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Pump scheduling in drinking water distribution networks with an LP/NLP-based branch and bound

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Academic year: 2021

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Table 1: Summary of notation
Figure 1: A convex relaxation (hatched area) of head loss in pipes (in orange) on the interval [Q, Q].
Figure 2: Illustrations of (a) a linear over-estimator Π ∗ (in red) of the head increase Ψ (in orange) and (b) a linear under-estimator Π ∗ (in red) of the non-convex addend Γ (in orange) of the power consumption
Table 2: Characteristics of DWDNs instances.
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