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Solving multi-objective dynamic optimization problems with fuzzy satisfying method

机译:用模糊满足法求解多目标动态优化问题

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This article proposes a novel algorithm integrating iterative dynamic programming and fuzzy aggregation to solve multi-objective optimal control problems. First, the optimal control policies involving these objectives are sequentially determined. A payoff table is then established by applying each optimal policy in series to evaluate these multiple objectives. Considering the imprecise nature of decision-maker's judgment, these multiple objectives are viewed as fuzzy variables. Simple monotonic increasing or decreasing membership functions are then defined for degrees of satisfaction for these linguistic objective functions. The optimal control policy is finally searched by maximizing the aggregated fuzzy decision values. The proposed method is rather easy to implement. Two chemical processes, Nylon 6 batch polymerization and Penicillin G fed-batch fermentation, are used to demonstrate that the method has a significant potential to solve real industrial problems.
机译:本文提出了一种将迭代动态规划和模糊聚合相结合的新颖算法,以解决多目标最优控制问题。首先,顺序确定涉及这些目标的最优控制策略。然后,通过依次应用每个最佳策略来评估这些多个目标,来建立回报表。考虑到决策者判断的不精确性,将这些多个目标视为模糊变量。然后针对这些语言目标功能的满意度定义简单的单调递增或递减隶属度函数。最后,通过使合计的模糊决策值最大化来搜索最优控制策略。所提出的方法很容易实现。尼龙6分批聚合和青霉素G分批发酵这两个化学过程被用来证明该方法具有解决实际工业问题的巨大潜力。

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