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Multi-step optimal control of complex process: a genetic programming strategy and its application

机译:复杂过程的多步最优控制:遗传规划策略及其应用

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摘要

In many industrial processes, especially chemistry and metallurgy industry, the plant is slow for feedback and data test because of complex and varying factors. Considering the multi-objective feature and the complex problem of production stability in optimal control, this paper proposed an optimal control strategy based on genetic programming (GP), used as a multi-step state transferring procedure. The fitness function is computed by multi-step comprehensive evaluation algorithm, which provides a synthetic evaluation of multi-objective in process state based on single objective models. The punishment to process state variance is also introduced for the balance between optimal performance and stability of production. The individuals in GP are constructed as a chain linked by a few relation operators of time sequence for a facilitated evolution in GP with compact individuals. The optimal solution gained by evolution is a multi-step command program of process control, which not only ensures the optimization tendency but also avoids violent process variation by adjusting control parameters step by step. An optimal control system for operation direction is developed based on this strategy for imperial smelting process in Shaoguan. The simulation and application results showed its effectiveness for production objects optimization in complex process control.
机译:在许多工业过程中,尤其是化学和冶金工业中,由于复杂多样的因素,工厂的反馈和数据测试速度很慢。针对最优控制中的多目标特征和生产稳定性的复杂问题,提出了一种基于遗传规划的最优控制策略,并将其作为多步状态转移程序。适应度函数由多步综合评估算法计算得出,该算法基于单个目标模型对过程状态中的多目标进行综合评估。还引入了对过程状态变化的惩罚,以实现最佳性能和生产稳定性之间的平衡。 GP中的个体被构建为由时间序列的几个关系运算符链接的链,以促进紧凑型个体在GP中的进化。通过进化得到的最优解是过程控制的多步命令程序,它不仅保证了优化趋势,而且通过逐步调整控制参数避免了剧烈的过程变化。基于此策略,开发了韶关皇家冶炼过程的最佳运行方向控制系统。仿真和应用结果表明,该方法对复杂过程控制中的生产对象优化有效。

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