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Optimal Resource Allocation using Distributed Feedback-based Real-time Optimization ?

机译:基于分布式反馈的实时优化

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This paper considers the problem of steady-state optimal resource allocation in an industrial symbiosis, where different companies share common resources. Such optimal resource allocation problems are commonly studied in the context of distributed optimization to limit information sharing. One such framework is the Lagrangian decomposition approach, where the different subproblems are locally optimized for a given shadow price of the shared resource, which is updated by a master coordinator. In the traditional distributed RTO approach, this involves solving numerical optimization problems online for each subproblem, which can be computationally intensive. In order to avoid the need for solving numerical optimization problems, this paper proposes a distributed feedback-based real-time optimization framework, where each subproblem is locally optimized for a given shadow price using feedback controllers. The proposed feedback-based distributed RTO scheme is applied to an industrial symbiotic subsea oil production system, where the different wells are operated by different companies. The simulation results show that the proposed feedback-based distributed RTO scheme can optimally allocate the shared resources.
机译:本文考虑了工业共生中稳态最优资源配置的问题,不同的公司共享共同资源。在分布式优化的上下文中普遍研究这种最佳资源分配问题,以限制信息共享。一个这样的框架是拉格朗日分解方法,其中不同的子问题是针对共享资源的给定的阴影价格本地优化,由主协调器更新。在传统的分布式RTO方法中,这涉及在线在线解决每个子问题的数值优化问题,这些问题可以在计算上密集。为了避免求解数值优化问题的需要,本文提出了一种基于分布式的反馈的实时优化框架,其中每个子问题使用反馈控制器为给定的阴影价格本地优化。拟议的基于反馈的分布式RTO方案适用于工业共生海底石油生产系统,不同的井是由不同公司运营的。仿真结果表明,所提出的基于反馈的分布式RTO方案可以最佳地分配共享资源。

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