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Feed-Forward Neural Network Soft-Sensor Modeling of Flotation Process Based on Particle Swarm Optimization and Gravitational Search Algorithm

机译:基于粒子群优化和引力搜索算法的浮选过程前馈神经网络软传感器建模

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摘要

For predicting the key technology indicators (concentrate grade and tailings recovery rate) of flotation process, a feed-forward neural network (FNN) based soft-sensor model optimized by the hybrid algorithm combining particle swarm optimization (PSO) algorithm and gravitational search algorithm (GSA) is proposed. Although GSA has better optimization capability, it has slow convergence velocity and is easy to fall into local optimum. So in this paper, the velocity vector and position vector of GSA are adjusted by PSO algorithm in order to improve its convergence speed and prediction accuracy. Finally, the proposed hybrid algorithm is adopted to optimize the parameters of FNN soft-sensor model. Simulation results show that the model has better generalization and prediction accuracy for the concentrate grade and tailings recovery rate to meet the online soft-sensor requirements of the real-time control in the flotation process.
机译:为了预测浮选过程的关键技术指标(精矿品位和尾矿回收率),采用了基于前馈神经网络(FNN)的软传感器模型,该模型通过结合粒子群优化(PSO)算法和重力搜索算法的混合算法进行了优化( GSA)。尽管GSA具有更好的优化能力,但收敛速度较慢并且容易陷入局部最优。因此,本文采用PSO算法对GSA的速度矢量和位置矢量进行了调整,以提高GSA的收敛速度和预测精度。最后,采用提出的混合算法对FNN软传感器模型的参数进行优化。仿真结果表明,该模型对精矿品位和尾矿回收率具有较好的推广和预测精度,可以满足浮选过程中实时控制在线软传感器的要求。

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