Towards Electric Price and Load Forecasting Using CNN-Based Ensembler in Smart Grid
Abstract
:1. Introduction
1.1. Smart Grid
1.2. Problem Statement and Motivation
2. Background and Related Work
2.1. Forecasting Electricity Load
2.2. Forecasting Electricity Price
3. System Models
3.1. Model for Predicting Electricity Load and Price
- Data input (i.e., dataset).
- Feature extraction using RFE.
- Feature selection using RF and XG-Boost.
- Splitting of data into training and testing.
- Load the CNN layers and parameters.
- Tuning the CNN parameters using CHIO and then model compiling.
- Predicted price and load.
- Performance evaluation.
- Statistical analysis.
3.2. Data Collection
3.3. Feature Extraction Using (RFE)
3.4. Feature Selection
XG-Boost
3.5. Convolutional Neural Network
3.6. Coronavirus Herd Immunity Optimization
Algorithm 1: Proposed Work Algorithm |
Result: Electricity price and load forecasting X: data features; Y: data with a purpose; /* Separate the data into two categories: preparation and testing. */ ; split (x, y) = x train, x test, y train, y test; RFE (5, x train, y train); Selected_ function; /* Selection of hybrid features */ ; Incorporateimp = RFimp + XGimp; /* Using RF and XG-boost, measure value */ ; RF imp = RF calculates importance; /* RFE is a technique for extracting features. */ ; CNN-CHIO predicting the future with fine-tuned; Performance evaluation test, compare predictions; |
3.7. Performance Evaluation
4. Simulation Results and Discussions
4.1. Electricity Load Forecasting
4.2. Electricity Price Forecasting
4.3. Performance Evaluation of Electricity Price and Load Forecasting
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Methodology (s) | Aims and Objectives | Source(s) of Information/Achievement(s) | Drawback(s) |
---|---|---|---|
[10] NN with several layers. | Forecasting prices | Price forecasting with reasonable accuracy. | The loss rate is high, as is the computational time. |
[13] HSDNN (LSTM and CNN combined). | Forecasting electricity costs | PJM (half-hour). | The amount of time required for computation is considerable. |
[14] Recurrent units with gates (GRU). | Estimating prices | Turkish power sector forecast for the day. | The problem of over-fitting has gotten worse. |
[15] Neural networks with back propagation (BPNN). | Load forecasting for the short term | Texas Electric Reliability Council, USA, a day ahead. | The level of complexity has risen. |
[16] CS-SSA-SVM is a combination of CS-SSA and SVM. | Forecasting Loads | New South Wales: half-hourly, hourly, regular day, and non-working day results (ten weeks). | The calculation takes a very long time. |
[18] LSTM and RNN. | Predictions Loads | Hourly and monthly payments are accepted. France Metropolitan. | Over-fitting is a risk that cannot be avoided. |
[20] DNN, CNN, and LSTM are all examples of deep neural networks. | Forecasting the price of electricity | Estimated price. | The effect of dataset size is not measured, and redundancy is not eliminated. |
[22] The UC-DADR and CC-DADR algorithms. | Decrease high growth and increase consumer benefits by reducing generation capacity. | Interconnection of the states of New Jersey, Maryland (PJM), and Pennsylvania, | The degree of defect detection is smaller. |
[23] Storage device with batteries. | Estimating prices | Ontario’s power market data is updated hourly. | The model isn’t stable or accurate. |
[24] Clustering validity indices (CVIs) are a form of validity index that is used to group together similar items. | The use of electricity | The upcoming day. The University of Seoul has eight buildings. | The amount of time it takes to compute something is enormous. |
[26] SVM and ANN (are two different types of artificial neural networks). | Forecasting loads | The day ahead. PJM and Tunisian electricity industry. | The calculation takes a very long time. |
[27] DCA, KPCA, SVM (are all types of simulation models). | Forecasting prices | Estimated cost and hybrid feature range. | Irrelevant features in the dataset add to the processing time. |
[28] SVM/DNN | Forecasting short-term power costs | Different models are compared, and short-term price predictions are made. | Only for a particular situation. |
[29] DNN | Forecasting prices | By using Bayesian optimization, you can improve accuracy and finish feature selection. | There was no thought given to redundancy or dimensionality reduction. |
[30] Multivariate model | Price forecast on an hourly basis | Reduced the probability of overfitting by using a multivariate model instead of a univariate model. | Except for the unit-variate approach, the model’s output is not comparable to that of other techniques. |
[31] LSTM, DNN | Predictions of cost and load | Predict both the price and the volume of a product. | Price forecasting is unreliable. |
[32] GELM | Price prediction on an hourly basis | Using bootstrapping techniques, predict hourly price and increase model speed. | For large datasets, this method does not function well. |
[33] IG/MI | Hybrid algorithm for feature selection | Accuracy has improved as a result of a better choice of features. | The classifier’s optimization was not taken into consideration. |
[34,35] LSSVM, QOABC | Forecasting prices with loads | Artificial bee colony forecasting of price and load, as well as conditional feature selection and modification. | Their established scenario was the only one that works for them. |
[36] ANN | ANN parameters: finding the best | Parameters for ANN and price estimation have been optimized. | Problems of overfitting were not taken into account. |
[37] DCANN | Price prediction for the next day | Price prediction and development architecture that uses a neural network to automate scenarios. | The computational time is extremely long. |
Techniques | Accuracy (%) | F1-Score (%) | Recall (%) | Precision (%) | RMSE (%) | MAPE (%) | MSE (%) | MAE (%) |
---|---|---|---|---|---|---|---|---|
SVM | 90.89 | 90.32 | 94.456 | 88.21 | 8.43 | 7.23 | 12.34 | 10.77 |
RF | 84.54 | 72.98 | 89.33 | 82.22 | 24.27 | 24.56 | 27.65 | 25.78 |
LR | 81.22 | 75 | 71.555 | 84.94 | 24 | 22.78 | 27 | 21 |
LDA | 76.21 | 74.12 | 82.22 | 65.22 | 29 | 28.78 | 35.22 | 31.56 |
CNN-CHIO | 95.789 | 96.22 | 98.55 | 94.639 | 6.23 | 5.67 | 10.82 | 7.22 |
Techniques | Accuracy (%) | Precision (%) | F1-Score (%) | Recall (%) | RMSE (%) | MSE (%) | MAPE (%) | MAE (%) |
---|---|---|---|---|---|---|---|---|
LR | 75.22 | 78.94 | 69 | 65.545 | 24 | 27 | 22.78 | 21 |
RF | 79.54 | 77.22 | 67.98 | 84.33 | 24.27 | 27.65 | 24.56 | 25.78 |
SVM | 88.89 | 85.21 | 87.32 | 91.466 | 8.34 | 11.34 | 7.23 | 10.77 |
LDA | 71.21 | 60.22 | 69.12 | 77.22 | 29 | 35.22 | 28.78 | 31.56 |
CNN-CHIO | 90.789 | 89.639 | 91.22 | 93.55 | 6.23 | 9.82 | 5.67 | 7.22 |
Techniques | Kendallas | Spearmans | ANOVA | Mann-Whitney | Kruskal | Chi-Squared |
---|---|---|---|---|---|---|
SVM F-statistic | −0.128 | −0.149 | 99.775 | 13,344.500 | 194.502 | 168.491 |
SVM p-Value | 0.014 | 0.014 | 0.000 | 0.000 | 0.000 | 0.000 |
RF F-statistic | 0.785 | 0.856 | 28.779 | 39,227.000 | 35.686 | 107.540 |
RF p-Value | 0.911 | 0.995 | 0.000 | 0.785 | 0.000 | 0.042 |
CNN-CHIO F-stat | 1.000 | 1.000 | 0.000 | 37,538.000 | 0.000 | 6028.000 |
CNN-CHIO p-Val | 1.000 | 0.000 | 1.000 | 0.500 | 1.000 | 0.000 |
LDA F-statistic | 0.801 | 0.867 | 3.100 | 41,232.000 | 70.847 | 109.440 |
LDA p-Value | 0.849 | 0.839 | 0.079 | 0.811 | 0.000 | 0.053 |
LG F-statistic | 1.000 | 1.000 | 0.000 | 37,538.000 | 0.000 | 6028.000 |
LG p-Value | 0.000 | 0.000 | 1.000 | 0.500 | 1.000 | 0.000 |
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Aslam, S.; Ayub, N.; Farooq, U.; Alvi, M.J.; Albogamy, F.R.; Rukh, G.; Haider, S.I.; Azar, A.T.; Bukhsh, R. Towards Electric Price and Load Forecasting Using CNN-Based Ensembler in Smart Grid. Sustainability 2021, 13, 12653. https://doi.org/10.3390/su132212653
Aslam S, Ayub N, Farooq U, Alvi MJ, Albogamy FR, Rukh G, Haider SI, Azar AT, Bukhsh R. Towards Electric Price and Load Forecasting Using CNN-Based Ensembler in Smart Grid. Sustainability. 2021; 13(22):12653. https://doi.org/10.3390/su132212653
Chicago/Turabian StyleAslam, Shahzad, Nasir Ayub, Umer Farooq, Muhammad Junaid Alvi, Fahad R. Albogamy, Gul Rukh, Syed Irtaza Haider, Ahmad Taher Azar, and Rasool Bukhsh. 2021. "Towards Electric Price and Load Forecasting Using CNN-Based Ensembler in Smart Grid" Sustainability 13, no. 22: 12653. https://doi.org/10.3390/su132212653
APA StyleAslam, S., Ayub, N., Farooq, U., Alvi, M. J., Albogamy, F. R., Rukh, G., Haider, S. I., Azar, A. T., & Bukhsh, R. (2021). Towards Electric Price and Load Forecasting Using CNN-Based Ensembler in Smart Grid. Sustainability, 13(22), 12653. https://doi.org/10.3390/su132212653