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Power-System-RL-Agent

Reward Function Modeling

Battery Maximum energy 2kWh Battery Maximum energy 0.4 kWh Efficiency 70%

Price of buying from the grid(c) 20 Rs/kWh Price of selling to the grid(c) 15 Rs/kWh

E_L(t) = demand(t)

Ac = 1 if action == 0 else 0 Ad = 1 if action == 1 else 0

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PVWatts: Hourly PV Performance Data Requested Location:,moratuwa Location:,"Lat, Lon: 6.75, 79.85" Lat (deg N):,6.75 Long (deg E):,79.85 Elev (m):,0 DC System Size (kW):,4 Module Type:,Standard Array Type:,Fixed (open rack) Array Tilt (deg):,20 Array Azimuth (deg):,180 System Losses:,14.08 Invert Efficiency:,96 DC to AC Size Ratio:,1.2 Average Cost of Electricity Purchased from Utility ($/kWh):,1 Capacity Factor (%),"17.4"

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