Supporting tool for multi-scale energy planning through procedures of data enrichment

被引:0
|
作者
Miguel-Herrero F.J. [1 ]
Serna-González V.I. [1 ]
Hernández-Moral G. [1 ]
机构
[1] Fundación CARTIF, Parque Tecnológico de Boecillo, 205, Boecillo, 47151, Valladolid
关键词
Building typologies; Cadastre; Data enrichment; Energy performance certificates; Energy planning;
D O I
10.5278/ijsepm.3345
中图分类号
学科分类号
摘要
Considering the challenge of evaluation of the urban environment from the energy point of view, there is plenty of room to improve the resources currently managed by users, enterprises and public institutions. The goal is to create a tool that supports in the decision making in the energy planning process in specific areas by automatically estimating the energy demand and consumption of buildings using public data and representing the results in a geo-referenced way. The tool will provide a better understanding of what the current status of the buildings is, providing these stakeholders with a larger quantity of useful data about the city environment, including not only the geometric information present in cadastre repositories, but also the data collected from the Energy Performance Certificates (EPCs). In this case, the data from the cadastre repository are combined with the EPCs for each province, with data about the demanded and consumed energy. The objective is to generate a set of buildings typologies for each province with estimated values for the demand and consumption for each building type. These typologies could be used to generate a map with the energetic values for any municipality of this province. These results can be injected into GIS (Geographic Information Systems) tools that could show these data in order to evaluate the energy demand/consumption of the municipality easing the energy planning decision-making process, or even into databases for further uses. © 2019, Aalborg University press. All rights reserved.
引用
收藏
页码:125 / 134
页数:9
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