By datathings
Model and analyze electric power networks with pandapower: construct grids from buses, lines, transformers, loads, generators; compute AC/DC power flows, optimal power flow, IEC 60909 short circuits, state estimation, time series simulations, topology checks, and plots.
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npx claudepluginhub datathings/marketplace --plugin pandapowerpower-grid-model Python skill - high-performance steady-state distribution power system analysis: power flow, state estimation, and IEC 60909 short-circuit calculations with 22 component types and batch/parallel computation
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power-grid-model Python skill - high-performance steady-state distribution power system analysis: power flow, state estimation, and IEC 60909 short-circuit calculations with 22 component types and batch/parallel computation
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