Development of chaotically improved meta-heuristics and modified BP neural network-based model for electrical energy demand prediction in smart grid

被引:28
作者
Islam, Badar [1 ]
Baharudin, Zuhairi [1 ]
Nallagownden, Perumal [1 ]
机构
[1] Univ Teknol PETRONAS, Dept Elect & Elect Engn, Seri Iskandar 32610, Perak, Malaysia
关键词
Artificial neural network; Demand response; Smart grid; Real-coded genetic algorithm; Electrical energy demand prediction; Chaotic mapping; Simulated annealing; GENETIC ALGORITHM; FUZZY-LOGIC; LOAD;
D O I
10.1007/s00521-016-2408-3
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In this paper, a modified backpropagation neural network is combined with a chaos-search genetic algorithm and simulated annealing algorithm for very short term electrical energy demand prediction in deregulated power industry. Multiple modifications are carried out on the conventional backpropagation algorithm such as improvements in the momentum factor and adaptive learning rate. In the hybrid scheme, the initial parameters of the modified neural network are optimized by using the global search ability of genetic algorithm, improved by cat chaotic mapping to enrich its optimization capability. The solution set provided by the optimized genetic algorithm is further improved by using the strong local search ability of simulated annealing algorithm. The real data of New South Wales, Australian grid, is used in the experimentation for 1-h-ahead forecast with an emphasis on data analysis and preprocessing framework. The correlation analysis is used for the identification and selection of the most influential input variables. The simulation results reveal that the proposed combination technique effectively enhanced the prediction accuracy as compared to the available conventional methods. The prediction of 1-h-ahead load demand is critically important for decision-making response of the modern smart grid system. The acceptable precision of the proposed model concludes that it can be applied in the smart grid to enhance its demand responsiveness and other intelligent features.
引用
收藏
页码:S877 / S891
页数:15
相关论文
共 38 条
[1]   Power System Stability Enhancement via Bacteria Foraging Optimization Algorithm [J].
Abd-Elazim, Sahar M. ;
Ali, Ehab S. .
ARABIAN JOURNAL FOR SCIENCE AND ENGINEERING, 2013, 38 (03) :599-611
[2]   Artificial neural network development by means of a novel combination of grammatical evolution and genetic algorithm [J].
Ahmadizar, Fardin ;
Soltanian, Khabat ;
AkhlaghianTab, Fardin ;
Tsoulos, Ioannis .
ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2015, 39 :1-13
[3]   Electric load forecasting: literature survey and classification of methods [J].
Alfares, HK ;
Nazeeruddin, M .
INTERNATIONAL JOURNAL OF SYSTEMS SCIENCE, 2002, 33 (01) :23-34
[4]  
Ali E, 2013, INT J WSEAS T POWER, V8, P74
[5]  
[Anonymous], P SSST NAACL HLT
[6]   Non-parametric short-term load forecasting [J].
Asber, D. ;
Lefebvre, S. ;
Asber, J. ;
Saad, M. ;
Desbiens, C. .
INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2007, 29 (08) :630-635
[7]   An instrumentation engineer's review on smart grid: Critical applications and parameters [J].
Bhatt, Jignesh ;
Shah, Vipul ;
Jani, Omkar .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2014, 40 :1217-1239
[8]   Metropolis, simulated annealing, and iterated energy transformation algorithms: Theory and experiments [J].
Catoni, O .
JOURNAL OF COMPLEXITY, 1996, 12 (04) :595-623
[9]   Electric Load Forecasting Based on Statistical Robust Methods [J].
Chakhchoukh, Yacine ;
Panciatici, Patrick ;
Mili, Lamine .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2011, 26 (03) :982-991
[10]   Short-term ANN load forecasting from limited data using generalization learning strategies [J].
Chan, Zeke S. H. ;
Ngan, H. W. ;
Rad, A. B. ;
David, A. K. ;
Kasabov, N. .
NEUROCOMPUTING, 2006, 70 (1-3) :409-419