In this study, measure-correlate-predict (MCP) algorithms - Simple Linear Regression and Variance Ratio Methods - for predicting wind speed were studied. The MCP algorithms were successfully used to predict missing wind speeds at two sites in Jyväskylä and Viitasaari, respectively. These two algorithms used data from one of the site to predict missing wind speed data at the other site. The results obtained using the MCP methods were compared using metrics that showed the characteristics of the predicted data to be unbiased compared to measured data. From the data of this study, we also evaluated wind power density at both sites which categorized the local wind resources as poor since the determined wind power densities were less than 100 W/...
The quality of wind data from the numerical weather prediction significantly influences the accuracy...
The wind sector is facing the challenge of mini and micro generation, but the unpredictability of wi...
A neural network version of the measure correlate predict algorithm for estimating wind energy yiel
Measure-correlate-predict (MCP) algorithms are used to predict the wind resource at target sites for...
Measure-correlate-predict (MCP) algorithms are used to predict the wind resource at target sites for...
The current study aims to forecast and analyze wind data such as wind speed at a test site called &l...
The current study aims to forecast and analyze wind data such as wind speed at a test site called &l...
This paper significantly advanced the hybrid measure-correlate-predict (MCP) methodology, enabling i...
This paper significantly advances the hybrid measure-correlate-predict (MCP) methodology, enabling i...
Modern multi-megawatt wind turbines are tall and may reach heights of 200 meter. Tall wind turbines ...
This study builds on recent analysis (Mifsud, et al., 2018) in which uncertainties in predicting lon...
Output from a state-of-the-art, 4 km resolution, operational forecast model (UK4) was investigated a...
A detailed investigation of a measure-correlate-predict (MCP) approach based on the bivariate Weibul...
In Finland, as there is no feed-in tariff, the wind power producers have to make contracts on how th...
This final report contains a complete description of the work undertaken in fulfilment of contract n...
The quality of wind data from the numerical weather prediction significantly influences the accuracy...
The wind sector is facing the challenge of mini and micro generation, but the unpredictability of wi...
A neural network version of the measure correlate predict algorithm for estimating wind energy yiel
Measure-correlate-predict (MCP) algorithms are used to predict the wind resource at target sites for...
Measure-correlate-predict (MCP) algorithms are used to predict the wind resource at target sites for...
The current study aims to forecast and analyze wind data such as wind speed at a test site called &l...
The current study aims to forecast and analyze wind data such as wind speed at a test site called &l...
This paper significantly advanced the hybrid measure-correlate-predict (MCP) methodology, enabling i...
This paper significantly advances the hybrid measure-correlate-predict (MCP) methodology, enabling i...
Modern multi-megawatt wind turbines are tall and may reach heights of 200 meter. Tall wind turbines ...
This study builds on recent analysis (Mifsud, et al., 2018) in which uncertainties in predicting lon...
Output from a state-of-the-art, 4 km resolution, operational forecast model (UK4) was investigated a...
A detailed investigation of a measure-correlate-predict (MCP) approach based on the bivariate Weibul...
In Finland, as there is no feed-in tariff, the wind power producers have to make contracts on how th...
This final report contains a complete description of the work undertaken in fulfilment of contract n...
The quality of wind data from the numerical weather prediction significantly influences the accuracy...
The wind sector is facing the challenge of mini and micro generation, but the unpredictability of wi...
A neural network version of the measure correlate predict algorithm for estimating wind energy yiel