1. What are the contributions mentioned in the paper "Data predictive control using regression trees and ensemble learning" ?
The authors present novel Data Predictive Control ( DPC ) algorithms that use Regression Trees and Random Forests for receding horizon control.. The authors demonstrate the strength of their approach with a case study on a bilinear building model identified using real weather data and sensor measurements.. In a one-to-one comparison, the authors show that DPC explains 70\\ % variation in the MPC controller.. The authors further apply DPC to a large scale multi-story EnergyPlus building model to curtail total power consumption in a Demand Response setting.
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![Fig. 2: DPC-En: At time k, the algorithm uses the forecast of disturbances Xdk|k to select linear models Θ1 to Θt in the leaves of each ensemble. The linear models in each ensemble are averaged to calculate a single model represented by Θ̂j which act as constraints in the optimization problem. The optimal sequence [Xck|k, . . . ,X c k+N−1|k], of which the first one is applied, and Xdk+1|k+1 is calculated to proceed to k + 1.](/figures/fig-2-dpc-en-at-time-k-the-algorithm-uses-the-forecast-of-ghco9d81.png)




