Efficient parallel solution of large-scale nonlinear dynamic optimization problems

被引:0
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作者
Daniel P. Word
Jia Kang
Johan Akesson
Carl D. Laird
机构
[1] Texas A&M University,Artie McFerrin Department of Chemical Engineering
[2] Purdue University West Lafayette,School of Chemical Engineering
[3] Lund University,Department of Automatic Control
[4] Modelon AB,undefined
关键词
Dynamic optimization; Parallel computing; Collocation; Schur-complement decomposition; Parallel nonlinear optimization;
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摘要
This paper presents a decomposition strategy applicable to DAE constrained optimization problems. A common solution method for such problems is to apply a direct transcription method and solve the resulting nonlinear program using an interior-point algorithm. For this approach, the time to solve the linearized KKT system at each iteration typically dominates the total solution time. In our proposed method, we exploit the structure of the KKT system resulting from a direct collocation scheme for approximating the DAE constraints in order to compute the necessary linear algebra operations on multiple processors. This approach is applied to find the optimal control profile of a combined cycle power plant with promising results on both distributed memory and shared memory computing architectures with speedups of over 50 times possible.
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页码:667 / 688
页数:21
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