Residential electricity consumption mid-term load prediction method under multistep electricity price mechanism

A residential electricity consumption and load forecasting technology, applied in forecasting, data processing applications, marketing, etc., can solve the problems of not being able to reveal different behaviors and ignoring the differences in electricity consumption behaviors, and achieve the effect of accurate mid-term load forecasting and improved forecasting accuracy

Inactive Publication Date: 2015-12-02
QUANZHOU POWER SUPPLY COMPANY OF STATE GRID FUJIAN ELECTRIC POWER +1
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AI Technical Summary

Problems solved by technology

The traditional total quantity forecast establishes the average user behavior model, which cannot reveal the different beha...

Method used

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  • Residential electricity consumption mid-term load prediction method under multistep electricity price mechanism
  • Residential electricity consumption mid-term load prediction method under multistep electricity price mechanism
  • Residential electricity consumption mid-term load prediction method under multistep electricity price mechanism

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Embodiment

[0096] This embodiment takes 533 households in a certain area as an example to analyze. Since the meter reading day in this area is the 11th, we use the electricity consumption data from April 11, 2014 to January 10, 2015 as the training set. In 2015 The electricity consumption data from January 11 to February 10 was used as a test set for experiments.

[0097] The data preparation phase mainly includes:

[0098] (1) Data preprocessing: Since the residential electricity consumption data collected by smart meters are cumulative values, the calculation of the daily electricity consumption of each user needs to be done by subtracting the electricity consumption of the previous day from the accumulated electricity consumption value of the current day Cumulative value;

[0099] (2) Missing value processing: After preprocessing, it is necessary to detect whether there is a missing phenomenon in the data. Completing the missing data by calculating the difference between the cumulativ...

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Abstract

The invention relates to a residential electricity consumption mid-term load prediction method under a multistep electricity price mechanism. At first, the residential electricity consumption data is acquired, the attributive characters of residential electricity consumption behaviors under the multistep electricity price mechanism are extracted, different electricity consumption behavior characters of the residents under the multistep electricity price mechanism can be identified through cluster analysis, and the users having same or similar electricity consumption behavior characters are clustered into the same user category; corresponding load prediction models are established for the user categories, and the predication is carried out; at the end, the predication results of the user categories are summarized. The multistep electricity price related indexes are innovatively introduced into a clustering model, and the mid-term load prediction can be better carried out by means of the accurate and comprehensive data provided by a smart electric meter. Compared with a conventional manner that the data acquisition is carried out every 15 minutes, the method provided performs the mid-term prediction with fewer data sampling points (data per day) under the premise of guaranteeing the precision.

Description

technical field [0001] The invention relates to the fields of load forecasting and data mining, and more specifically, relates to a mid-term load forecasting method for residents' electricity consumption under a ladder electricity price mechanism. Background technique [0002] Since the implementation of the tiered electricity price for residents, initial results have been achieved, and to a certain extent, residents' awareness of energy conservation has been enhanced, and some bad habits of electricity consumption have been changed. Under the traditional single low-price electricity price system, the difference in electricity consumption behavior (rather than electricity consumption) among user groups with different characteristics is not obvious. [0003] However, under the new tiered electricity price system, user groups with different characteristics (such as income, family structure, living habits, etc.) will have different responses to the tiered electricity price, and...

Claims

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Application Information

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IPC IPC(8): G06Q10/04G06Q30/02G06Q50/06
Inventor 蔡秀雯王铮傅馨曾晓军冷钢
Owner QUANZHOU POWER SUPPLY COMPANY OF STATE GRID FUJIAN ELECTRIC POWER
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