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Production optimization for continuously operated processes with optimal operation and scheduling of multiple units

机译:连续运行过程的生产优化,具有多个单元的最佳运行和调度

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摘要

A production optimization problem for continuously operated processes is presented and a solution strategy is proposed. The strategy consists of decoupling the complete problem into a mixed-integer linear programming (MILP) scheduling problem, including sequencing and allocation, and a multi-stage dynamic optimization (DO) problem, including the determination of optimal trajectories and setpoints. The scheduling problem is treated as a master problem and the DO problem as a primal problem, and the complete problem is solved through iteration between the two. The approach is similar in nature to standard methods for solving mixed-integer nonlinear (MINLP) problems, such as Outer Approximation and Benders Decomposition, but more adapted to the specific problem, by permitting more freedom in choosing the binary representation. The decomposition strategy implies flexibility in choosing the optimization tools required, and enables the treatment of larger problems. The approach is a generalization of a previously reported one, where only the single-unit case was discussed. Splitting the primal problem into smaller DO subproblems, parameter estimation from the DO subproblems, termination criteria and other topics are discussed. The target process for demonstration of the method is an industrial polymerization process.
机译:提出了连续运行过程的生产优化问题,并提出了解决方案。该策略包括将整个问题解耦为包括排序和分配的混合整数线性规划(MILP)调度问题,以及包括确定最佳轨迹和设定点的多阶段动态优化(DO)问题。调度问题被视为主要问题,DO问题被视为主要问题,而完整的问题则通过两者之间的迭代解决。该方法本质上类似于用于解决混合整数非线性(MINLP)问题(例如外部近似和Benders分解)的标准方法,但是通过允许在选择二进制表示形式方面具有更大的自由度,该方法更适合于特定问题。分解策略意味着可以灵活选择所需的优化工具,并可以处理更大的问题。该方法是对先前报告的方法的概括,其中仅讨论了单例情况。将原始问题分解为较小的DO子问题,讨论了来自DO子问题的参数估计,终止准则和其他主题。该方法论证的目标过程是工业聚合过程。

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