The analysis of big data to predict future trends in sustainable and smart construction
Keywords:
sustainable construction, smart buildingAbstract
The idea of sustainable development will become increasingly important which has been globally evolved. Big data has been collected through a variety of sensors and channels worldwide, both structured and unstructured, is regarded as one of the most crucial instruments for developing policy and identifying the future trend of sustainable and smart buildings. As a result, it is essential to comprehend the global parallels and differences in sustainable and smart construction in order to learn about technological innovation. In order to analyze and predict trends in the sustainable and smart building industry, this study aims to identify the area of data in a qualitative fashion and extract it from big data.
Four civil engineering specialists and one data scientist were chosen for interviews for a study on civil construction that used the qualitative research methodology.
In this research, 12 environmental fields, 10 social fields, and 7 economic fields in the three aspects of sustainable construction, as well as 14 fields regarding the characteristics of smart buildings, have been identified through interviews.
The results indicate that a more in-depth content interpretation and analysis based on gathering data from each point of the world through collecting big data about types of construction, materials, construction waste, and demolition may improve predictions about future trends and strategies in sustainable and smart buildings.
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