2019
DOI: 10.3390/en12112040
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Integrating Long Short-Term Memory and Genetic Algorithm for Short-Term Load Forecasting

Abstract: Electricity load forecasting is an important task for enhancing energy efficiency and operation reliability of the power system. Forecasting the hourly electricity load of the next day assists in optimizing the resources and minimizing the energy wastage. The main motivation of this study was to improve the robustness of short-term load forecasting (STLF) by utilizing long shortterm memory (LSTM) and genetic algorithm (GA). The proposed method is novel: LSTM networks are designed to avoid the problem of long-t… Show more

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Cited by 49 publications
(36 citation statements)
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“…In order to attain these goals, scientists have used different methods and carried out numerous performance improvement techniques, such as: SVR [3,11,28], LSTM ANNs [3,4,10,11,26,28], RNN [5,28], BiLSTM ANN [5], Copula-DBN [7], DRNN-LSTM [8], CNN-RNN [9], the Prophet and Holt-Winters long-term forecasting models [13], CNNs [4,6,14,25], MLR [24,25], SVM [24], and ANFIS [24]. In contrast with these, within our article, we devised and developed a forecasting method for the hourly month-ahead electricity consumption based on a BiLSTM ANN enhanced with a multiple simultaneously decreasing delays approach coupled with FITNETs.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…In order to attain these goals, scientists have used different methods and carried out numerous performance improvement techniques, such as: SVR [3,11,28], LSTM ANNs [3,4,10,11,26,28], RNN [5,28], BiLSTM ANN [5], Copula-DBN [7], DRNN-LSTM [8], CNN-RNN [9], the Prophet and Holt-Winters long-term forecasting models [13], CNNs [4,6,14,25], MLR [24,25], SVM [24], and ANFIS [24]. In contrast with these, within our article, we devised and developed a forecasting method for the hourly month-ahead electricity consumption based on a BiLSTM ANN enhanced with a multiple simultaneously decreasing delays approach coupled with FITNETs.…”
Section: Discussionmentioning
confidence: 99%
“…Recognizing the importance of attaining an accurate prediction of the day-ahead hourly electricity consumption in order to optimize and appropriately manage the energy related resources, in [10], Santra et al propose an approach consisting of LSTM ANNs for solving the problems related to long-term data dependencies and genetic algorithm (GA) to get the most appropriate parameters for the LSTM ANNs. The authors trained the network using real electricity load and meteorological datasets, and afterwards, they tested their proposed method and compared it with the results provided by a LSTM ANN that does not have its parameters tuned by means of a GA, and concluded the superiority of their approach based on the MAPE performance metric that highlighted a higher accuracy level.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Another hybrid approach of LSTM and meta-heuristic GA [8] suggesting a systematic approach to determine the time window size and the network topology shows better prediction performance and statistical significance as against their benchmark model, measured by mean absolute percentage error (MAPE), mean absolute error (MAE) and MSE. LSTM and GA approach is also being applied electricity load forecasting and performed better than the standard LSTM by 5.38% to 53.33% minimizing the MAPE of the training data [15], though in the future work discussion emphasis the usage RMSE instead of MAPE is more suitable measurements to be adopted.…”
Section: B Lstm Forecasting With Ga Approachmentioning
confidence: 99%
“…In response to the shortcomings of RNN, Hochreiter and Schmidhuber proposed a long shortterm memory (LSTM) recurrent neural network in 1997 [23], which overcame the disadvantages of traditional RNNs by combining short-term memory with long-term memory through the gate control. A novel method which integrates LSTM and genetic algorithm (GA) was proposed for STLF [24], and it yielded a small mean absolute percentage error. Gated recurrent unit (GRU) [25] is a special type of recurrent neural network based on optimized LSTM, and the GRU internal unit is similar to the internal unit of the LSTM [26], except that the GRU combines the input gate and the forgetting gate in the LSTM into a single update gate.…”
Section: Introductionmentioning
confidence: 99%