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MPC Toolbox with GPU Accelerated Optimization Algorithms

机译:具有GpU加速优化算法的mpC工具箱

摘要

The introduction of Graphical Processing Units (GPUs) in scientific computing has shown great promise in many different fields. While GPUs are capable of very high floating point performance and memory bandwidth, its massively parallel architecture requires algorithms to be reimplemented to suit the different architecture. Interior point method can be used to solve convex optimization problems. These problems often arise in fields such as in Model Predictive Control (MPC), which may have real-time requirements for the solution time. This paper presents a case study in which we utilize GPUs for a Linear Programming Interior Point Method to solve a test case where a series of power plants must be controlled to minimize the cost of power production. We demonstrate that using GPUs for solving MPC problems can provide a speedup in solution time.
机译:在科学计算中引入图形处理单元(GPU)在许多不同领域都显示出了巨大的希望。尽管GPU具有很高的浮点性能和内存带宽,但其大规模并行架构要求重新实现算法以适应不同的架构。内点法可以用来解决凸优化问题。这些问题通常出现在模型预测控制(MPC)等领域,这些领域可能对求解时间有实时要求。本文介绍了一个案例研究,其中我们利用GPU进行线性编程内点法来解决一个测试案例,在该案例中,必须控制一系列发电厂,以最大程度地降低发电成本。我们证明了使用GPU解决MPC问题可以加快解决速度。

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