Mitigating Short-Term PV Output Intermittency

We approach the issue of short-term PV output intermittency from a management standpoint by determining the cost of actively mitigating it using “shock-absorbing” short-term energy buffers. Using three case studies in California, Hawaii and the southern US as experimental support, we determine this cost as a function of (1) the desired amount of variability mitigation; (2) the considered variability time scale, (3) the PV resource’s geographical footprint, and (4) the availability of accurate solar forecasts. We show that, in a plausible operational context, the cost of mitigating variability across time scales ranging from one minute to a couple of hours could be kept below 25-35 cents per installed PV kW.

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