Our manuscript titled "Co-Optimizing Distributed Energy Resources in Linear Complexity under Net Energy Metering" has been accepted for publication in the IEEE Transactions on Sustainable Energy [Early Access]
Paper abstract:
The co-optimization of behind-the-meter distributed energy resources is considered for prosumers under the net energy metering tariff. The distributed energy resources considered include renewable generations, flexible demands, and battery energy storage systems. An energy management system co-optimizes the consumptions and battery storage based on locally available stochastic renewables by solving a stochastic dynamic program that maximizes the expected operation surplus. To circumvent the exponential complexity of the dynamic program solution, we propose a closed-form and linear computation complexity co-optimization algorithm based on a relaxation-projection approach to a constrained stochastic dynamic program. Sufficient conditions for optimality for the proposed solution are obtained. Numerical studies demonstrate orders of magnitude reduction of computation costs and significantly reduced optimality gap.
The arXiv version of the manuscript can be found at: https://arxiv.org/pdf/2208.09781