The increasing complexity of the power grid, due to higher penetration of
distributed resources and the growing availability of interconnected,
distributed metering devices re- quires novel tools for providing a unified and
consistent view of the system. A computational framework for power systems data
fusion, based on probabilistic graphical models, capable of combining
heterogeneous data sources with classical state estimation nodes and other
customised computational nodes, is proposed. The framework allows flexible
extension of the notion of grid state beyond the view of flows and injection in
bus-branch models, and an efficient, naturally distributed inference algorithm
can be derived. An application of the data fusion model to the quantification
of distributed solar energy is proposed through numerical examples based on
semi-synthetic simulations of the standard IEEE 14-bus test case.Comment: Version as accepted for publication at the 7th IEEE International
Conference on Innovative Smart Grid Technologies (ISGT) Europe 201