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Validate BESS Project Revenue In Minutes

Make confident investment decisions with historical NEM insights

Real-time AEMO dispatch data analysis with FCAS revenue modelling

Revenue Performance

Cost Breakdown

O&M$98,901
AEMO Fees$7,021

Arbitrage Revenue

AU$2,937,195

FCAS Revenue

AU$254,006

Arbitrage Modelling

Feasibility built on facts.

Spreadsheets with flat price proxies miss the volatility that drives real BESS revenue. RMA Forecasting runs your battery configuration against every 5-minute dispatch interval in AEMO's historical dataset, the same prices the market actually settled on.

Configure power (MW), storage (MWh), efficiency, dispatch window, and cycle limits.

Free access with simple account signup.

Dispatch interval resolution5-minute
RegionsQLD · NSW · VIC · SA · TAS
Backtesting accuracy95%+
Configurable date range2022 - Present
Perfect foresight modeUpper-bound benchmarking
Raise Regulation
Lower Regulation
Raise 6 sec Contingency
Lower 6 sec Contingency
Raise 60 sec Contingency
Lower 60 sec Contingency
Raise 5 min Contingency
Lower 5 min Contingency

FCAS Revenue

All 8 market services, fully configurable.

For a well-positioned BESS, FCAS can represent 10–30% of total revenue, too significant to exclude from any serious investment analysis.

Set allocation and utilisation rates independently for each of the 8 regulation and contingency services. Model conservative, balanced, or aggressive participation strategies and see the revenue contribution of each.

Scenario Management

Transparent revenue estimates.

Credible feasibility assessments require more than headline numbers. They require transparency, which assumptions were applied, how costs were structured, and how the result compares across varying scenarios.

Save project configurations, compare scenarios side by side, and export detailed daily breakdowns to Excel. Degradation costs, AEMO fees, and O&M are itemised separately.

SOC TrackingDaily revenue exportUnlimited project configurationsO&M, AEMO fees & degradation modelling