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Unified value-based feedback, optimization and risk management in complex electric energy systems

机译:复杂电能系统中的统一价值的反馈,优化和风险管理

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The ideas in this paper are motivated by an increased need for systematic data-enabled resource management of large-scale electric energy systems. The basic control objective is to manage uncertain disturbances, power imbalances in particular, by optimizing available power resources. To that end, we start with a centralized optimal control problem formulation of system-level performance objective subject to complex interconnection constraints and constraints representing highly heterogeneous internal dynamics of system components. To manage spatial complexity, an inherent multi-layered structure is utilized by modeling interconnection constraints in terms of unified power variables and their dynamics. Similarly, the internal dynamics of components and sub-systems (modules), including their primary automated feedback control, is modeled so that their input-output characterization is also expressed in terms of power variables. This representation is shown to be key to managing the multi-spatial complexity of the problem. In this unifying energy/ power state space, the system constraints are all fundamentally convex, resulting in the convex dynamic optimization problem, for typically utilized quadratic cost functions. Based on this, an interactive multi-layered modeling and control method is introduced. While the approach is fundamentally based on the primal-dual decomposition of the centralized problem, this is formulated for the first time for the couple real-reactive power problem. It is also is proposed for the first time to utilize sensitivity functions of distributed agents for solving the primal distributed problem. Iterative communication complexity typically required for convergence of point-wise information exchange is replaced by the embedded distributed optimization by the modules when creating these functions. A theoretical proof of the convergence claim is given. Notably, the inherent multi-temporal complexity is managed by performing model predictive control (MPC)-based decision making when solving distributed primal problems. The formulation enables distributed decision-makers to value uncertainties and related risks according to their preferences. Ultimately, the distributed decision making results in creating a bid function to be used at the coordinating market-clearing level. The optimization approach in this paper provides a theoretical foundation for next-generation Supervisory Control and Data Acquisition (SCADA) in support of a Dynamic Monitoring and Decision Systems (DyMonDS) for a multi-layered interactive market implementation in which the grid users follow their sub-objectives and the higher layers coordinate interconnected sub-systems and the high-level system objectives. This forms a theoretically sound basis for designing IT-enabled protocols for secure operations, planning, and markets.
机译:本文中的思想是通过增加对大型电能系统的系统数据资源管理的需求增加的动机。基本控制目标是通过优化可用电力资源来管理不确定的干扰,特别是功率不平衡。为此,我们从系统级性能客观的集中式最佳控制问题制定,经过复杂的互连约束和表示系统组件的高度异构内部动态的约束。为了管理空间复杂性,通过在统一功率变量及其动态方面建模互连约束来利用固有的多层结构。类似地,建模组件和子系统(模块)的内部动态(包括主自动反馈控制),以便它们的输入输出表征也在功率变量方面表达。此表示显示为管理问题的多空间复杂性的关键。在该统一能量/功率状态空间中,系统约束是全部凸起的,导致凸动态优化问题,用于通常利用二次成本函数。基于此,介绍了交互式多层建模和控制方法。虽然该方法基本上基于集中问题的原始双重分解,但这是第一次为夫妻实际功率问题制定的。也是首次提出的,利用分布式代理的灵敏度函数来解决原始分布式问题。通常需要在创建这些功能时由模块的嵌入式分布式优化所要求的迭代通信复杂性。给出了收敛索赔的理论证据。值得注意的是,通过在解决分布式原始问题时执行模型预测控制(基于MPC)的决策来管理固有的多时间复杂性。该配方使分布式决策者能够根据其偏好来重视不确定性和相关风险。最终,分布式决策导致在协调市场清算水平上使用的出价函数。本文的优化方法为下一代监督控制和数据采集(SCADA)提供了支持动态监测和决策系统(DYMOND)的理论基础,用于多层交互式市场实现,其中网格用户遵循其子 - objectives和较高的层坐标互连的子系统和高级系统目标。这表称了为设计安全操作,规划和市场的启用协议而设计的理论上。

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