Title :
New parallel support vector regression for predicting building energy consumption
Author :
Zhao, Hai-xiang ; Magoulès, Frédéric
Author_Institution :
Appl. Math. & Syst. Lab., Ecole Centrale Paris, Châtenay Malabry, France
Abstract :
One challenge of predicting building energy consumption is to accelerate model training when the dataset is very large. This paper proposes an efficient parallel implementation of support vector regression based on decomposition method for solving such problems. The parallelization is performed on the most time-consuming work of training, i.e., to update the gradient vector f. The inner problems are dealt by sequential minimal optimization solver. The underlying parallelism is conducted by the shared memory version of Map-Reduce paradigm, making the system particularly suitable to be applied to multi-core and multiprocessor systems. Experimental results show that our implementation offers a high speed increase compared to Libsvm, and it is superior to the state-of-the-art MPI implementation Pisvm in both speed and storage requirement.
Keywords :
application program interfaces; building management systems; civil engineering computing; multiprocessing systems; optimisation; regression analysis; shared memory systems; support vector machines; MPI implementation Pisvm; building energy consumption prediction; gradient vector; map reduce paradigm; multiprocessor systems; parallel support vector regression; sequential minimal optimization solver; shared memory version; Buildings; Energy consumption; Kernel; Matrix decomposition; Parallel processing; Support vector machines; Training; Building energy consumption; Map-Reduce; Multi-core; Parallel computing; Support Vector Regression (SVR);
Conference_Titel :
Computational Intelligence in Multicriteria Decision-Making (MDCM), 2011 IEEE Symposium on
Conference_Location :
Paris
Print_ISBN :
978-1-61284-068-0
DOI :
10.1109/SMDCM.2011.5949289