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文章摘要
极限学习机在电容层析成像中的应用
Application of Extreme Learning Machine in Electrical Capacitance Tomography
Received:January 11, 2019  Revised:January 11, 2019
DOI:10.19753/j.issn1001-1390.2020.09.023
中文关键词: 多相流检测  电容层析成像  图像重建  机器学习  极限学习机
英文关键词: multiphase  flow detection, electrical  capacitance tomography (ECT), image  reconstruction, machine  learning, extreme  learning machine (ELM)
基金项目:
Author NameAffiliationE-mail
Zhang Lifeng* North China Electric Power University lifeng.zhang@ncepu.edu.cn 
Zhu Yanfeng North China Electric Power University 18435132577@163.com 
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中文摘要:
      极限学习机(ELM)是一种结构简单、使用方便,且有效可行的单隐含层前馈神经网络算法。本文研究基于ELM的电容层析成像(ECT)图像重建方法,首先,为保证样本的代表性,随机生成各类训练样本模型,包括:单个物体、两个物体、三个物体、环状及层状分布;其次,对训练样本及测试样本模型的仿真电容值及其灰度值进行归一化处理,采用极限学习机进行训练及测试;最后,给出了仿真结果及分析,探讨了ELM算法的优缺点。结果表明:与LBP算法及Landweber迭代算法相比,基于ELM的ECT图像重建算法,具有优越的泛化能力和学习速度,且成像精度得到较大提高。
英文摘要:
      The Extreme Learning Machine (ELM) is a simple hidden layer feedforward neural network algorithm that is simple in structure, easy to use, and effective. In this paper, ELM-based capacitance tomography (ECT) image reconstruction methods are studied. Firstly, in order to ensure the representativeness of samples, various training sample models are randomly generated, including: single object, two objects, three objects, ring and layer. Secondly, the simulated capacitance value and its gray value of the training sample and the test sample model are normalized, and the ultimate learning machine is used for training and testing. Finally, the simulation results and analysis are given, and the ELM algorithm is discussed. The advantages and disadvantages show that compared with the LBP algorithm and the Landweber iterative algorithm, the ELM based ECT image reconstruction algorithm has superior generalization ability and learning speed, and the imaging accuracy is greatly improved.
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