Soft sensor modeling based on modified PSO

Ruqing Chen
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Abstract

Standard particle swarm optimization (PSO) has the drawback of trapping into local minima easily when used for the optimization of high-dimension complex functions with a lot of local minima. In order to deal with the problem an improved PSO algorithm with crossover operator is developed. Better particles are selected in this algorithm, thus can avoid premature convergence to local optimum as well as accelerate the convergence speed. Four high-dimension complex benchmark functions are introduced to test this method. Simulation analysis shows that improved PSO algorithm has better capabilities in convergence accuracy and speed as well as its global search performance by comparison with normal PSO algorithms. Finally the improved PSO based neural network (NN) soft sensor model for ethylene yield is developed, results of the application in industrial process control show that this model has high prediction precision and good generalization ability, it can satisfy the need of spot measurement.
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基于改进粒子群算法的软测量建模
标准粒子群算法在求解具有大量局部极小值的高维复杂函数时,存在容易陷入局部极小值的缺点。为了解决这一问题,提出了一种改进的带交叉算子的粒子群算法。该算法通过选择更好的粒子,避免了过早收敛到局部最优,加快了收敛速度。引入四个高维复杂基准函数对该方法进行测试。仿真分析表明,改进的粒子群算法在收敛精度、速度和全局搜索性能方面都优于普通粒子群算法。最后建立了改进的基于粒子群算法的神经网络(NN)乙烯产率软测量模型,在工业过程控制中的应用结果表明,该模型具有较高的预测精度和良好的泛化能力,能够满足现场测量的需要。
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