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Stochastic and global real time optimization of Tennessee Eastman challenge problem

机译:田纳西伊士曼挑战问题的随机和全局实时优化

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A stochastic real time optimization (SRTO) which has an efficient result has been implemented on the Tennessee Eastman (TE) challenging problem. In this article a novel stochastic optimization method, the so-called heuristic random optimization (HRO) proposed by Li & Rhinehart is used which attempts to rationally combine features of both deterministic and random (stochastic) methods. Further, an on-line nonlinear identifier via extended (Caiman filter (EKF) is used to supply the plant model for model-based optimization algorithm. Using the information obtained from EKF an on-line HRO is accomplished by a random search method whose search directions and steps are considerably reduced by some heuristic rules. In order to compare and prove the performance of HRO method, the problem was solved again via sequential quadratic programming (SQP) which is the most efficient algorithms among the deterministic methods. The optimizer initiates every 8h and determines the optimal set points of the PI controllers in the plant. The calculations are completed in about 15s by HRO method. Simulations have been done using an Intel P4 2.8 GHz, and 256MB of RAM.
机译:在田纳西州伊斯曼(TE)的挑战性问题上实现了具有有效结果的随机实时优化(SRTO)。在本文中,使用了一种新颖的随机优化方法,这是Li&Rhinehart提出的所谓启发式随机优化(HRO),它试图合理地组合确定性和随机(随机)方法的特征。此外,通过扩展的在线非线性标识符(凯门滤波器(EKF))为基于模型的优化算法提供工厂模型,利用从EKF获得的信息,通过随机搜索方法实现在线HRO。通过一些启发式规则大大减少了方向和步骤,为了比较和证明HRO方法的性能,通过确定性方法中最有效的顺序二次编程(SQP)再次解决了该问题,优化程序会启动然后在8h内确定工厂中PI控制器的最佳设定点,通过HRO方法在大约15s内完成计算,并使用Intel P4 2.8 GHz和256MB RAM进行了仿真。

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