District heating is a network of pipes through which heat is delivered from a centralised source. It is expected to play an important role in the decarbonisation of the energy sector in the coming years. In district heating, heat is traditionally generated through fossil fuels, often with combined heat and power (CHP) units. However, increasingly, waste heat is being used as a low carbon alternative, either directly or, for low temperature sources, via a heat pump. The design of district heating often has competing objectives: the need for inexpensive energy and meeting low carbon targets. In addition, the planning of district heating schemes is subject to multiple sources of uncertainty such as variability in heat demand and energy prices. This paper proposes a decision support tool to analyse and compare system designs for district heating under uncertainty using stochastic ordering (dominance). Contrary to traditional uncertainty metrics that provide statistical summaries and impose total ordering, stochastic ordering is a partial ordering and operates with full probability distributions. In our analysis, we apply the orderings in the mean and dispersion to the waste heat recovery problem in Brunswick, Germany.
翻译:地区供暖是一个管道网络,通过集热源输送热量,预计在未来几年能源部门的去碳化中将发挥重要作用。在地区供暖中,热量传统上通过化石燃料产生,通常使用热电合用单位。然而,废物热量越来越多地被用作低碳替代物,无论是直接还是低温来源,通过热泵进行。地区供暖的设计往往具有相互竞争的目标:需要廉价能源和达到低碳目标。此外,地区供暖计划的规划还受到多种不确定来源的影响,如热需求和能源价格的波动。本文建议了一种决策支持工具,用以分析和比较不确定性下的地区供暖系统设计,使用随机命令(优势)。与提供统计摘要和强制总订购的传统不确定性指标相反,随机性命令是部分订购,并且以全部概率分布进行操作。我们的分析是,在德国不伦瑞克省废物供热回收问题的平均和分散点中,我们采用平均和分散的订单。