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   Application of Hybrid Neural Networks Combined With Comprehensive Learning Particle Swarm Optimization To Shortterm Load Forecasting  
   
نویسنده Emarati Mohammadreza ,Keynia Farshid ,Askarzadeh Alireza
منبع هوش محاسباتي در مهندسي برق - 2019 - دوره : 10 - شماره : 1 - صفحه:31 -40
چکیده    Short term load forecasting is one of the key components for economical and safe operation of power systems. in competitive environment of electricity market, electricity utilities require more accurate load forecasting strategies to make better decisions on purchasing or generating electricity. this article offers a new method based on machine learning shortterm load forecasting which is made up of a twolevel feature selection technique and a new forecast engine. the feature selection part uses irrelevancy and redundancy filters to select best sets of input features. the proposed forecast engine is composed of a support vector regression machine, hybrid neural network and comprehensive learning particle swarm optimization. by applying comprehensive learning particle swarm optimization along with hybrid neural networks, the accuracy of forecasting is improved and its error decreases effectively.the proposed strategy is tested on pjm and aemo electricity markets. the numerical results show the effectiveness and robustness of this method in comparison with recent shortterm load forecasting methods.
کلیدواژه Feature Selection ,Forecasting Engine ,Hybrid Neural Network ,Particle Swarm Optimization ,Short-Term Load Forecast.
آدرس Graduate University Of Advanced Technology, Department Of Electrical Engineering, Iran, Graduate University Of Advanced Technology, Institute Of Science And High Technology And Environmental Sciences, Department Of Energy Management And Optimization, Iran, Graduate University Of Advanced Technology, Institute Of Science And High Technology And Environmental Sciences, Department Of Energy Management And Optimization, Iran
پست الکترونیکی a.askarzadeh@kgut.ac.ir
 
   Application of hybrid neural networks combined with comprehensive learning particle swarm optimization to shortterm load forecasting  
   
Authors Askarzadeh Alireza ,Keynia Farshid ,Emarati MohammadReza
Abstract    Short term load forecasting is one of the key components for economical and safe operation of power systems. In competitive environment of electricity market, electricity utilities require more accurate load forecasting strategies to make better decisions on purchasing or generating electricity. This article offers a new method based on machine learning shortterm load forecasting which is made up of a twolevel feature selection technique and a new forecast engine. The feature selection part uses irrelevancy and redundancy filters to select best sets of input features. The proposed forecast engine is composed of a support vector regression machine, hybrid neural network and comprehensive learning particle swarm optimization. By applying comprehensive learning particle swarm optimization along with hybrid neural networks, the accuracy of forecasting is improved and its error decreases effectively.The proposed strategy is tested on PJM and AEMO electricity markets. The numerical results show the effectiveness and robustness of this method in comparison with recent shortterm load forecasting methods.
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