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Survey on Electricity Consumption using Data Mining Techniques


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1 Department of Computer Science, Government arts college, Udumalpet-642126, India
 

Electric energy consumption is the extent of energy or power used. This is the actual energy stipulate made on existing electricity supply. The biggest reason why it is important to be energy conscious and why to make every effort to conserve our electricity are conservation can save our money and Fossil fuels are not a clean source of energy either. Conservation of electrical energy can help to reduce greenhouse gas emissions. Data mining is one of the effective methods to analyze the electricity consumption. Data mining is the process of discovering useful patterns from the database. Association rule and K-means clustering has widely used data mining technique to analyze the electricity consumption.

Keywords

Association Rule, Data Mining, Electricity Consumption, K-Means Clustering, MATLAB, WEKA.
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  • Survey on Electricity Consumption using Data Mining Techniques

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Authors

K. Kalaiselvi
Department of Computer Science, Government arts college, Udumalpet-642126, India
J. Abdul Samath
Department of Computer Science, Government arts college, Udumalpet-642126, India

Abstract


Electric energy consumption is the extent of energy or power used. This is the actual energy stipulate made on existing electricity supply. The biggest reason why it is important to be energy conscious and why to make every effort to conserve our electricity are conservation can save our money and Fossil fuels are not a clean source of energy either. Conservation of electrical energy can help to reduce greenhouse gas emissions. Data mining is one of the effective methods to analyze the electricity consumption. Data mining is the process of discovering useful patterns from the database. Association rule and K-means clustering has widely used data mining technique to analyze the electricity consumption.

Keywords


Association Rule, Data Mining, Electricity Consumption, K-Means Clustering, MATLAB, WEKA.

References