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T-S Fuzzy Identification for Main Steam. Temperature System Using Improved Particle Swarm Optimization

机译:主蒸汽的T-S模糊识别。温度系统使用改进的粒子群优化

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For the main steam temperature system of pulverized coal fired boiler, the modeling precision is not quite satisfactory based on the traditional transfer function. Utilizing the nonlinearity of thermal process, the paper proposes the methodology of T-S fuzzy neural network for data fitting. The antecedent parameters are determined by selected centers obtained from simplified subtractive clustering method, and the number of 'If-Then' rules is automatically generated. Afterwards, the improved particle swarm optimization algorithm is proposed to assign the initial consequent parameters of rules which are then fine-tuned by BP algorithm. The simulation results show that the algorithm not only achieves the goal of higher precision, but also exhibits higher generalization ability with respect to the problem of identification and optimization of the main steam temperature system.
机译:对于粉煤燃烧锅炉的主蒸汽温度系统,建模精度基于传统的传递函数并不完全令人满意。利用热过程的非线性,本文提出了T-S模糊神经网络的数据配件方法。通过从简化的减法聚类方法获得的所选中心确定的前进参数,以及自动生成“if-dent”规则的数量。之后,提出了改进的粒子群优化算法以分配由BP算法进行微调的规则的初始导致参数。仿真结果表明,该算法不仅实现了更高精度的目标,而且还具有较高的概率能力,相对于主蒸汽温度系统的识别和优化问题。

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