Figure 2.1. Daily electricity consumption data of A hotel from 2016.1.1 to 2017.12.31.
Figure 2.2. Comparison of weekly consumptions of A hotel during the first 16 weeks (2016.1–2016.4).
Figure 2.3. Comparing with monthly consumptions of A hotel in 2016 and 2017.
Figure 2.4. Daily average temperature and adjusted temperature in Suwon city.
Figure 3.1. Regression tree example.
Figure 4.1. Scatter plot between log-transformed electricity consumption and adjusted temperature.
Figure 5.1. Comparison of random forest forecasts
Table 5.1. Parameters used in each model
Table 5.2. Accuracy based on train and test data
참고문헌
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