Nonparametric user activity modelling and pbkp_rediction
Abstract:
Modelling the occupancy of buildings, rooms or the usage of machines has many applications in varying fields, exemplified by the fairly recent emergence of smart, self-learning thermostats. Typically, the aim of such systems is to provide insight into user behaviour and incentivise energy savings or to automatically reduce consumption while maintaining user comfort. This paper presents a nonparametric user activity modelling algorithm, i.e. a Dirichlet process mixture model implemented by Gibbs sampling and the stick-breaking process, to infer the underlying patterns in user behaviour from the data. The technique deals with multiple activities, such as <present, absent, sleeping>, of multiple users. Furthermore, it can also be used for modelling and pbkp_redicting appliance usage (e.g. <on, standby, off>). The algorithm is evaluated, both on cluster validity and pbkp_redictive performance, using three case studies of varying complexity. The obtained results indicate that the method is able to properly assign the activity data into well-defined clusters. Moreover, the high pbkp_rediction accuracy demonstrates that these clusters can be exploited to anticipate future behaviour, facilitating the development of intelligent building management systems.
Año de publicación:
2020
Keywords:
- Dirichlet process mixture
- Activity Recognition
- Clustering
- Occupancy pbkp_rediction
Fuente:
Tipo de documento:
Article
Estado:
Acceso restringido
Áreas de conocimiento:
- Aprendizaje automático
Áreas temáticas:
- Programación informática, programas, datos, seguridad
- Dibujo y planos
- Probabilidades y matemática aplicada