TY - JOUR
T1 - Improving Cluster-based Methods for Usage Anticipation by the Application of Data Transformations
AU - Auquilla, Andres
AU - De Bock, Yannick
AU - Duflou, Joost R.
N1 - Publisher Copyright:
© 2018 The Authors Published by Elsevier B.V.
PY - 2018
Y1 - 2018
N2 - The wide adoption of Internet of Things (IoT) infrastructure in recent years has allowed capturing data from systems that make intensive use of electrical power or consumables typically aiming to create predictive models to anticipate a system's demand and to optimize system control, assuring the service while minimizing the overall consumption. Several methods have been presented to perform usage anticipation; one promising approach involves a two step procedure: profiling, which discovers typical usage profiles; and, prediction that detects the most likely profile given the current information. However, depending on the problem at hand, the number of observations to characterize a profile can increase greatly, causing high dimensionality, thus complicating the profiling step as the amount of noise and correlated features increase. In addition, the profile detection uncertainty increases, as the cluster intra-variability becomes larger and the distances between the centroids become similar. To overcome the difficulties that a usage profile with high dimensionality poses, we developed a methodology that finds the intrinsic dimensionality of a dataset, containing binary historical usage data, by performing dimensionality reductions to improve the profiling step. Then, the profile detection step makes use of the transformed actual data to accurately detect the current profile. This paper describes the implementation details of the application of such techniques by the analysis of two use cases: (1) usage prediction of a laser cutter machine; and, (2) occupancy prediction in an office environment. We observed that the dataset dimensionality and the cluster intra-variability was greatly reduced, making the profile detection less prone to errors. In conclusion, the implementation of methodologies to enhance the separability of the original data by dimensionality transformations improves the profile discovery and the subsequent actual profile detection.
AB - The wide adoption of Internet of Things (IoT) infrastructure in recent years has allowed capturing data from systems that make intensive use of electrical power or consumables typically aiming to create predictive models to anticipate a system's demand and to optimize system control, assuring the service while minimizing the overall consumption. Several methods have been presented to perform usage anticipation; one promising approach involves a two step procedure: profiling, which discovers typical usage profiles; and, prediction that detects the most likely profile given the current information. However, depending on the problem at hand, the number of observations to characterize a profile can increase greatly, causing high dimensionality, thus complicating the profiling step as the amount of noise and correlated features increase. In addition, the profile detection uncertainty increases, as the cluster intra-variability becomes larger and the distances between the centroids become similar. To overcome the difficulties that a usage profile with high dimensionality poses, we developed a methodology that finds the intrinsic dimensionality of a dataset, containing binary historical usage data, by performing dimensionality reductions to improve the profiling step. Then, the profile detection step makes use of the transformed actual data to accurately detect the current profile. This paper describes the implementation details of the application of such techniques by the analysis of two use cases: (1) usage prediction of a laser cutter machine; and, (2) occupancy prediction in an office environment. We observed that the dataset dimensionality and the cluster intra-variability was greatly reduced, making the profile detection less prone to errors. In conclusion, the implementation of methodologies to enhance the separability of the original data by dimensionality transformations improves the profile discovery and the subsequent actual profile detection.
KW - cluster detection
KW - dimensionality reduction
KW - logisticPCA
KW - logisticSVD
KW - usage profiling
UR - http://dspace.ucuenca.edu.ec/handle/123456789/27688
U2 - 10.1016/j.promfg.2018.06.044
DO - 10.1016/j.promfg.2018.06.044
M3 - Artículo de la conferencia
AN - SCOPUS:85050387086
SN - 2351-9789
VL - 24
SP - 166
EP - 172
JO - Procedia Manufacturing
JF - Procedia Manufacturing
T2 - 4th International Conference on System-Integrated Intelligence: Intelligent, Flexible and Connected Systems in Products and Production, 2018
Y2 - 19 June 2018 through 20 June 2018
ER -