Collection of Technical Papers. 35th Intersociety Energy Conversion Engineering Conference and Exhibit (IECEC) (Cat. No.00CH370
DOI: 10.1109/iecec.2000.870901
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Stochastic modeling of rechargeable battery life in a photovoltaic power system

Abstract: Summary1re-built the prototype machine to the point it was ready to go into a trial mode, however after Clark Machine Inc., took the contract. to build me four machines they wanted the prototype in their yard so they could build from it.They have built one machine complete and have almost all the parts to the other three built ready to assemble. I have inspected the one that is complete and so far everything looks fine, however the engineer needs to come back and check it out and stamp the drawings. Then comes… Show more

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Cited by 2 publications
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“…The bounds on the probability of a load curtailment event are derived based on asymptotic probability theory via limited observable characteristics of the devices. A Karhunen-Loeve framework can be used to model the solar radiation intensity to characterize the PV unit output under a variety of conditions and at different geographical locations [114]. The capacity of energy storage devices is represented by a deterministic model, using an artificial neural network to estimate the capacity reduction over time.…”
Section: Energy Storage Managementmentioning
confidence: 99%
“…The bounds on the probability of a load curtailment event are derived based on asymptotic probability theory via limited observable characteristics of the devices. A Karhunen-Loeve framework can be used to model the solar radiation intensity to characterize the PV unit output under a variety of conditions and at different geographical locations [114]. The capacity of energy storage devices is represented by a deterministic model, using an artificial neural network to estimate the capacity reduction over time.…”
Section: Energy Storage Managementmentioning
confidence: 99%