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首页> 外文期刊>Applied Energy >A stochastic dynamic building stock model for determining long-term district heating demand under future climate change
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A stochastic dynamic building stock model for determining long-term district heating demand under future climate change

机译:一种随机动态建筑股模型,用于在未来的气候变化下确定长期区供暖需求

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摘要

District heating networks will face major changes on the demand side resulting from future demographic change, building energy efficiency improvements and climate change in cities. A stochastic dynamic building stock model was developed to investigate the impact of climate change and renovation strategies on district heat demand. The model was applied to a representative city in Finland comprising 3880 real buildings with hourly-resolution data, for which heat demand scenarios for buildings were simulated up to 2050 using results from global and regional climate change models. The novel stochastic dynamic building stock model utilises the real building stock as a basis and considers demolition, construction of new buildings and renovation of existing buildings. It is used in the precised dynamic heat demand model (mean MAPE 7.7%) to calculate the future heat demand. Model outputs indicated that early adoption of building renovation will decrease long-term energy consumption by 3% for every 0.5% increase in the renovation rate by 2050. Increasing the yearly renovation rate from the current 1% to 3% could reduce the district heat demand by 22% (range 19 & ndash;28%). Early adoption of building renovation could reduce the relative peak load by 50% compared with late adoption. Climate change will reduce the overall heat demand for district heating but will increase the annual relative daily variation from 3.6% to 4.5%, meaning that the peaks in heat demand will be more visible.
机译:区域供暖网络将面临未来人口变化导致的需求方面的重大变化,建立城市的能源效率改善和气候变化。开发了一种随机动态建筑股模型,探讨了气候变化和改造策略对地区热需求的影响。该模型适用于芬兰的代表城市,包括3880个真实建筑,具有每小时分辨率的数据,其中建筑物的热需求方案使用全球和区域气候变化模型的结果模拟高达2050。新型随机动态建筑股模型利用真正的建筑物作为基础,并考虑拆除,建造新建筑和现有建筑的翻新。它用于精确的动态热需求模型(平均MAPE 7.7%)来计算未来的热量需求。模型产出表明,早期采用的建筑改造将减少3%,每次0.5%的翻新率增加到2050年。从目前的1%达到3%的年度翻新率增加了每年的重新化率可以降低地区的热量需求22%(范围19– 28%)。早期采用建筑改造可以将相对峰值负荷降低50%,与后期采用相比。气候变化将降低地区供暖的总体热量需求,但将增加每日相对日常变异从3.6%到4.5%,这意味着热需求的峰值将更加明显。

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