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A novel nonlinear virtual sample generation approach integrating extreme learning machine with noise injection for enhancing energy modeling and analysis on small data: Application to petrochemical industries

机译:一种新的非线性虚拟样本生成方法,将极限学习机与噪声注入相集成,以增强小数据的能量建模和分析:在石油化工行业中的应用

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Building a robust and accurate energy analysis model is considered as an important issue in the field of petrochemical industries. Under the circumstance of small samples, the accuracy of the energy analysis model is unacceptable. In order to solve this problem, a novel noise injection integrated with extreme learning machine based nonlinear virtual sample generation method is proposed. Through injecting noise in the output matrix of the hidden layer of ELM, a virtual information matrix that is different the original one generated using the original small dataset can be obtained. Then the newly generated information matrix is adopted to produce good-quality virtual samples for supplement knowledge for small samples. To authenticate the effectiveness of the proposed method, a standard trigonometric function is first selected; and then the proposed method is developed as an energy analysis model for an ethylene production process. Simulation results indicate that good virtual samples can be generated using the proposed method, and the accuracy of the energy analysis model is much improved with the aid of the newly generated virtual samples. The proposed method will effectively help production departments of petrochemical industries set more suitable targets of energy consumption and make better use of available resources.
机译:建立强大而准确的能源分析模型被认为是石化工业领域的重要问题。在小样本的情况下,能量分析模型的准确性是不可接受的。为了解决这个问题,提出了一种基于极限学习机的非线性虚拟样本生成方法。通过将噪声注入ELM的隐藏层的输出矩阵中,可以获得与使用原始小型数据集生成的原始虚拟信息矩阵不同的虚拟信息矩阵。然后,采用新生成的信息矩阵来生成高质量的虚拟样本,以补充小样本的知识。为了验证所提出方法的有效性,首先选择了标准三角函数;然后将提出的方法开发为乙烯生产过程的能量分析模型。仿真结果表明,所提出的方法可以生成良好的虚拟样本,借助新生成的虚拟样本可以大大提高能量分析模型的准确性。所提出的方法将有效地帮助石化行业的生产部门制定更合适的能耗目标,并更好地利用可用资源。

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