A Monthly Power Consumption Prediction Method Using Temperature Data Abnormal Point Compensation
A technology of data anomalies and prediction methods, applied in data processing applications, prediction, kernel methods, etc., can solve problems such as low precision, achieve the effect of overcoming low precision and improving the overall prediction accuracy
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[0081] see Figure 1 to Figure 6 , a monthly power consumption prediction method using temperature data abnormal point compensation according to an embodiment of the present invention, comprising the following steps:
[0082] Step 1: Analysis of daily electricity consumption and daily average temperature.
[0083] Based on the robust least squares method, with daily average temperature as the independent variable and daily electricity consumption as the dependent variable, a polynomial regression model is established to explore the relationship between temperature and electricity.
[0084] Select the polynomial regression order p to establish a regression model, the expression is:
[0085]
[0086] Estimation of regression coefficient a by robust least squares method i , the fitting value l′ of daily electricity consumption can be obtained.
[0087] Step 2: Calculate the threshold temperature for temperature data abnormal point compensation.
[0088] The order of the po...
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