EcoNet: Multiagent Planning and Control Of Household Energy Resources Using Active Inference
- URL: http://arxiv.org/abs/2512.21343v1
- Date: Sun, 14 Dec 2025 22:34:44 GMT
- Title: EcoNet: Multiagent Planning and Control Of Household Energy Resources Using Active Inference
- Authors: John C. Boik, Kobus Esterhuysen, Jacqueline B. Hynes, Axel Constant, Ines Hipolito, Mahault Albarracin, Alex B. Kiefer, Karl Friston,
- Abstract summary: This paper introduces EcoNet, a Bayesian approach to household and neighborhood energy management that is based on active inference.<n>The aim is to improve energy management and coordination, while accommodating uncertainties and taking into account potentially conditional and conflicting goals and preferences.
- Score: 0.020440916035824108
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Advances in automated systems afford new opportunities for intelligent management of energy at household, local area, and utility scales. Home Energy Management Systems (HEMS) can play a role by optimizing the schedule and use of household energy devices and resources. One challenge is that the goals of a household can be complex and conflicting. For example, a household might wish to reduce energy costs and grid-associated greenhouse gas emissions, yet keep room temperatures comfortable. Another challenge is that an intelligent HEMS agent must make decisions under uncertainty. An agent must plan actions into the future, but weather and solar generation forecasts, for example, provide inherently uncertain estimates of future conditions. This paper introduces EcoNet, a Bayesian approach to household and neighborhood energy management that is based on active inference. The aim is to improve energy management and coordination, while accommodating uncertainties and taking into account potentially conditional and conflicting goals and preferences. Simulation results are presented and discussed.
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