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Peak Shaving through Resource Buffering

机译:通过资源缓冲进行调峰

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摘要

We introduce and solve a new problem inspired by energy pricing schemes in which a client is billed for peak usage. At each timeslot the system meets an energy demand through a combination of a new request, an unreliable amount of free source energy (e.g. solar or wind power), and previously received energy. The added piece of infrastructure is the battery, which can store surplus energy for future use. More generally, the demands could represent required amounts of energy, water, or any other tenable resource which can be obtained in advance and held until needed. In a feasible solution, each demand must be supplied on time, through a combination of newly requested energy, energy withdrawn from the battery, and free source. The goal is to minimize the maximum request. In the online version of this problem, the algorithm must determine each request without knowledge of future demands or free source availability, with the goal of maximizing the amount by which the peak is reduced. We give efficient optimal algorithms for the offline problem, with and without a bounded battery. We also show how to find the optimal offline battery size, given the requirement that the final battery level equals the initial battery level. Finally, we give efficient H_n-competitive algorithms assuming the peak effective demand is revealed in advance, and provide matching lower bounds.
机译:我们引入并解决了一个新的问题,该问题受能源定价方案的启发,在该方案中,客户需要为高峰使用付费。在每个时隙,系统通过新请求,不可靠量的自由能源(例如太阳能或风能)和先前接收的能量的组合来满足能量需求。增加的基础设施是电池,它可以存储多余的能量以备将来使用。更一般而言,需求可以代表所需的能源,水或其他任何可持久使用的资源,可以提前获取并保持到需要为止。在可行的解决方案中,必须通过将新请求的能量,从电池中提取的能量和免费能源的组合及时提供给每个需求。目标是最小化最大请求。在此问题的在线版本中,算法必须在不知道未来需求或免费来源可用性的情况下确定每个请求,目的是最大程度地减少峰值。对于有或没有电池限制的离线问题,我们提供了有效的最佳算法。考虑到最终电池电量等于初始电池电量的要求,我们还将展示如何找到最佳的离线电池尺寸。最后,我们给出了有效的H_n竞争算法,前提是预先揭示了峰值有效需求,并提供了匹配的下界。

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