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A Stochastic Optimal Control Approach for Exploring Tradeoffs between Cost Savings and Battery Aging in Datacenter Demand Response

机译:探索数据中心需求响应中成本节省与电池老化之间的折衷的随机最优控制方法

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This brief paper optimizes power management for datacenters employing lithium-ion battery storage, with the specific goal of addressing the tradeoff between: 1) the cost saving achievable through the peak demand shaving and 2) the corresponding battery aging. To the best of the authors' knowledge, this tradeoff has never been addressed using physics-based models of battery performance and degradation combined with stochastic models of datacenter demand. We build: 1) a Markov chain model of datacenter power demand; 2) a second-order model of battery diffusion/reaction dynamics; and 3) a physics-based model of battery aging via solid electrolyte interphase growth. Together, these models enable the solution of the battery health-conscious demand response problem via stochastic dynamic programming (SDP). A penalty function is used for enforcing a datacenter “power cap” within this SDP problem. By varying this power cap, we traverse the Pareto tradeoff between the cost savings due to demand response and battery health degradation.
机译:这篇简短的论文针对采用锂离子电池存储的数据中心优化了电源管理,其具体目标是解决以下问题之间的权衡:1)通过削减峰值需求可节省成本,以及2)相应的电池老化。据作者所知,这种折衷从未使用基于物理的电池性能和退化模型与数据中心需求的随机模型相结合来解决。我们建立:1)数据中心电力需求的马尔可夫链模型; 2)电池扩散/反应动力学的二阶模型; 3)基于物理模型的固体电解质相间生长导致电池老化的模型。这些模型一起可以通过随机动态编程(SDP)解决关注电池健康的需求响应问题。惩罚功能用于在此SDP问题中强制执行数据中心“功率上限”。通过更改此功率上限,我们可以在因需求响应而导致的成本节省与电池运行状况恶化之间进行帕累托折衷。

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