Nonintrusive load monitoring (NILM) performance evaluation

Stephen Makonin1, Fred Popowich1
1Computing Science, Simon Fraser University, Burnaby, Canada

Tóm tắt

Từ khóa


Tài liệu tham khảo

Author Name (2014). Commented out for double-blind review.

Berges, M.E., Goldman, E., Matthews, H.S., Soibelman, L. (2010). Enhancing electricity audits in residential buildings with nonintrusive load monitoring. Journal of Industrial Ecology, 14(5), 844–858.

Chang, H.H., Lin, C.L., Lee, J.K. (2010). Load identification in nonintrusive load monitoring using steady-state and turn-on transient energy algorithms. In 2010 14th International Conference on Computer Supported Cooperative Work in Design (CSCWD), (pp. 27–32).

Dong, H., Wang, B., Lu, C.T. (2013). Deep sparse coding based recursive disaggregation model for water conservation. In Proceedings of the Twenty-Third international joint conference on Artificial Intelligence (pp. 2804–2810): AAAI Press.

Figueiredo, M, de Almeida, A., Ribeiro, B. (2012). Home electrical signal disaggregation for non-intrusive load monitoring (nilm) systems. Neurocomputing, 96(0), 66–73.

Johnson, M.J., & Willsky, A.S. (2013). Bayesian nonparametric hidden semi-markov models. The Journal of Machine Learning Research, 14(1), 673–701.

Kim, H., Marwah, M., Arlitt, M., Lyon, G., Han, J. (2010). Unsupervised disaggregation of low frequency power measurements. In 11th International Conference on Data Mining (pp. 747–758).

Kolter, J., & Johnson, M. (2011). Redd: A public data set for energy disaggregation research. In Workshop on Data Mining Applications in Sustainability (SIGKDD) San Diego, CA.

Kolter, J.Z., & Jaakkola, T. (2012). Approximate inference in additive factorial hmms with application to energy disaggregation. In International Conference on Artificial Intelligence and Statistics (pp. 1472–1482).

Liu, H., & Motoda, H. (1998). Feature selection for knowledge discovery and data mining: Springer.

Makonin, S. (2014). Real-time embedded low-frequency load disaggregation. Ph.D. thesis, Simon Fraser University, School of Computing Science.

Makonin, S., Bajic, I.V., Popowich, F. (2014). Efficient Sparse Matrix Processing for Nonintrusive Load Monitoring (NILM). In 2nd International Workshop on Non-Intrusive Load Monitoring.

Makonin, S., Popowich, F., Bartram, L., Gill, B., Bajic, I.V. (2013). AMPds: a public dataset for load disaggregation and eco-feedback research. In 2013 IEEE Electrical Power and Energy Conference (EPEC) (pp. 1–6).

Parson, O., Ghosh, S., Weal, M., Rogers, A. (2012). Non-intrusive load monitoring using prior models of general appliance types. In AAAI Conference on Artificial Intelligence.

Tsai, M.S., & Lin, Y.H. (2012). Modern development of an adaptive non-intrusive appliance load monitoring system in electricity energy conservation. Applied Energy, 96(0), 55–73.

Zeifman, M., & Roth, K. (2011). Nonintrusive appliance load monitoring: Review and outlook. IEEE Transactions on Consumer Electronics, 57(1), 76–84.