Estimating residential energy consumption in metropolitan areas: A microsimulation approach
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Marilyn A. Brown | Wenwen Zhang | Subhrajit Guhathakurta | Bistra Dilkina | Venu M Garikapati | Caleb Robinson | Ram M. Pendyala | S. Guhathakurta | R. Pendyala | Marilyn A Brown | B. Dilkina | Venu Garikapati | Caleb Robinson | Wenwen Zhang
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