Intelligent Energy Management Systems -- A Review
- URL: http://arxiv.org/abs/2206.03264v1
- Date: Mon, 16 May 2022 20:10:20 GMT
- Title: Intelligent Energy Management Systems -- A Review
- Authors: Stavros Mischos, Eleanna Dalagdi, Dimitris Vrakas
- Abstract summary: People consume electricity in order to use home/work appliances and devices and also reach certain levels of comfort while working or being at home.
Confronting such a problem efficiently will affect both the environment and our society.
Monitoring energy consumption in real-time, changing energy wastage behavior of occupants and using automations with incorporated energy savings scenarios are ways to decrease global energy footprint.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Climate change has become a major problem for humanity in the last two
decades. One of the reasons that caused it, is our daily energy waste. People
consume electricity in order to use home/work appliances and devices and also
reach certain levels of comfort while working or being at home. However, even
though the environmental impact of this behavior is not immediately observed,
it leads to increased CO2 emissions coming from energy generation from power
plants. Confronting such a problem efficiently will affect both the environment
and our society. Monitoring energy consumption in real-time, changing energy
wastage behavior of occupants and using automations with incorporated energy
savings scenarios, are ways to decrease global energy footprint. In this
review, we study intelligent systems for energy management in residential,
commercial and educational buildings, classifying them in two major categories
depending on whether they provide direct or indirect control. The article also
discusses what the strengths and weaknesses are, which optimization techniques
do they use and finally, provide insights about how these systems can be
improved in the future.
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