This document presents an energy forecast methodology using Adaptive Neuro-Fuzzy Inference System (ANFIS) and Genetic Algorithms (GA). The GA has been used for the selection of the training inputs of the ANFIS in order to minimize the training result error. The presented algorithm has been installed and it is being operating in an automotive manufacturing plant. It periodically communicates with the plant to obtain new information and update the database in order to improve its training results. Finally the obtained results of the algorithm are used in order to provide a short-term load forecasting for the different modeled consumption processes
This paper is concerned with the reliable prediction of electricity demands using the Adaptive Neuro...
WOS: 000247728700001This study deals with the modeling and developing the energy input estimation eq...
Load forecasting has many applications for power systems, including energy purchasing and generation...
This document presents an energy forecast methodology using Adaptive Neuro-Fuzzy Inference System (A...
This document presents an energy forecast methodology using Adaptive Neuro-Fuzzy Inference System (A...
In this paper an evolutive algorithm is used to train an adaptative-network-based fuzzy inference sy...
This paper presents a novel method for the energy optimization of multi-carrier energy systems. The ...
The challenge for our paper consists in controlling the performance of the future state of a microgr...
* IEEE Member Abstract: The huge consumption of electric energy in these days has given the load for...
A model of power demand represents the foundation of any intelligent Energy Management System, and i...
Abstrak: Data deret waktu adalah serangkaian pengamatan yang diambil secara berurutan dari waktu ke ...
This paper presents the application of a Methodology to Obtain Genetic fuzzy rule-based systems Unde...
In this paper, a methodology for the energy prediction for the different consumptions of a system ba...
This study proposes an integrated adaptive neuro fuzzy inference system (ANFIS) and gene expression ...
Abstract—Electric load forecasting is an important research field to increase reliability of power s...
This paper is concerned with the reliable prediction of electricity demands using the Adaptive Neuro...
WOS: 000247728700001This study deals with the modeling and developing the energy input estimation eq...
Load forecasting has many applications for power systems, including energy purchasing and generation...
This document presents an energy forecast methodology using Adaptive Neuro-Fuzzy Inference System (A...
This document presents an energy forecast methodology using Adaptive Neuro-Fuzzy Inference System (A...
In this paper an evolutive algorithm is used to train an adaptative-network-based fuzzy inference sy...
This paper presents a novel method for the energy optimization of multi-carrier energy systems. The ...
The challenge for our paper consists in controlling the performance of the future state of a microgr...
* IEEE Member Abstract: The huge consumption of electric energy in these days has given the load for...
A model of power demand represents the foundation of any intelligent Energy Management System, and i...
Abstrak: Data deret waktu adalah serangkaian pengamatan yang diambil secara berurutan dari waktu ke ...
This paper presents the application of a Methodology to Obtain Genetic fuzzy rule-based systems Unde...
In this paper, a methodology for the energy prediction for the different consumptions of a system ba...
This study proposes an integrated adaptive neuro fuzzy inference system (ANFIS) and gene expression ...
Abstract—Electric load forecasting is an important research field to increase reliability of power s...
This paper is concerned with the reliable prediction of electricity demands using the Adaptive Neuro...
WOS: 000247728700001This study deals with the modeling and developing the energy input estimation eq...
Load forecasting has many applications for power systems, including energy purchasing and generation...