The capability to predict the host load of a system is significant for computational grids to make efficient use of shared resources. This work attempts to improve the accuracy of host load predictions by applying a neural network predictor to reach the goal of best performance and load balance. We describe the feasibility of the proposed predictor in a dynamic environment, and perform experimental evaluation using collected load traces. The results show that the neural network achieves consistent performance improvement with surprisingly low overhead in most cases. Compared with the best previously proposed method, our typical 20:10:1 network reduces the mean of prediction errors by approximately up to 79%. The training and testing time is...
Abstract- Artificial Neural Network (ANN) Method is ap-plied to forecast the short-term load for a l...
High cost of fossil fuels and intensifying installations of alternate energy generation sources are ...
Short-term load forecasting is a crucial step for proper operation of a battery energy storage syste...
We devise a feed-forward Artificial Neural Network (ANN) procedure for predicting utility loads and ...
In this paper we present a simple yet accurate model to forecast electricity load with Artificial Ne...
Abstract—This paper presents a new approach that uses neural networks to predict the performance of ...
: We devise a feed-forward Artificial Neural Network (ANN) procedure for predicting utility loads an...
We devise a feed-forward Articial Neural Network (ANN) procedure for predicting utility loads and pr...
To make the best use of the resources in a shared grid environment, an application scheduler must ma...
The modernization and optimization of current power systems are the objectives of research and devel...
A wide area network (WAN) is the set of components interconnected in a power system. A WAN is operat...
A Smart Grid approach to electric distribution system management needs to front uncertainties in gen...
Load forecasting is considered vital along with many other important entities required for assessing...
Successfully determining competitive optimal schedules for electricity generation intimately hinges ...
D.Phil. (Electrical and Electronic Engineering)Load forecasting is a necessary and an important task...
Abstract- Artificial Neural Network (ANN) Method is ap-plied to forecast the short-term load for a l...
High cost of fossil fuels and intensifying installations of alternate energy generation sources are ...
Short-term load forecasting is a crucial step for proper operation of a battery energy storage syste...
We devise a feed-forward Artificial Neural Network (ANN) procedure for predicting utility loads and ...
In this paper we present a simple yet accurate model to forecast electricity load with Artificial Ne...
Abstract—This paper presents a new approach that uses neural networks to predict the performance of ...
: We devise a feed-forward Artificial Neural Network (ANN) procedure for predicting utility loads an...
We devise a feed-forward Articial Neural Network (ANN) procedure for predicting utility loads and pr...
To make the best use of the resources in a shared grid environment, an application scheduler must ma...
The modernization and optimization of current power systems are the objectives of research and devel...
A wide area network (WAN) is the set of components interconnected in a power system. A WAN is operat...
A Smart Grid approach to electric distribution system management needs to front uncertainties in gen...
Load forecasting is considered vital along with many other important entities required for assessing...
Successfully determining competitive optimal schedules for electricity generation intimately hinges ...
D.Phil. (Electrical and Electronic Engineering)Load forecasting is a necessary and an important task...
Abstract- Artificial Neural Network (ANN) Method is ap-plied to forecast the short-term load for a l...
High cost of fossil fuels and intensifying installations of alternate energy generation sources are ...
Short-term load forecasting is a crucial step for proper operation of a battery energy storage syste...