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Efficiently solving DSM problems: Are we there yet? A Real World EV Use Case

机译:有效解决DSM问题:我们到了吗?真实世界的电动汽车用例

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With an increasing amount of renewable energy generation, the scheme of supply following demand is no longer viable. As a consequence, aggregating entities (e.g., utilities, service providers) have to find new ways to balance demand and supply in order to guarantee an economic and environmental friendly operation of the energy grid. An approach recently extensively studied is the concept of duration-deadline jointly differentiated energy services that elicits temporal flexibility of the demand side. This paper considers different mathematical models that can be used to solve this demand side management problem applied to an electric vehicle charging use case. A classically applied approach (referred to as classic approach) uses a three-dimensional allocation matrix whereas a specially designed approach for this problem class (referred to as multiple deadline approach) uses majorization theory to answer the questions of adequacy and adequacy gap. These approaches are compared in regard to their time to create and time to solve the optimization problem as well as their sensitivity towards an increasing number of customer, deadline, and scenarios of renewable power generation. The results show that computation time of the classic approach is strongly influenced by the number of scenarios and customers whereas computation time of the multiple deadline approach is strongly influenced by the number of deadlines and scenarios. Neither of the approaches can be described as superior to the other as both react differently to input data. Furthermore, the results show that for a large-scale implementation both approaches must be improved in their complexity to ensure a continuous operation.
机译:随着可再生能源发电量的增加,跟随需求的供应方案不再可行。结果,聚集实体(例如公用事业,服务提供商)必须找到平衡需求和供应的新方法,以保证能源网格的经济和环境友好的运行。最近广泛研究的一种方法是期限-期限联合区分能源服务的概念,它引起需求方的时间灵活性。本文考虑了可用于解决应用于电动汽车充电用例的需求侧管理问题的不同数学模型。经典应用的方法(称为经典方法)使用三维分配矩阵,而针对该问题类别的特殊设计的方法(称为多期限方法)则使用主化理论来回答适当性和适当性差距问题。比较了这些方法的创建时间和解决优化问题的时间,以及它们对越来越多的客户,期限和可再生能源发电方案的敏感性。结果表明,经典方法的计算时间受方案和客户数量的强烈影响,而多期限方法的计算时间受期限和方案的数量的强烈影响。由于这两种方法对输入数据的反应不同,因此无法描述为优于其他方法。此外,结果表明,对于大规模实施,必须提高这两种方法的复杂性,以确保连续操作。

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