Accurate generation prediction at multiple time-steps is of paramount importance for reliable and economical operation of wind farms. This study proposed a novel algorithmic solution using various forms of machine learning techniques in a hybrid manner, including phase space reconstruction (PSR), input variable selection (IVS), K-means clustering and adaptive neuro-fuzzy inference system (ANFIS). The PSR technique transforms the historical time series into a set of phase-space variables combining with the numerical weather prediction (NWP) data to prepare candidate inputs. A minimal redundancy maximal relevance (mRMR) criterion based filtering approach is used to automatically select the optimal input variables for the multi-step ahead pred...
<div><p>In this paper, the suitability and performance of ANFIS (adaptive neuro-fuzzy inference syst...
Wind turbines are increasing in popularity as a power source around the world, and are among the che...
Large scale integration of renewable energy system with classical electrical power generation system...
This study introduces a novel hybrid forecasting model for wind power generation. It integrates Arti...
Renewable energy becomes progressively popular in the world because renewable resources such as sola...
Wind power generation output is highly uncertain, since it entirely depends on intermittent environm...
Wind energy has an increasing influence on the energy supply in many countries, but in contrast to c...
The intermittency and uncertainty of wind power result in challenges for large-scale wind power inte...
Wind energy is having an increasing influence on the energy supply in many countries, but in contras...
One of the greatest challenges of the wind energy nowadays is the delivery of its power output into...
Abstract Determination of the output power of wind generators is always associated with some uncerta...
International audienceThis study proposes an original adaptive neuro-fuzzy inference system modeling...
Higher proportion wind power penetration has great impact on grid operation and dispatching, intelli...
In the wake of the ever growing level of wind power penetration into the electric grid, many a chall...
The ability to precisely forecast power generation for large wind farms is very important, since suc...
<div><p>In this paper, the suitability and performance of ANFIS (adaptive neuro-fuzzy inference syst...
Wind turbines are increasing in popularity as a power source around the world, and are among the che...
Large scale integration of renewable energy system with classical electrical power generation system...
This study introduces a novel hybrid forecasting model for wind power generation. It integrates Arti...
Renewable energy becomes progressively popular in the world because renewable resources such as sola...
Wind power generation output is highly uncertain, since it entirely depends on intermittent environm...
Wind energy has an increasing influence on the energy supply in many countries, but in contrast to c...
The intermittency and uncertainty of wind power result in challenges for large-scale wind power inte...
Wind energy is having an increasing influence on the energy supply in many countries, but in contras...
One of the greatest challenges of the wind energy nowadays is the delivery of its power output into...
Abstract Determination of the output power of wind generators is always associated with some uncerta...
International audienceThis study proposes an original adaptive neuro-fuzzy inference system modeling...
Higher proportion wind power penetration has great impact on grid operation and dispatching, intelli...
In the wake of the ever growing level of wind power penetration into the electric grid, many a chall...
The ability to precisely forecast power generation for large wind farms is very important, since suc...
<div><p>In this paper, the suitability and performance of ANFIS (adaptive neuro-fuzzy inference syst...
Wind turbines are increasing in popularity as a power source around the world, and are among the che...
Large scale integration of renewable energy system with classical electrical power generation system...