Fig. 1. Multi-Layer Perceptron (MLP) Algorithm
Fig. 2. Backpropagation (BP) Algorithm
Fig. 3. Genetic Algorithm (GA)
Fig. 4. Power usage by industry, Based on 2016 year (KEPCO, 2016; K-eco, 2016)
Fig. 5. Forecasting operations and maintains using Bigdata and IoT platforms (Chalabi and CH2M Beca, 2018)
Table. 1 Advantages and Disadvantages of Sewage Treatment Process Model (ME, 2009a)
Table. 2 Application Methods of Artificial Intelligence Technology
Table. 3 Algorithm Characteristic
Table. 4 Data after applying AI (R, RMSE only) (ME, 2009a)
Table. 5 Energy consumption ranking of domestic sewage treatment plant (Park et al., 2008)
Table. 6 Percentage of energy consumption in domestic sewage treatment plant (Park et al., 2008)
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