Title
Optimal electrical load forecasting for hybrid renewable resources through a hybrid memetic cuckoo search approach
Abstract
Although renewable energy grows to be progressively trendier in the universal power grid, enhancing the precision or accuracy is a crucial task. Therefore, managing, operating and planning of modern power systems become difficult in case of renewable energy load forecasting. Due to the intermittent and disordered nature of renewable resources, load forecasting becomes a complicated task. The renewable energy system introduces various approaches to enhance load forecasting accuracy. This paper describes the technofeasibility and the optimal design of HRE resources such as photovoltaic, wind turbine, biogasifiers, and battery to satisfy all power demand optimally using a hybrid algorithm. The hybrid algorithm is the grouping of DRNN, memetic and cuckoo search algorithm to form a proposed HMCS-DRNN approach. This proposed approach is employed to provide better optimization performances, and apart from precision and stability in load forecasting, the HMCS-DRNN approach offers the predicted result with better efficiency and minimum error value rate. The efficiency of the proposed approach articulates by calculating the statistical measure regarding RMSE and MAPE, respectively. The simulation results describe that the performances of the HMCS algorithm provide better optimization results on various 30 unconstrained benchmark functions.
Year
DOI
Venue
2020
10.1007/s00500-020-04727-9
SOFT COMPUTING
Keywords
DocType
Volume
Hybrid renewable energy system,Deep recurrent neural network,Memetic,Cuckoo search,RMSE,MAPE,Load forecasting
Journal
24.0
Issue
ISSN
Citations 
17.0
1432-7643
0
PageRank 
References 
Authors
0.34
0
2
Name
Order
Citations
PageRank
Shweta Sengar100.34
Xiaodong Liu249228.50