A method of combining three analytic techniques including regression rule induction, the k-nearest neighbors method and time series forecasting by means of the ARIMA methodology is presented. A decrease in the forecasting error while solving problems that concern natural hazards and machinery monitoring in coal mines was the main objective of the combined application of these techniques. The M5 algorithm was applied as a basic method of developing prediction models. In spite of an intensive development of regression rule induction algorithms and fuzzy-neural systems, the M5 algorithm is still characterized by the generalization ability and unbeatable time of data model creation competitive with other systems. In the paper, two solutions des...
Although artificial neural networks are occasionally used in forecasting future sales for manufactur...
Time series data comprises several components; Trend, Seasonal variations, cyclical variations and i...
Master's thesis in Computer scienceExploratory data analysis and predictive analytics can be used to...
Most management decisions at all levels of the organization are as directly or indirectly depends on...
This study implements an Autoregressive Integrated Moving Average (ARIMA) model to forecast total co...
The results of experimental studies of the effect of thermal action on the main elements of the cutt...
In order to improve the prediction accuracy of mining safety production situation and remove the dif...
Prognostics is very useful to predict the degradation trend of machinery and to provide an alarm bef...
Sustainable development of mining technologies implies the introduc-tion and implementation of the k...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
In order to develop a method for forecasting the costs generated by rock and gas outbursts for hard ...
This paper is about modeling of chaotic systems via nearest neighbor approach. This approach holds t...
Natural hazards are significant problems that every year cause important loses around the world. A g...
Open access to SAR data from the Sentinel 1 missions allows analyses of long-term ground surface cha...
Climate and rainfall are highly non-linear and complicated phenomena, which require sophisticated co...
Although artificial neural networks are occasionally used in forecasting future sales for manufactur...
Time series data comprises several components; Trend, Seasonal variations, cyclical variations and i...
Master's thesis in Computer scienceExploratory data analysis and predictive analytics can be used to...
Most management decisions at all levels of the organization are as directly or indirectly depends on...
This study implements an Autoregressive Integrated Moving Average (ARIMA) model to forecast total co...
The results of experimental studies of the effect of thermal action on the main elements of the cutt...
In order to improve the prediction accuracy of mining safety production situation and remove the dif...
Prognostics is very useful to predict the degradation trend of machinery and to provide an alarm bef...
Sustainable development of mining technologies implies the introduc-tion and implementation of the k...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
In order to develop a method for forecasting the costs generated by rock and gas outbursts for hard ...
This paper is about modeling of chaotic systems via nearest neighbor approach. This approach holds t...
Natural hazards are significant problems that every year cause important loses around the world. A g...
Open access to SAR data from the Sentinel 1 missions allows analyses of long-term ground surface cha...
Climate and rainfall are highly non-linear and complicated phenomena, which require sophisticated co...
Although artificial neural networks are occasionally used in forecasting future sales for manufactur...
Time series data comprises several components; Trend, Seasonal variations, cyclical variations and i...
Master's thesis in Computer scienceExploratory data analysis and predictive analytics can be used to...