Implementing a neuro fuzzy expert system for optimising the performance of chemical recovery boiler

S. Anand, T. Raman, S. Subramanian
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引用次数: 7

Abstract

In chemical recovery boilers of paper mills, main steam outlet temperature control cannot be solved by straight forward automation control. As prior knowledge of the mechanism to maximise steam generation without affecting steam main temperature is unknown, a backpropogation supervisory neural network has been designed which exhibits a good degree of reinforcement learning. Various parameters considered encompassing concentration, composition and firing load of black liquor solids may not have ideal fixed values. Hence, a type 2 fuzzy logic model has been designed which in turn monitors the parameters and predicts the results. Errors are fed back iteratively through the backpropogation network, until the network learns the model. Fuzzy C-means clustering technique has been used to find coherent clusters. Then sensitivity analysis has been done to identify the parameters playing a significant role in obtaining the results. As it can be observed that the behaviour is stochastic, particle swarm optimisation has been implemented to optimise the combined effect of all parameters. Through this tool connecting steam attemperation control and smart soot blowing, clean heating surface is ensured resulting in enhanced green energy output and availability.
应用神经模糊专家系统对化工回收锅炉进行性能优化
在造纸厂化学回收锅炉中,直接自动化控制无法解决主汽出口温度控制问题。由于在不影响蒸汽主温度的情况下最大化蒸汽产生机制的先验知识是未知的,因此设计了一个反向传播监督神经网络,该网络具有良好的强化学习程度。考虑到黑液固体的浓度、组成和烧成负荷等各种参数可能没有理想的固定值。因此,设计了一种2型模糊逻辑模型,该模型对参数进行监测并预测结果。误差通过反向传播网络迭代反馈,直到网络学会模型。采用模糊c均值聚类技术寻找相干聚类。然后进行灵敏度分析,找出对结果有重要影响的参数。由于可以观察到行为是随机的,因此我们采用粒子群优化来优化所有参数的综合效应。通过该工具连接蒸汽温度控制和智能吹灰,确保受热面清洁,从而提高绿色能源输出和可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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