A fuzzy mining approach for energy efficiency in a big data framework
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URI: https://hdl.handle.net/10481/99237Metadata
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2020Abstract
The discovery and exploitation of hidden information
in collected data have gained attention in many areas, particularly
in the energy field due to their economic and environmental impact.
Data mining techniques have then emerged as a suitable toolbox
for analyzing the data collected in modern network management
systems in order to obtain a meaningful insight into consumption
patterns and equipment operation.However, the enormous amount
of data generated by sensors, occupational, and meteorological
data involve the use of new management systems and data processing.
Big Data presents great opportunities for implementing
new solutions to manage these massive data sets. In addition, these
data present values whose nature complicates and hides the understanding
and interpretation of the data and results. Therefore,
the use of fuzzy methods to adequately transform the data can
improve their interpretability. This article presents an automatic
fuzzification method implemented using the Big Data paradigm,
which enables, in a later step, the detection of interrelations and
patterns among different sensors and weather data recovered from
an office building.