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GPU-based model predictive control for continuous casting spray cooling control system using particle swarm optimization

机译:基于粒子群优化的基于GPU的连铸喷雾冷却控制模型预测控制

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摘要

Model predictive control (MPC) for spray cooling control system requires a repeated online solution of an optimization problem that includes partial differential equations (PDEs). To simulate the future temperature behavior of steel billets, 3D dynamic heat transfer model is used. The special solution domain of PDEs has led to large computation cost, which is the main challenge in the real-time practical application of spray cooling control system. Meanwhile, the heat transfer coefficients need to be identified using the measured surface temperature. This work presents a two-level parallel solution method implemented on a Graphics processing unit (GPU) for MPC of spray cooling control systems and a weighted least squares modified conjugate gradient method (WLS-MCG) for identification of heat transfer coefficients. Two-level parallel solution method consists of parallel-based heat transfer model and stream parallel particle swarm optimization (PSO). PSO is used to solve the optimization problem. WLS-MCG consists of the weighted least squares (WLS) and modified conjugate gradient method (MCG). The experimental results show that the two-level parallel solution method has good computational performance and achieves satisfactory control performance.
机译:喷雾冷却控制系统的模型预测控制(MPC)需要对包括偏微分方程(PDE)在内的优化问题进行重复在线求解。为了模拟钢坯的未来温度行为,使用了3D动态传热模型。 PDE的特殊解决方案领域导致大量的计算成本,这是喷雾冷却控制系统的实时实际应用中的主要挑战。同时,需要使用测得的表面温度来确定传热系数。这项工作提出了在喷雾冷却控制系统的MPC的图形处理单元(GPU)上实现的两级并行解决方案方法,以及用于识别传热系数的加权最小二乘修正共轭梯度法(WLS-MCG)。二级并行求解方法由基于并行的传热模型和流并行粒子群优化(PSO)组成。 PSO用于解决优化问题。 WLS-MCG由加权最小二乘(WLS)和改进的共轭梯度法(MCG)组成。实验结果表明,该二级并行求解方法具有良好的计算性能,并取得了令人满意的控制性能。

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