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Heat demand estimation for different building types at regional scale considering building parameters and urban topography

机译:考虑建筑参数和城市地质的区域规模不同建筑类型的热需求估算

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This study aims towards an improved estimation of annual heat demand of the building stock for an entire region. This requires the holistic representation of aspects influencing the heat demand of buildings, namely their geometry, fabric, users and surrounding environment. A large data base for the building stock of the Swiss canton of Geneva was systematically assessed to identify parameters suited for representation of these aspects. Due to the expectable differences in heat demand, the building stock was categorized into 8 building types. For each type a multiple linear regression model was developed to predict the heat demand. An aspect which has so far been neglected by regression models of buildings' heat demand is the influence of microclimate. Since this aspect is considerably influenced by the surrounding topography, parameters suited for the representation of the urban topography were defined and included in the regression. The regression analysis revealed that all models were able to explain high shares of the variance (R2: 71.2% to 88.9%). The mean average errors for hotel, health-care, educational and office buildings were ranging between 30.2% and 39.8% while the error for residential buildings was 17.8%. The suitability and of the selected parameters for heat demand prediction was analyzed in detail for the residential building model and revealed that almost all chosen parameters were highly suited.
机译:本研究旨在改善整个地区建筑物股票的年热需求估算。这要求影响建筑物的热量需求的整体表示,即它们的几何形状,面料,用户和周围环境。系统地评估了瑞士日内瓦瑞士广州的建筑股票的大型数据库,以识别适合于这些方面的代表的参数。由于预期的热量需求差异,建筑物股票分为8种建筑类型。对于每种类型,开发了多元线性回归模型以预测热需求。到目前为止,建筑物热需求的回归模型已经忽略了一个方面是微气密的影响。由于这方面受到周围地形的显着影响,因此定义了适用于城市地形表示的参数并包括在回归中。回归分析表明,所有模型都能够解释方差的高股(R2:71.2%至88.9%)。酒店,医疗保健,教育和办公楼的平均平均错误在30.2%和39.8%之间,而住宅建筑物的错误是17.8%。为住宅建筑模型详细分析了用于热需求预测的所选参数的适用性和所选参数,并透露几乎所有所选参数都非常适合。

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