Power Consumption State Evaluation of Important Power Customers Based on
AHP-TOPSIS Algorithm
Abstract
In order to ensure the power safety of important power customers, a new
evaluation of power consumption status of important power customers
based on the AHP(Analytic Hierarchy Process)-TOPSIS(Technique for Order
Preference by Similarity to an Ideal Solution) algorithm is proposed by
fully mining and applying the power big data. Firstly, a power
consumption big data analysis platform based on the Hadoop architecture
is built to provide a high-performance platform support for big data
analysis. Secondly, nine evaluation indexes are constructed from the
three dimensions of voltage, load and synthesis, which objectively and
scientifically describes the power consumption status of important power
customers. Finally, the AHP-TOPSIS algorithm is used to evaluate and
analyze the voltage, load and comprehensive indicators respectively,
thus, obtaining the evaluation values of three kinds of indicators. The
power consumption status scores of important power customers are
determined by the variable weight weighted summation. The rationality
and feasibility of the method and algorithm are proved by example
analysis and field verification. This method helps to promote the
transformation from post fault emergency repair to warning beforehand.
It has the multiple effects of ensuring safe power consumption,
supporting accurate patrolling and active emergency repair serving.