Festival and holiday wireless flow prediction method, system and device based on correlation clustering hybrid algorithm model and medium
A correlation clustering and hybrid algorithm technology, applied in the field of wireless traffic forecasting, can solve problems such as error interference and limited traffic forecasting effect, reduce the number of models, and improve the effect of traffic usage experience
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Embodiment 1
[0070] A holiday wireless traffic prediction method based on a correlation clustering hybrid algorithm model, which is used to predict the traffic of a base station sector, such as Figure 8 As shown, the specific steps include:
[0071] Step 1) Define the holiday weights according to the different dates; the importance of each day is represented by the holiday weights, and the higher the holiday coefficient, the indicating that the date is an important holiday;
[0072] Step 2) calculating the holiday coefficient of the base station sector according to the holiday weight;
[0073] Step 3) Classify the traffic patterns of all base station sectors according to the holiday coefficient;
[0074] Step 4) Use linear regression algorithm, long short-term memory algorithm, random forest regression algorithm, and support vector regression algorithm to jointly construct a hybrid algorithm model; choose multiple algorithms to jointly construct a hybrid algorithm model in order to simul...
Embodiment 2
[0078] According to the holiday wireless traffic forecasting method based on the correlation clustering hybrid algorithm model provided in Embodiment 1, the difference is that:
[0079] In step 1), the holiday weights are defined according to different dates, specifically:
[0080] (1) When forecasting traffic on holidays other than the Spring Festival: the weight of holidays on weekdays is 0, the weight of non-holiday weekends and winter and summer vacations is 1, the holiday weight of days with holidays less than or equal to three days is 3, and the holidays with a length of more than three days The holiday weight of the day's date is 5, and the holiday weight of the seven days before the Spring Festival is assigned as 3, and the holiday weight of the seven days after the Spring Festival is assigned as 7; since the Spring Festival is the most important festival in China, its duration is also different from general holidays. Although the period before the Spring Festival is n...
Embodiment 3
[0121] According to the holiday wireless traffic forecasting method based on the correlation clustering hybrid algorithm model provided in Embodiment 2, the difference is that:
[0122] According to the wireless prediction result obtained in step 6), the base station is adjusted and deployed, specifically:
[0123] When the prediction results show that the traffic usage of a certain base station sector increases by more than 50% during holidays, the resource expansion of the base station sector or the power of the base station sector shall be carried out 3 days in advance to ensure the user experience;
[0124] When the prediction results show that the traffic usage of a certain base station sector is reduced by more than 50% during holidays, the power of the base station sector is reduced to reduce operating costs and achieve low-carbon operation.
[0125] Use the traffic data of actual operators to perform performance verification on the model proposed by the present inventi...
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