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arxiv: 1410.6095 · v1 · pith:PVNYIRKFnew · submitted 2014-10-22 · 📊 stat.ML · cs.LG· math.OC· stat.AP

Online Energy Price Matrix Factorization for Power Grid Topology Tracking

classification 📊 stat.ML cs.LGmath.OCstat.AP
keywords gridmatrixdatamarketenergytopologylaplacianprices
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Grid security and open markets are two major smart grid goals. Transparency of market data facilitates a competitive and efficient energy environment, yet it may also reveal critical physical system information. Recovering the grid topology based solely on publicly available market data is explored here. Real-time energy prices are calculated as the Lagrange multipliers of network-constrained economic dispatch; that is, via a linear program (LP) typically solved every 5 minutes. Granted the grid Laplacian is a parameter of this LP, one could infer such a topology-revealing matrix upon observing successive LP dual outcomes. The matrix of spatio-temporal prices is first shown to factor as the product of the inverse Laplacian times a sparse matrix. Leveraging results from sparse matrix decompositions, topology recovery schemes with complementary strengths are subsequently formulated. Solvers scalable to high-dimensional and streaming market data are devised. Numerical validation using real load data on the IEEE 30-bus grid provide useful input for current and future market designs.

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