首页> 外文期刊>Thermochimica Acta: An International Journal Concerned with the Broader Aspects of Thermochemistry and Its Applications to Chemical Problems >Predicting coal ash fusion temperature based on its chemical composition using ACO-BP neural network
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Predicting coal ash fusion temperature based on its chemical composition using ACO-BP neural network

机译:基于ACO-BP神经网络的化学成分预测煤灰熔融温度

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Coal ash fusion temperature is important to boiler designers and operators of power plants. Fusion temperature is determined by the chemical composition of coal ash, however, their relationships are not precisely known. A novel neural network, ACO-BP neural network, is used to model coal ash fusion temperature based on its chemical composition. Ant colony optimization (ACO) is an ecological system algorithm, which draws its inspiration from the foraging behavior of real ants. A three-layer network is designed with 10 hidden nodes. The oxide contents consist of the inputs of the network and the fusion temperature is the output. Data on 80 typical Chinese coal ash samples were used for training and testing. Results show that ACO-BP neural network can obtain better performance compared with empirical formulas and BP neural network. The well-trained neural network can be used as a useful tool to predict coal ash fusion temperature according to the oxide contents of the coal ash. (c) 2007 Published by Elsevier B.V.
机译:粉煤灰的熔融温度对电厂的锅炉设计人员和操作人员很重要。熔融温度由煤灰的化学组成决定,但是,它们的关系尚不清楚。一种新颖的神经网络,ACO-BP神经网络,用于基于其化学成分对煤灰熔融温度进行建模。蚁群优化(ACO)是一种生态系统算法,它从真实蚂蚁的觅食行为中汲取了灵感。设计了一个三层网络,其中包含10个隐藏节点。氧化物含量由网络的输入组成,熔融温度为输出。使用了80种典型的中国粉煤灰样品的数据进行了培训和测试。结果表明,与经验公式和BP神经网络相比,ACO-BP神经网络可以获得更好的性能。训练有素的神经网络可以用作根据煤灰的氧化物含量预测煤灰熔融温度的有用工具。 (c)2007年由Elsevier B.V.

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