Song Zhe, Kusiak Andrew
Department of Mechanical and Industrial Engineering, The University of Iowa, Iowa City, IA 52242-1527, USA.
IEEE Trans Syst Man Cybern B Cybern. 2010 Jun;40(3):845-56. doi: 10.1109/TSMCB.2009.2030667. Epub 2009 Nov 6.
This paper presents a dynamic predictive-optimization framework of a nonlinear temporal process. Data-mining (DM) and evolutionary strategy algorithms are integrated in the framework for solving the optimization model. DM algorithms learn dynamic equations from the process data. An evolutionary strategy algorithm is then applied to solve the optimization problem guided by the knowledge extracted by the DM algorithm. The concept presented in this paper is illustrated with the data from a power plant, where the goal is to maximize the boiler efficiency and minimize the limestone consumption. This multiobjective optimization problem can be either transformed into a single-objective optimization problem through preference aggregation approaches or into a Pareto-optimal optimization problem. The computational results have shown the effectiveness of the proposed optimization framework.
本文提出了一种非线性时间过程的动态预测优化框架。数据挖掘(DM)和进化策略算法集成在该框架中以求解优化模型。DM算法从过程数据中学习动态方程。然后应用进化策略算法,在DM算法提取的知识指导下求解优化问题。本文所提出的概念通过来自一家发电厂的数据进行了说明,其目标是使锅炉效率最大化并使石灰石消耗最小化。这个多目标优化问题既可以通过偏好聚合方法转化为单目标优化问题,也可以转化为帕累托最优优化问题。计算结果表明了所提出的优化框架的有效性。