[[abstract]]This research used a hard-cut iterative training algorithm to improve a Gaussian process mixture (GPM) model. Our enhanced GPM (EGPM) concisely estimates distribution parameters to the greatest extent possible. GPM models are powerful tools for data presentation and forecasting owing to their linear mix of multiple Gaussian process (GP) models. The hidden posterior probability distribution variables in the GPM model, which are based on the hard-cut algorithm, are 0 and 1, respectively, which can simplify the training process and reduce calculation requirements by training each GP via a maximum likelihood estimation method. The EGPM model is then used for a short-term electric load forecasting problem and compared with various fo...
General Vector Machine (GVM) is a newly proposed machine learning model, which is applicable to smal...
peer reviewedProbabilistic methods are emerging for operating electrical networks, driven by the int...
For participants in the energy industry, it is vital to have access to reliable forecasts of future ...
This paper presents a Gaussian process model-based short-term electric load forecasting. The Gaussia...
As one of the countries with the most energy consumption in the world, electricity accounts for a la...
This paper examines models based on Gaussian Process (GP) priors for electrical load forecasting. Th...
Smart Grids become the next generation of environmentally beneficial and long-lasting electrical inf...
We provide a comprehensive framework for forecasting five minute load using Gaussian processes with ...
In a distribution power network, the load model has no certain pattern or predicted behaviour due to...
AbstractShort Term Load Forecasting (STLF) is essential for planning the day-to-day operation of an ...
The ongoing rapid growth of electricity over the past few decades greatly promotes the necessity of ...
Electric load forecasting has gained much attention in electricity production due to its important r...
We present an electricity demand forecasting algorithm based on Gaussian processes. By introducing a...
The electricity market is particularly complex due to the different arrangements and structures of i...
This work brings together and applies a large representation of the most novel forecasting technique...
General Vector Machine (GVM) is a newly proposed machine learning model, which is applicable to smal...
peer reviewedProbabilistic methods are emerging for operating electrical networks, driven by the int...
For participants in the energy industry, it is vital to have access to reliable forecasts of future ...
This paper presents a Gaussian process model-based short-term electric load forecasting. The Gaussia...
As one of the countries with the most energy consumption in the world, electricity accounts for a la...
This paper examines models based on Gaussian Process (GP) priors for electrical load forecasting. Th...
Smart Grids become the next generation of environmentally beneficial and long-lasting electrical inf...
We provide a comprehensive framework for forecasting five minute load using Gaussian processes with ...
In a distribution power network, the load model has no certain pattern or predicted behaviour due to...
AbstractShort Term Load Forecasting (STLF) is essential for planning the day-to-day operation of an ...
The ongoing rapid growth of electricity over the past few decades greatly promotes the necessity of ...
Electric load forecasting has gained much attention in electricity production due to its important r...
We present an electricity demand forecasting algorithm based on Gaussian processes. By introducing a...
The electricity market is particularly complex due to the different arrangements and structures of i...
This work brings together and applies a large representation of the most novel forecasting technique...
General Vector Machine (GVM) is a newly proposed machine learning model, which is applicable to smal...
peer reviewedProbabilistic methods are emerging for operating electrical networks, driven by the int...
For participants in the energy industry, it is vital to have access to reliable forecasts of future ...