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Integration between Dynamic Optimization and Scheduling of Batch Processes under Uncertainty: A Back-off Approach

机译:不确定条件下批处理动态优化与调度之间的集成:一种退避方法

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The aim of this study is to present a decomposition algorithm that employs a new back-off methodology to consider stochastic-based parameter uncertainty for the integration of dynamic optimization and scheduling of multi-unit batch plants. This is achieved by solving a series of optimization problems involving scheduling and control decisions. Simulations based on Monte Carlo sampling techniques are used to propagate uncertainty into the system and determine back-off terms for the process operational constraints. At each step in the algorithm, back-off terms are updated such that the system moves away from the nominal solution until a convergence criterion is met, obtaining a solution that satisfies constraints up to a user-defined probability limit. This algorithm, when applied to a multi-product multi-unit batch plant, produces an optimal schedule and control profiles that remain dynamically feasible in the presence of stochastic-based uncertain parameters.
机译:这项研究的目的是提出一种分解算法,该算法采用一种新的退避方法来考虑基于随机的参数不确定性,以集成动态优化和多单元批量工厂调度的集成。这是通过解决一系列涉及调度和控制决策的优化问题来实现的。基于蒙特卡洛采样技术的仿真用于将不确定性传播到系统中,并确定过程操作约束的补偿项。在算法的每个步骤中,都会更新退避项,以使系统远离标称解,直到满足收敛标准为止,从而获得满足用户定义的概率限制的约束的解。将该算法应用于多产品多单元批处理工厂时,可产生最佳调度和控制配置文件,在存在基于随机性的不确定参数的情况下,这些配置文件仍可动态地实现。

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