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Multiobjective optimisation on a budget: Exploring surrogate modelling for robust multi-reservoir rules generation under hydrological uncertainty

机译:预算上的多目标优化:探索在水文不确定性下生成健壮的多水库规则的替代模型

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Developing long term operation rules for multi-reservoir systems is complicated due to the number of decision variables, the non-linearity of system dynamics and the hydrological uncertainty. This uncertainty can be addressed by coupling simulation models with multi-objective optimisation algorithms driven by stochastically generated hydrological timeseries but the computational effort required imposes barriers to the exploration of the solution space. The paper addresses this by (a) employing a parsimonious multi-objective parameterization-simulation-optimization (PSO) framework, which incorporates hydrological uncertainty through stochastic simulation and allows the use of probabilistic objective functions and (b) by investigating the potential of multi-objective surrogate based optimisation (MOSBO) to significantly reduce the resulting computational effort. Three MOSBO algorithms are compared against two multi-objective evolutionary algorithms. Results suggest that MOSBOs are indeed able to provide robust, uncertainty-aware operation rules much faster, without significant loss of neither the generality of evolutionary algorithms nor of the knowledge embedded in domain-specific models. (C) 2014 Elsevier Ltd. All rights reserved.
机译:由于决策变量的数量,系统动力学的非线性和水文的不确定性,为多水库系统制定长期运行规则非常复杂。可以通过将仿真模型与由随机生成的水文时间序列驱动的多目标优化算法耦合来解决这种不确定性,但是所需的计算量为探索解决方案空间设置了障碍。本文通过以下方法解决了这一问题:(a)采用简约的多目标参数化-仿真-优化(PSO)框架,该框架通过随机模拟将水文不确定性纳入其中,并允许使用概率目标函数;(b)通过研究多目标参数的潜力基于目标代理的优化(MOSBO),显着减少了计算量。将三种MOSBO算法与两种多目标进化算法进行了比较。结果表明,MOSBO确实能够更快地提供可靠的,具有不确定性的操作规则,而不会显着损失进化算法的通用性或特定领域模型中嵌入的知识。 (C)2014 Elsevier Ltd.保留所有权利。

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