环境科学
调峰发电厂
工程类
汽车工程
计算机科学
电气工程
可再生能源
分布式发电
作者
Ulrich Trabert,Felix Pag,Janybek Orozaliev,Ulrike Jordan,Klaus Vajen
出处
期刊:Energy
[Elsevier BV]
日期:2024-05-20
卷期号:301: 131690-131690
被引量:5
标识
DOI:10.1016/j.energy.2024.131690
摘要
The decarbonisation of urban district heating (DH) systems requires increased heating grid flexibility. Therefore, this article examines the optimised operation of a tank thermal energy storage (TTES) on the secondary side of a new DH substation for an industrial site in a German city, in order to shave the peaks of the whole DH system and thus reduce the need for heat-only boilers (HOB). The accuracy of heat load and return temeprature forecasts for both the industrial consumer and the DH grid is critical to the performance of the optimisation-based operating strategy of the TTES. Therefore, long short-term memory neural networks are used in combination with continuous model updates through incremental learning to create two forecasting scenarios, one using only preceding data for the forecasts and the other including future weather data. The results show that high forecasting accuracy is most relevant for reducing the annual maximum peak, with a reduction of 2.8% in the preceding data scenario, 4% with future weather data and 7% in a benchmark with perfect forecasts. The economic viability of the storage through HOB heat savings is primarily affected by lower forecasting accuracy when the additional cost of HOB heat is less than 60 €/MWh.
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