Benutzer: Gast  Login

Titel:

Monitoring and Prediction in Smart Energy Systems via Multi-timescale Nexting

Dokumenttyp:
Report / Forschungsbericht
Autor(en):
Johannes Feldmaier, Dominik Meyer, Hao Shen, Klaus Diepold
Band / Teilband / Volume:
cs:SY
Abstract:
Reliable prediction of system status is a highly demanded functionality of smart energy systems, which can enable users or human operators to react quickly to potential future system changes. By adopting the multi-timescale nexting method, we develop an architecture of human-in-the-loop energy control system, which is capable of casting short-term predictive information about the specific smart energy system. The developed architecture does either require a system model nor additional acquisitio...     »
Stichworte:
reinforcement learning, temporal difference learning, nexting, smart energy systems
Beauftragende Einrichtung:
Lehrstuhl für Datenverarbeitung
Verlag / Institution:
eprint arXiv:1607.05015
Publikationsdatum:
19.07.2016
Jahr:
2016
WWW:
http://arxiv.org/abs/1607.05015
Format:
Text
 BibTeX