A survey : Predictive Model Based Electrical Consumption
Keywords:
Data Mining, Electricity ConsumptionAbstract
The data mining is the task of analyzing of large quantities of data to derive previously unknown, interesting patterns such as groups of data records, unusual records, and dependencies. It has the ability to turn raw data into useful information. One of the important invention of mankind is electricity. It is considered as a blessing. The availability of this power is very much needed for development and economical stability of the nations. The electricity board in various states and countries perform tasks such as generation, transportation and distribution of electricity to its customers effectively. In this study the various data mining techniques are applied to derive information from the electricity consumption databases.
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