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Measurement and calculation of calorific value of raw coal based on artificial neural network analysis method

机译:基于人工神经网络分析法的原煤热值测量与计算

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The calorific value of coal is the basic technical basis for calculating parameters such as boiler heat balance, thermal efficiency, and boiler output. The calorific value of coal has different meanings, such as the calorific value of the cartridge, the high calorific value of coal, and the low calorific value of coal to generate heat at a high level of constant humidity and no ash. This paper focuses on the analysis of the structure and algorithm characteristics of artificial neural network and RBF neural network. On this basis, the predictive modelling of the received low-level calorific value is carried out. Through the test summary, the predictiveness of the neural network is better than the empirical formula. For the prediction problem with small sample size, the RBF network has better prediction performance. In addition, the quality of the sample, including its quantity and comprehensiveness, has an important impact on the predictive performance and generalization ability of the model.
机译:煤炭的热值是计算锅炉热平衡,热效率和锅炉输出等参数的基本技术基础。煤炭的热值具有不同的含义,例如墨盒的热值,煤的高热值,以及煤的低热值,以高水平的恒定湿度和无灰分产生热量。本文侧重于分析人工神经网络与RBF神经网络的结构和算法特征。在此基础上,进行了接收的低级热值的预测建模。通过测试摘要,神经网络的预测性优于经验公式。对于采样小的预测问题,RBF网络具有更好的预测性能。此外,样本的质量,包括其数量和全面性,对模型的预测性能和泛化能力产生了重要影响。

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