Department of Electrical and Electronics Engineering, P.A. College of Engineering and Technology, Pollachi, India.
Department of Electronics and Communication Engineering, P.A. College of Engineering and Technology, Pollachi, India.
Sci Rep. 2023 May 26;13(1):8565. doi: 10.1038/s41598-023-34764-x.
Renewable sources like biofuels have gained significant attention to meet the rising demands of energy supply. Biofuels find useful in several domains of energy generation such as electricity, power, or transportation. Due to the environmental benefits of biofuel, it has gained significant attention in the automotive fuel market. Since the handiness of biofuels become essential, effective models are required to handle and predict the biofuel production in realtime. Deep learning techniques have become a significant technique to model and optimize bioprocesses. In this view, this study designs a new optimal Elman Recurrent Neural Network (OERNN) based prediction model for biofuel prediction, called OERNN-BPP. The OERNN-BPP technique pre-processes the raw data by the use of empirical mode decomposition and fine to coarse reconstruction model. In addition, ERNN model is applied to predict the productivity of biofuel. In order to improve the predictive performance of the ERNN model, a hyperparameter optimization process takes place using political optimizer (PO). The PO is used to optimally select the hyper parameters of the ERNN such as learning rate, batch size, momentum, and weight decay. On the benchmark dataset, a sizable number of simulations are run, and the outcomes are examined from several angles. The simulation results demonstrated the suggested model's advantage over more current methods for estimating the output of biofuels.
可再生能源,如生物燃料,已受到广泛关注,以满足不断增长的能源供应需求。生物燃料在发电、电力或运输等多个能源领域都有应用。由于生物燃料具有环境效益,它在汽车燃料市场上引起了广泛关注。由于生物燃料的便携性变得至关重要,因此需要有效的模型来实时处理和预测生物燃料的生产。深度学习技术已成为建模和优化生物过程的重要技术。在这种情况下,本研究设计了一种新的基于最优 Elman 递归神经网络(OERNN)的生物燃料预测模型,称为 OERNN-BPP。OERNN-BPP 技术通过使用经验模态分解和精细到粗糙的重建模型对原始数据进行预处理。此外,使用 Elman 递归神经网络(ERNN)模型预测生物燃料的生产力。为了提高 ERNN 模型的预测性能,使用政治优化器(PO)进行超参数优化过程。PO 用于最优选择 ERNN 的超参数,如学习率、批量大小、动量和权重衰减。在基准数据集上进行了大量的模拟,并从多个角度检查了结果。模拟结果表明,该建议模型在估计生物燃料产量方面优于当前更流行的方法。