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Integrated Artificial Neural Network (ANN) and Stochastic Dynamic Programming (SDP) Model for Optimal Release Policy

机译:最优释放策略的集成人工神经网络(ANN)和随机动态规划(SDP)模型

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摘要

Complexicity in reservoir operation poses serious challenges to water resources planners and managers. These challenges of water reservoir operation are illustrated using a simulation to aid the development of an optimal operation policy for dam and reservoir. To achieve this, a Comprehensive Stochastic Dynamic Programming with Artificial Neural Network (SDP-ANN) model were developed and tested at Sg. Langat Reservoir in Malaysia. The nonlinearity of the natural physical processes was a major problem in determining the simulation of the reservoir parameters (elevation, surface-area, storage). To overcome water shortages resulting from uncertainty, the SDP-ANN model was used to evaluate the input variable and the performance outcome of the Model were compared with the Stochastic Dynamic Programming integrated with auto-regression (SDP-AR) model. The objective function of the models was set to minimize the sum of squared deviation from the desired targeted supply. Comparison result on the performance between SDP-AR model policy with SDP-ANN model found that the SDP-ANN model is a reliable and resilience model with a lesser supply deficit. The study concludes that the SDP-ANN model performs better than the SDP-AR model in deriving an optimal operating policy for the reservoir.
机译:水库运营的复杂性给水资源规划者和管理者带来了严峻的挑战。通过模拟说明了水库运行的这些挑战,以帮助制定大坝和水库的最佳运行策略。为了实现这一目标,开发了一种基于人工神经网络的综合随机动态规划(SDP-ANN)模型,并在Sg进行了测试。马来西亚的兰加特水库。自然物理过程的非线性是确定油藏参数(高程,表面积,存储)模拟的主要问题。为了克服不确定性导致的水资源短缺,使用SDP-ANN模型评估输入变量,并将该模型的性能结果与集成有自动回归的随机动态规划(SDP-AR)模型进行比较。模型的目标函数设置为最小化与所需目标供应量的平方偏差之和。通过比较SDP-AR模型策略与SDP-ANN模型的性能,发现SDP-ANN模型是一种可靠且具有弹性的模型,其供应短缺较少。研究得出的结论是,SDP-ANN模型在推导水库最优运行策略方面比SDP-AR模型表现更好。

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