首页> 外文会议>ASME International Mechanical Engineering Congress and Exposition >A SEARCH SPACE REDUCTION METHOD FOR OPTIMIZING SEQUENTIAL CONTROL BY HYPOTHETICALLY ACHIEVABLE BOUND ESTIMATION OF THE OBJECTIVE FUNCTION
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A SEARCH SPACE REDUCTION METHOD FOR OPTIMIZING SEQUENTIAL CONTROL BY HYPOTHETICALLY ACHIEVABLE BOUND ESTIMATION OF THE OBJECTIVE FUNCTION

机译:一种搜索空间减少方法,用于通过假设可实现的目标函数进行顺序控制的顺序控制

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Metaheuristic methods such as genetic algorithm, simulated annealing, and artificial bee colony algorithm methods take much time to obtain an optimal solution, particularly when a large scale simulator is employed for estimating the state of the environment. In this paper, a search space reduction method for accelerating the optimization of sequential control systems is proposed. The proposed method estimates a hypothetical achievable bound of the objective function and uses it as the prior knowledge to reduce the search space. The hypothetical achievable bound is estimated using the fact that large scale plants consisting of multiple components are in many cases controlled in a sequential manner. The size of the search space reduction obtained by the proposed method is evaluated by an example problem that minimizes the start-up time of a thermal power plant. As a result, the size of the search space is reduced by 65%. The proposed method does not lose the optimality of the optimization method to be accelerated. In addition, this method is also applicable to optimization problems other than sequential control if the hypothetical achievable bound of the objective function is estimable without measuring the state of the environment or using the simulator.
机译:诸如遗传算法,模拟退火和人造群群算法的遗传造型方法需要花费大量时间来获得最佳解决方案,特别是当采用大规模模拟器来估计环境状态时。本文提出了一种用于加速顺序控制系统优化的搜索空间减少方法。该方法估计目标函数的假设可实现的界限,并将其作为减少搜索空间的先验知识。利用以下事实估计了假设可实现的界定,即由多种组分组成的大规模植物在许多情况下以顺序方式控制。通过提出的方法获得的搜索空间减少的尺寸是通过最小化火电厂的启动时间的示例问题来评估。结果,搜索空间的大小减少了65%。所提出的方法不会损失优化方法的最优性。此外,如果客观函数的假设可实现的界限在不测量环境状态或使用模拟器的情况下,则该方法也适用于顺序控制之外的优化问题。

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