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The optimal implementation of on-line optimization for chemical and refinery processes.

机译:化工和精炼过程在线优化的最佳实现。

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On-line optimization is an effective approach for process operation and economic improvement and source reduction in chemical and refinery processes. On-line optimization involves three steps of work as: data validation, parameter estimation, and economic optimization. This research evaluated statistical algorithms for gross error detection, data reconciliation, and parameter estimation, and developed an open-form steady state process model for the Monsanto designed sulfuric acid process of IMC Agrico Company. The plant model was used to demonstrate improved economics and reduced emissions from on-line optimization and to test the methodology of on-line optimization. Also, a modified compensation strategy was proposed to improve the misrectification of data reconciliation algorithms and it was compared with measurement test method. In addition, two ways to conduct on-line optimization were studied. One required two separated optimization problems to update parameters, and the other combined data validation and parameter estimation into one optimization problem. Two-step estimation demonstrated a better performance in estimation accuracy than one-step estimation for sulfuric acid process, while one-step estimation required less computation time.; The measurement test method, Tjoa-Biegler' contaminated Gaussian distribution method, and robust method were evaluated theoretically and numerically to compare the performance of these methods. Results from these evaluation were used to recommend the best way to conduct on-line optimization. The optimal procedure is to conduct combined gross error detection and data reconciliation to detect and rectify gross errors in plant data from DCS using Tjoa-Biegler's method or robust method. This step generates a set of measurements containing only random errors which is used for simultaneous data reconciliation and parameter estimation using the least squares method (the normal distribution). Updated parameters are used in the plant model for economic optimization that generates optimal set points for DCS.; Applying this procedure to the Monsanto sulfuric acid plant had an increased profit of 3% over current operating condition and an emission reduction of 10% which is consistent with other reported applications. Also, this optimal procedure to conduct on-line optimization has been incorporated into an interactive on-line optimization program which used a window interface developed with Visual Basic and GAMS to solve the nonlinear optimization problems. This program is to be available through the EPA Technology Tool Program.
机译:在线优化是一种有效的方法,可用于过程操作,经济改进以及减少化学和精炼过程中的源。在线优化涉及三个步骤,分别是:数据验证,参数估计和经济优化。这项研究评估了统计算法的总体错误检测,数据协调和参数估计,并为IMC Agrico公司的孟山都设计的硫酸工艺开发了一种开放形式的稳态工艺模型。工厂模型用于证明在线优化的经济性和减少的排放量,并测试在线优化的方法。此外,提出了一种改进的补偿策略,以改善数据协调算法的错误纠正,并将其与测量测试方法进行了比较。另外,研究了两种进行在线优化的方法。一个需要两个单独的优化问题来更新参数,另一个需要将数据验证和参数估计合并为一个优化问题。与硫酸一步法估算相比,两步估算显示出更高的估算精度,而一步估算所需的计算时间更少。从理论和数值上对测量测试方法,Tjoa-Biegler污染的高斯分布方法和鲁棒性方法进行了评估,以比较这些方法的性能。这些评估的结果被用来推荐进行在线优化的最佳方法。最佳过程是使用Tjoa-Biegler方法或鲁棒性方法进行总错误检测和数据协调,以检测和纠正来自DCS的工厂数据中的总错误。此步骤将生成一组仅包含随机误差的测量值,该测量值用于使用最小二乘法(正态分布)进行同时数据协调和参数估计。在工厂模型中使用更新的参数进行经济优化,从而为DCS生成最佳设置点。将该程序应用于孟山都硫酸工厂,与目前的运行条件相比,利润增加了3%,​​排放减少了10%,与其他报告的应用相一致。此外,这种进行在线优化的最佳过程已被并入交互式在线优化程序中,该程序使用由Visual Basic和GAMS开发的窗口界面来解决非线性优化问题。该程序可通过EPA技术工具程序获得。

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