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Data-driven modeling and global optimization of industrial-scale petrochemical planning operations

机译:数据驱动的建模和工业规模石化计划运营的全局优化

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In this work, we have developed a data-driven model which is used for the optimization of planning operations of a large petrochemical complex, comprising of a petrochemical plant and two ethylene plants. We have developed unit operation models for all of the processes present within the industrial superstructure, which are integrated with mass-balance, property specification, demand, capacity and unit selection constraints, to form the overall planning problem. The models in this formulation contain parameters which are automatically fitted based on the data obtained from the operation of the plant units. For the dynamic updating of the model parameters, we have developed a user-friendly computational platform which allows the input of new operational data as well as cost, price, demand and specification information for the planning period of interest. Once the parameters are updated and the predictive ability of the models is confirmed, the formed mixed integer nonlinear optimization problem is solved to global optimality, providing the globally optimal flowrates and operating modes which maximize the profit, while simultaneously satisfying specification and demand constraints. Using the developed framework, we have obtained results for multiple case studies proving that the obtained solutions lead to significant improvements in profit when compared to historically applied operating plans.
机译:在这项工作中,我们开发了一种数据驱动模型,用于优化大型石化复合物的规划操作,包括石化植物和两个乙烯植物。我们开发了用于工业上层建筑内部所有过程的单位操作模型,这些过程与质量平衡,属性规范,需求,容量和单元选择约束集成,以形成整体规划问题。该配方中的模型包含基于从工厂单元的操作获得的数据自动安装的参数。对于模型参数的动态更新,我们开发了一个用户友好的计算平台,允许输入新的运营数据以及兴趣计划期的成本,价格,需求和规范信息。一旦更新了参数并且确认了模型的预测能力,将形成的混合整数非线性优化问题得到解决全球最优性,提供全局最佳流量和操作模式,其最大化利润,同时满足规范和需求约束。使用发达的框架,我们已经获得了多种案例研究的结果证明,与历史上应用的运营计划相比,所获得的解决方案导致利润的显着改善。

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