of this model surpassed the other neural networks models. Hence, it implies that the developed optimized Levenberg-Marquardt-based feed-forward neural network is an effective moisture content predictor as it provided highly accurate and sensitive results at a low cost.
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