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基于人工神经网络的改进方法:利用相对影响通过近似分析预测动力煤元素组成

Improved ANN-Based Approach Using Relative Impact for the Prediction of Thermal Coal Elemental Composition Using Proximate Analysis.

作者信息

Jo Jangho, Lee Dae-Gyun, Kim Jongho, Lee Byoung-Hwa, Jeon Chung-Hwan

机构信息

School of Mechanical Engineering, Pusan National University, Busan 46241, Republic of Korea.

Chemical Engineering, University of Newcastle, Callaghan, New South Wales 2308, Australia.

出版信息

ACS Omega. 2022 Aug 16;7(34):29734-29746. doi: 10.1021/acsomega.2c02324. eCollection 2022 Aug 30.

DOI:10.1021/acsomega.2c02324
PMID:36061718
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9434762/
Abstract

The basic properties of coal influence various procedures of power generation, such as the design of power generation plants, estimation of the current condition of boilers, and total efficiency of power plants. The elemental composition is a needed factor in evaluating the process of chemical conversion and predicting the flow of flue gas and the quality of air in coal combustion. In the past, several relationships have been established using ultimate and proximate analyses. This study aims to predict the elemental compositions of 104 thermal coals used for coal-fired power plants in South Korea using an artificial neural network (ANN) that uses proximate analysis values as input parameters. The ANN-based model was optimized with six activation functions and four hidden layers after evaluating various performance indices, including , mean square error (MSE), and epoch, then additional calculations were derived to compare performances from previous research using the mean absolute error (MAE), average absolute error, and average bias error. It was found that the best topology was established using the Levenberg-Marquardt activation function and 10 hidden layers, resulting in the highest value and smallest MSE of all topologies tested. As a result, the relative impact on calculation accuracy was derived from ANN hidden layers to analyze prediction accuracies of carbon, hydrogen, and oxygen compositions. Accuracy was improved over previous results by 4.71-0.91% via coal rank division topology optimization. Based on the MAE, the current results are even close in performance to those of adaptive neuro-fuzzy inference systems. They also outperformed previous research models by 5.40 and 7.39% in terms of MAE accuracy. Applicability of the ANN was also analyzed with limitations of the chemical composition of ANNs and present reinforcement measures in the future studies through qualitative analysis comparisons based on Fourier transform infrared spectroscopy. Consequently, the relative effect was derived from the ANN hidden layer weight for specific calculation of the relationship between elemental composition and proximate analysis properties. As a result, it was possible to qualitatively analyze how the proximate analysis value affects the composition of elements and calculate the ratio accordingly. The findings of this study provide an improved and efficient approach to predicting the elemental composition of thermal coal, based on data from South Korean power plants. Also, further research can follow schematics from this study with the applicability and accessibility of the ANN.

摘要

煤炭的基本特性会影响发电的各个环节,例如发电厂的设计、锅炉当前状况的评估以及发电厂的总效率。元素组成是评估化学转化过程以及预测燃煤过程中烟气流量和空气质量的必要因素。过去,人们利用元素分析和工业分析建立了多种关系。本研究旨在使用人工神经网络(ANN)预测韩国燃煤发电厂使用的104种动力煤的元素组成,该网络将工业分析值作为输入参数。在评估了包括 、均方误差(MSE)和轮次等各种性能指标后,基于人工神经网络的模型用六种激活函数和四个隐藏层进行了优化,然后进行了额外的计算,以使用平均绝对误差(MAE)、平均绝对误差和平均偏差误差来比较先前研究的性能。结果发现,使用Levenberg-Marquardt激活函数和10个隐藏层建立了最佳拓扑结构,在所有测试拓扑中具有最高的 值和最小的MSE。因此,通过人工神经网络隐藏层得出了对计算精度的相对影响,以分析碳、氢和氧成分的预测精度。通过煤级划分拓扑优化,精度比先前结果提高了4.71 - 0.91%。基于MAE,当前结果在性能上甚至与自适应神经模糊推理系统相近。在MAE精度方面,它们也比先前的研究模型分别高出5.40%和7.39%。还通过基于傅里叶变换红外光谱的定性分析比较,分析了人工神经网络在化学成分方面的局限性以及未来研究中的现有强化措施,从而分析了人工神经网络的适用性。因此,从人工神经网络隐藏层权重得出了相对影响,用于具体计算元素组成与工业分析特性之间的关系。结果,可以定性分析工业分析值如何影响元素组成并相应地计算比例。本研究结果基于韩国发电厂的数据,为预测动力煤的元素组成提供了一种改进的有效方法。此外,进一步的研究可以遵循本研究的示意图,探讨人工神经网络的适用性和可及性。

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本文引用的文献

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2
Training feedforward networks with the Marquardt algorithm.使用马夸特算法训练前馈网络。
IEEE Trans Neural Netw. 1994;5(6):989-93. doi: 10.1109/72.329697.
3
Applications of diamond crystal ATR FTIR spectroscopy to the characterization of ambers.金刚石晶体衰减全反射傅里叶变换红外光谱法在琥珀表征中的应用。
Spectrochim Acta A Mol Biomol Spectrosc. 2007 Aug;67(5):1407-11. doi: 10.1016/j.saa.2006.10.033. Epub 2006 Oct 24.