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Robust strategy synthesis for probabilistic systems applied to risk-limiting renewable-energy pricing

机译:适用于风险限制可再生能源定价的概率系统的鲁棒策略综合

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We address the problem of synthesizing control strategies for Ellipsoidal Markov Decision Processes (EMDP), i.e., MDPs whose transition probabilities are expressed using ellipsoidal uncertainty sets. The synthesized strategy aims to maximize the total expected reward of the EMDP, constrained to a specification expressed in Probabilistic Computation Tree Logic (PCTL). We prove that the EMDP strategy synthesis problem for the fragment of PCTL disabling operators with a finite time bound is NP-complete and propose a novel sound and complete algorithm to solve it. We apply these results to the problem of synthesizing optimal energy pricing and dispatch strategies in smart grids that integrate renewable sources of energy. We use rewards to maximize the profit of the network operator and a PCTL specification to constrain the risk of power unbalance and guarantee quality-of-service for the users. The EMDP model used to represent the decision-making scenario was trained with measured data and quantitatively captures the uncertainty in the prediction of energy generation. An experimental comparison shows the effectiveness of our method with respect to previous approaches presented in the literature.
机译:我们解决了椭球马尔可夫决策过程(EMDP)的综合控制策略的问题,即其转移概率使用椭球不确定性集表示的MDP。合成策略旨在最大限度地提高EMDP的总预期回报,并受限于概率计算树逻辑(PCTL)中表达的规范。我们证明了具有有限时限的PCTL禁用算子的片段的EMDP策略综合问题是NP完全的,并提出了一种新颖而完善的算法来解决。我们将这些结果应用于在集成了可再生能源的智能电网中综合优化能源价格和调度策略的问题。我们使用奖励来最大化网络运营商的利润,并使用PCTL规范来限制电源不平衡的风险并为用户保证服务质量。使用测量数据对用于表示决策场景的EMDP模型进行了训练,并定量捕获了发电量预测中的不确定性。实验比较表明,相对于文献中提出的先前方法,我们的方法是有效的。

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