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Mean-field-type optimization for demand-supply management under operational constraints in smart grid

机译:智能电网中运营约束下的供需管理均值场类型优化

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The electricity business depends significantly on continuous, cost-effective sources of electricity, the efficient reaction to the demand and storage cost. But the increasing demands and alternative renewable energy sources on the power grid are causing instability and price volatility. Smart grid technology and programs are emerging to address these problems. In this paper we study demand-supply management under operational constraints and outage scheduling. We consider a model of an electricity market in which finite number of suppliers offer electricity. Each supplier has several power plants with different maximum capacity of production and different cost depending on the operational constraints. The response of the market to these offers is the quantities bought from the suppliers. The objective of the market is to satisfy the electricity demand at minimal cost. We develop a theoretical framework for cooperative production strategies between electricity producers. We formulate the problem as an optimal control problem under constraints. Using maximum principle techniques, we provide closed-form expressions of thejoint production efforts between the electricity producers. Applying inf-convolution technique to the Hamiltonian we transform the multiple variable optimization problem into a single-variable optimization problem, reducing significantly the curse of dimensionality. In order to capture the random nature of most of the renewable energy sources, we introduce stochastic demand and stochastic production variabilities. We derive closed-form expressions using mean-field-type optimization techniques. The framework is shown to be flexible enough to include both risk-neutral and risk-sensitive behavior of a decision-maker when facing uncertainties.
机译:电力业务在很大程度上取决于持续的,具有成本效益的电力来源,对需求的有效反应以及存储成本。但是,不断增长的需求和对电网的可再生可替代能源正在引起不稳定和价格波动。智能电网技术和计划正在兴起以解决这些问题。在本文中,我们研究了在运营约束和停运计划下的需求供应管理。我们考虑一个电力市场模型,其中有限数量的供应商提供电力。每个供应商都有几个发电厂,这些发电厂的最大生产能力和成本取决于运行限制。市场对这些报价的反应是从供应商那里购买的数量。市场的目标是以最小的成本满足电力需求。我们为电力生产商之间的合作生产策略建立了理论框架。我们将该问题表述为约束条件下的最优控制问题。使用最大原理技术,我们提供了电力生产商之间联合生产努力的封闭形式。将inf卷积技术应用于哈密顿量,我们将多变量优化问题转换为单变量优化问题,从而显着降低了维数的诅咒。为了捕获大多数可再生能源的随机性,我们介绍了随机需求和随机生产变化。我们使用均值字段类型优化技术推导闭式表达式。该框架显示出足够的灵活性,可以在面临不确定性时包括决策者的风险中立行为和风险敏感行为。

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