The paper propose a parallel load forecasting method based on random forest algorithm, through the analysis of historical load, temperature, wind speed and other data, the algorithm can shorten the load forecasting time and improve the processing capability of large data. This paper also designs and implements parallel load forecasting prototype system based on power user side large data of a Hadoop, including data cluster management, data management, prediction classification algorithm library and other functions. The experimental results show that the accuracy of parallel stochastic forest algorithm is obviously higher than decision tree, and the prediction accuracy on the different data sets is generally higher than decision tree, and it...
In the big data era, learning-based techniques have attracted more and more attention in many indust...
Big Data is a recent research style which brings up challenges in decision making process. The size ...
The object of research is the process of choosing a method for predicting continuous numerical featu...
The paper propose a parallel load forecasting method based on random forest algorithm, through the a...
Accurate power load prediction plays an important role in the design of power distribution equipment...
The prediction accuracy of short-term load forecast (STLF) depends on prediction model choice and fe...
Because of the limitation of basic data and processing methods, the traditional load characteristic ...
With the emergence of the big data age, the issue of how to obtain valuable knowledge from a dataset...
With the emergence of the big data age, the issue of how to obtain valuable knowledge from a dataset...
International audienceThis paper presents a short-term electric load forecasting method based on Aut...
One of the greatest challenge that meteorological department faces are to predict weather accurately...
Random forest (RF) is one of the most popular machine learning (ML) models used for both classificat...
In the presence of the deregulated electric industry, load forecasting is more demanded than ever to...
With the continuous development of new power systems, the load demand on the user side is becoming m...
Traditional forecasting approaches forecast the total system load directly without considering the i...
In the big data era, learning-based techniques have attracted more and more attention in many indust...
Big Data is a recent research style which brings up challenges in decision making process. The size ...
The object of research is the process of choosing a method for predicting continuous numerical featu...
The paper propose a parallel load forecasting method based on random forest algorithm, through the a...
Accurate power load prediction plays an important role in the design of power distribution equipment...
The prediction accuracy of short-term load forecast (STLF) depends on prediction model choice and fe...
Because of the limitation of basic data and processing methods, the traditional load characteristic ...
With the emergence of the big data age, the issue of how to obtain valuable knowledge from a dataset...
With the emergence of the big data age, the issue of how to obtain valuable knowledge from a dataset...
International audienceThis paper presents a short-term electric load forecasting method based on Aut...
One of the greatest challenge that meteorological department faces are to predict weather accurately...
Random forest (RF) is one of the most popular machine learning (ML) models used for both classificat...
In the presence of the deregulated electric industry, load forecasting is more demanded than ever to...
With the continuous development of new power systems, the load demand on the user side is becoming m...
Traditional forecasting approaches forecast the total system load directly without considering the i...
In the big data era, learning-based techniques have attracted more and more attention in many indust...
Big Data is a recent research style which brings up challenges in decision making process. The size ...
The object of research is the process of choosing a method for predicting continuous numerical featu...