Theoretic analysis shows that the output power of the distributed generation system is nonlinear and chaotic. And it is coupled with the microenvironment meteorological data. Chaos is an inherent property of nonlinear dynamic system. A predicator of the output power of the distributed generation system is to establish a nonlinear model of the dynamic system based on real time series in the reconstructed phase space. Firstly, chaos should be detected and quantified for the intensive studies of nonlinear systems. If the largest Lyapunov exponent is positive, the dynamical system must be chaotic. Then, the embedding dimension and the delay time are chosen based on the improved C-C method. The attractor of chaotic power time series can be recon...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
Rotary kiln temperature forecasting plays a significant part of the automatic control of the sinteri...
AbstractIn this paper, we propose a method to predict ultra-short term wind power production with ch...
Abstract: Wind power prediction is one of the most significant technologies to promote the capabilit...
In this article, two models of the forecast of time series obtained from the chaotic dynamic systems...
A unique technique based on chaos theory and artificial neural networks (ANN) is developed to analys...
Electricity demand forecasting plays an important role in electric power systems planning. In this p...
This paper presents a model for power load forecasting using support vector machine and chaotic time...
Abstract: This paper presents a model for power load forecasting using support vector machine and ch...
The uncertainty and regularity of wind power generation are caused by wind resources’ intermittent a...
In this works, artificial neural network is com-bined with wavelet analysis for the forecast of sola...
Four archetypal chaotic maps are used to generate the noise-free synthetic datasets for the forecast...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
In this paper, carbon emissions and the related problems are studied based on carbon emission time s...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
Rotary kiln temperature forecasting plays a significant part of the automatic control of the sinteri...
AbstractIn this paper, we propose a method to predict ultra-short term wind power production with ch...
Abstract: Wind power prediction is one of the most significant technologies to promote the capabilit...
In this article, two models of the forecast of time series obtained from the chaotic dynamic systems...
A unique technique based on chaos theory and artificial neural networks (ANN) is developed to analys...
Electricity demand forecasting plays an important role in electric power systems planning. In this p...
This paper presents a model for power load forecasting using support vector machine and chaotic time...
Abstract: This paper presents a model for power load forecasting using support vector machine and ch...
The uncertainty and regularity of wind power generation are caused by wind resources’ intermittent a...
In this works, artificial neural network is com-bined with wavelet analysis for the forecast of sola...
Four archetypal chaotic maps are used to generate the noise-free synthetic datasets for the forecast...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
In this paper, carbon emissions and the related problems are studied based on carbon emission time s...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
Rotary kiln temperature forecasting plays a significant part of the automatic control of the sinteri...
AbstractIn this paper, we propose a method to predict ultra-short term wind power production with ch...